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EFFECTS OF PSYCHOLOGICAL STRESS ON GLUCOCORTICOID SENSITIVITY OF INFLAMMATORY RESPONSE TO INFLUENZA VACCINE CHALLENGE IN HEALTHY MILITARY COLLEGE STUDENTS DISSERTATION Presented in Partial Fulfillment of the Requirements for the Degree Doctor of Philosophy in the Graduate School of The Ohio State University By Vorachai Sribanditmongkol Graduate Program in Nursing The Ohio State University 2013 Dissertation Committee: Dr. Jeremy Neal, Advisor Dr. Donna McCarthy Beckett Dr. Thelma Patrick Copyright by Vorachai Sribanditmongkol 2013 ABSTRACT Background: Influenza and other infectious diseases are critical barriers to the health and readiness of military units worldwide with reported rates of annual influenza infection as high as 45%. Vaccination to prevent infections stimulates a transient, inflammatory response, counterbalanced by the anti-inflammatory effects of increased cortisol secretion which enhances antibody production for seroprotection. Paradoxically, chronically-stressed individuals have elevated cortisol levels, but have poorer antibody response to vaccination. Evidence suggests that chronic stress impairs immune cell glucocorticoid sensitivity (GCS), leading to excessive production of proinflammatory cytokines. This pathway may contribute to impaired immune responses to vaccination and increased risk of infectious illness in military personnel in high stress areas of service. Purpose: The study was conducted to determine if psychological stress diminishes GCS and regulation of proinflammatory cytokine production in a population of healthy military students and personnel. It is hypothesized that subjects with greater psychological stress will have lower GCS in an ex vivo laboratory model of influenza vaccine challenge. Methods: A cross sectional design was used with a convenience sample of healthy, military college students and personnel (n = 61). Subjects completed the Perceived Stress Scale (PSS) and trait subscale portion of the State-Trait Anxiety ii Inventory (STAI-T) as measures of psychological stress and provided a blood sample. Whole blood was incubated in the presence of influenza vaccine and dexamethasone to evaluate cytokine production and GCS. Associations between psychological stress and cytokine production were evaluated using correlation and linear regression. Results: Pearson correlations, Analysis of Variance (ANOVA) with post-hoc Dunnett's T3 procedure, and Multiple Regressions were utilized for statistical analyses. PSS and vaccine-stimulated cytokine production were not significantly correlated. Oneway ANOVA and post-hoc Dunnett's T3 Test revealed significant differences in cytokine concentrations in the 3 ex vivo conditions (i.e., Unstimualted, Vaccine-stimulated, and DEX-inhibited) (p<0.001). Results of the Pearson correlations showed that PSS scores were inversely related to GCS (p<0.05) for all 4 vaccine-stimulated cytokines. Finally, multiple regression models controlling for age, gender, race, and student cumulative grade point average (GPA) revealed a negative relationship between PSS and GCS of vaccine-stimulated production of IL-1β (β = -0.420, t = -3.55, p<0.01), IL-6 (β = -0.296, t = -2.36, p<0.05), and TNF-α (β = -0.259, t = -2.060, p<0.05), but not IFN-γ. Conclusions: Findings from this study suggest a biologic pathway through which perceived psychological stress might alter the inflammatory immune response to influenza vaccination and expand understanding of how stress might impact immune function in military populations. iii DEDICATION This dissertation is dedicated to my amazing children, Kien and Kalee for giving me their unconditional love, patience, and joy. Kids, I am truly blessed to be your dad, and look forward to some much needed fun times with you both soon. I also dedicate this work to my family and to the loving memory of my late mom, Linda, who modeled the true essence of human compassion and steadfast dedication to family, friends, and nursing. Mom, I cherish the memories of our long, meaningful talks and the sharing of your wisdom through your creative analogies. Your drive for seeking out answers to life's questions taught me so much in a global and personal sense. Thank you, mom for inspiring me to join the Navy and see the world, become a nurse to help others in need, and begin this intellectual journey. For my dad, Voravit ("Jim"), your life's journey from Thailand in seek of the "American Dream" has always inspired me to strive to be the best that I can be for you, myself and my family. To my siblings, Nai, Alee, and Thai, your unyielding love and beliefs in my ability to attain my highest aspirations sustained my momentum throughout this time as well. I hope to make you all proud. And most importantly, to Angie, who is the "love" of my life. Your selfless sacrifice, unwavering support, encouragement, and faithful love that you've provided me and our family over the years overwhelms my heart with gratitude beyond measure and expression. I am forever grateful to God for our lives together, this shared accomplishment, and the continued journey that lies ahead! iv ACKNOWLEDGMENTS It is with the highest admiration and most sincere gratitude that I acknowledge Dr. Jeremy Neal as my advisor and mentor. His constant leadership, support, and relentless encouragement during the course of my doctoral studies helped me to step outside of my comfort-zone and grow in many ways that I had never imagined possible. His seemingly endless energy and genuine passion for research is contagious, and has excited me as I look forward to a promising future as Navy Nurse researcher and scientist. I also extend my deepest appreciation to Dr. Donna McCarthy Beckett, and Dr. Thelma Patrick, who both served as vital members of my dissertation committee and readily shared their expertise, guidance, and encouragement. Specifically, I am grateful to Dr. McCarthy Beckett for opening my eyes to laboratory-based nursing research; taking me under her "wing" and making me feel comfortable within this exciting facet of nursing. Dr. McCarthy Beckett, the generosity and compassion that you demonstrate to all nursing students in this challenging program is beyond approach. Dr. Patrick, I am also inspired by your commitment and genuine drive to "see" your students achieve success, and I thank you so much for your enduring support of my doctoral education. All members of my dissertation committee embodied the utmost professionalism and demonstrated unconditional human kindness that I aspire to emulate throughout my career. I also extend my sincere appreciation to Dr. Laura Szalacha and Dr. Christopher Holloman for their statistical analysis expertise and guidance of my dissertation research. Thanks to Dr. Runfeng Jing for welcoming me into the biomedical lab, always keeping v me on my toes, and expeditiously running my biomarker assays. I especially want to thank Dr. Priscilla Koeplin for providing me her time, critical expertise, and encouragement during the last weeks leading to the completion of this dissertation. Thank you to my "original" fellow doctoral student champion-cohort, Dr. Sharon Hill Cheatham, Dr. Rika Tanda, and Will Matcham. Thank you all for being my friends and support group throughout my doctoral studies. I wish you all success! I extend my most sincere gratitude to the best, PhD-prepared, Navy Nurse Corps Officers ("Angels") I know. Thank you, CAPT Jacqueline Rychnovsky, CAPT (Retired) Angelica Almonte, CAPT (Retired) Elizabeth Barker, and CAPT (Select) Lisa Osborne for the mentorship and friendship each of you has given me over the years. Also thanks to all of the Army, Navy and Marine, and Air Force students who volunteered from the Reserve Officer Training Corps Unit, and mostly for your future military service. I would also like to acknowledge the U.S. Navy Nurse Corps' Duty Under Instruction (DUINS) scholarship program, which provided me the opportunity, time, and full-tuition support throughout my doctoral program. Special thanks to Sigma Theta Tau, International Honor Society of Nursing (Epsilon Chapter) for their generous research award. Lastly, additional funds for laboratory supplies were provided from Newton Fund contributions through the College of Nursing at The Ohio State University. *The views expressed in this work are those of the author and do not reflect the official policy or position of the Department of the Navy, Department of Defense, or the United States Government.* vi VITA December 19, 1970 ........................................Born-Columbus, Ohio June 1989 .......................................................Gahanna Lincoln High School 1989 to 1994 ..................................................Enlistment in U.S. Navy (Active Duty) June 1998 .......................................................B.S. in Nursing, The Ohio State University 1998 to present ...............................................Commissioned as Naval Officer, Nurse Corps May 2005 .......................................................M.S. in Nursing, University of San Diego September 2008 to present .............................College of Nursing, The Ohio State University FIELDS OF STUDY Major Field: Nursing vii TABLE OF CONTENTS Page Abstract .......................................................................................................................... ii Dedication ..................................................................................................................... iv Acknowledgments .......................................................................................................... v Vita ............................................................................................................................... vii List of Tables................................................................................................................. xi List of Figures .............................................................................................................. xii List of Abbreviations................................................................................................... xiii CHAPTER 1................................................................................................................... 1 INTRODUCTION .................................................................................................. 1 CHAPTER 2................................................................................................................. 13 REVIEW OF LITERATURE ............................................................................... 13 Overview of Stress in ROTC Students ................................................................. 13 Biological Overview of Stress Response ............................................................. 15 Normal Immune Response .................................................................................... 19 Immune Response to Vaccination ............................................................ 20 Inflammatory Response to Vaccination .................................................... 21 Cortisol Regulation of Inflammatory Cytokine Production...................... 25 Effect of Chronic Stress on Immune Function ..................................................... 26 Chronic Stress and Inflammation.............................................................. 27 Chronic Stress and Cortisol Regulation of Inflammatory Cytokines ...... 27 viii Chronic Stress and Poor Antibody Production ......................................... 33 Paradox ................................................................................................................. 34 Immunosuppression versus Glucocorticoid Resistance ............................ 35 Immunosuppression ...................................................................... 35 Glucocorticoid Resistance ............................................................ 36 Restatement of Purpose of the Study .................................................................... 37 CHAPTER 3................................................................................................................. 39 METHODS AND PROCEDURES....................................................................... 39 Research Design.................................................................................................... 39 Sample and Setting ............................................................................................... 39 Measures ............................................................................................................... 40 Data Collection Procedure .................................................................................... 46 Protection of Human Subjects .............................................................................. 49 Data Analysis ........................................................................................................ 50 CHAPTER 4................................................................................................................. 54 RESULTS ............................................................................................................. 54 Descriptive Statistics............................................................................................. 54 Psychosocial Variable Data Results...................................................................... 58 Associations Among Demographics, Psychosocial Variables, and GCS ............. 58 Results for Research Aim 1 .................................................................................. 60 Result for Research Aim 2 .................................................................................... 61 Results for Research Aim 3 .................................................................................. 66 CHAPTER 5................................................................................................................. 70 DISCUSSION AND CONCLUSION................................................................... 70 Discussion ............................................................................................................. 71 Psychological Stress.................................................................................. 71 Psychological Stress and Vaccine-stimulated Cytokine Production ........ 71 DEX-induced Suppression of Vaccine-stimulated Cytokine Production . 72 Psychological Stress and GCS…………………………………..……….73 ix Study Limitations .................................................................................................. 74 Implications for Future Research .......................................................................... 75 Conclusion ............................................................................................................ 77 BIBLIOGRAPHY ........................................................................................................ 79 APPENDIX A: Demographic Data Questionnaire Form............................................. 93 APPENDIX B: Perceived Stress Scale (PSS) ............................................................ 104 APPENDIX C: State-Trait Anxiety Inventory (STAI) .............................................. 106 APPENDIX D: Informed Consent Form ................................................................... 112 APPENDIX E: HIPAA Authorization to Participate in Research Form ................... 118 APPENDIX F: Human Subjects Approval to Conduct Research .............................. 122 x LIST OF TABLES Table Page Table 1 Demographic Characteristics of Sample...............................................................55 Table 2 Educational Characteristics of Sample.................................................................56 Table 3 Military Service Characteristics of Sample..........................................................57 Table 4 Psychosocial Characteristics of Samples..............................................................58 Table 5 Correlations among Demographics and Psychosocial Characteristics.................59 Table 6 Correlations among Demographics and GCS of Cytokine Production................60 Table 7 Mean Proinflammatory Cytokine Production Values and Experimental Conditions..............................................................................................................62 Table 8 Summary of ANOVA for Mean Differences in Cytokine Production among 3 Ex Vivo Conditions............................................................................................66 Table 9 Correlations among PSS and GCS of Proinflammatory Cytokines......................67 Table 10 Summary of Multiple Regressions of PSS and GCS..........................................69 xi LIST OF FIGURES Figure Page Figure 1 Cortisol and Regulation of Proinflammatory Cytokines.......................................5 Figure 2 Psychological Stress, Impaired GCS, and Proinflammatory Cytokines................7 Figure 3 Conceptual Model with Sequence of Specific Aims............................................9 Figure 4 Blood Collection, Cultures, and Assays..............................................................48 Figure 5 Differences in Cytokine Production among the 3 ex vivo Conditions................65 xii ABBREVIATIONS ACTH= adrenocorticotropic hormone PG=prostaglandins BMI=body mass index PNI=psychoneuroimmunology CRH= corticotropin-releasing hormone PSS=perceived stress scale DEX=dexamethasone ROTC=Reserve Officer Training Corps GC=glucocorticoid STAI=state-trait anxiety inventory GCS=glucocorticoid sensitivity TNF-α=Tumor necrosis factor alpha g=gram Th1=T-helper 1 cell HPA=hypothalamic-pituitary-adrenal axis Th2=T helper 2 cell IFN-γ=Interferon gamma µL=microliter IL-1β=Interleukin-1 beta µM=micromole IL-6=Interleukin-6 µM/L=micromoles/liter L=liter M=mole mg=milligram mL=milliliter nM=nanomole NROTC=Naval Reserve Officer Training Corps OSU =The Ohio State University xiii CHAPTER 1 INTRODUCTION Studies of the effects of psychological stress on inflammatory and other immune responses in active and reserve military personnel is sparse, and is nearly non-existent in military Reserve Officer Training Corps (ROTC) college students. The latter population will enter the ranks and face multiple significant stressors, including military combatsupport and humanitarian deployments, family separations and reintegration transitions from the battlefield to the home-front (Hoge, Auchterlonie, & Milliken, 2006; Lapierre, Schwegler, & LaBauve, 2007; T. Smith, Leardmann, C. Smith, Jacobson, & Ryan, 2007). Studies of deployed military personnel and training recruits demonstrate that, despite being a presumably fit and healthy population, military individuals are at increased risk for influenza, posing a significant health risk to the readiness of military units worldwide (Balicer, Huerta, Levy, Davidovitch, & Grotto, 2005; Earhart, et al., 2001; Makras, Alexiou-Daniel, Antoniadis, & Hatzigeorgiou, 2001). Influenza outbreak rates have been reported as high as 45% (Klontz, et al., 1998; Makras, et al., 2001), surpassing reported influenza rates in U.S. civilian populations (Centers for Disease Control and Prevention [CDC], 2013; Snyder, Mancuso, & Aldous, 2006). Vaccines are available but are not always effective. A growing body of literature suggests that cortisol and the inflammatory response are both critical to the immune 1 response following vaccination. However, chronically-stressed individuals commonly have a poorer antibody immune response and report more illness-like symptoms following vaccination (Burns, Carroll, Ring, Harrison, & Drayson, 2002a; Burns, Drayson, Ring, & Carroll, 2002b; S. Cohen, Miller, & Rabin, 2001; Glaser et al., 1992; Glaser, Sheridan, Malarkey, MacCallum, & Kiecolt-Glaser, 2000; Kiecolt-Glaser, Glaser, Gravenstein, Malarkey, & Sheridan, 1996; M. Morag, A. Morag, Reichenberg, Leier, & Yirmiya, 1999). The subjects in these studies tended to be older adults experiencing chronic stress as a primary caregiver and/or spouse of a family member with dementia or cancer (Burns, et al., 2002a; Burns, et al., 2002b; S. Cohen, et al., 2001; Glaser, et al., 1992; Glaser, et al., 2000; Kiecolt-Glaser, et al., 1996; Morag, et al., 1999). Little is known about the effects of stress on the immune response to vaccination in military populations. It is plausible that mild to moderate stressors in the daily life of young, healthy military personnel exert similar effects on immune responses to vaccine challenge. Military personnel could be at risk for stress-induced changes in inflammatory cytokine production following vaccination, placing them at higher risk for infectious disease. Although stress experienced by a military student population differs from stress experienced by active duty military members, there are parallels that may allow a convenience sample in this study to serve as a proxy in determining the effects of psychological stress on immune responses to vaccine challenge. While militaryassociated stressors cannot be completely eliminated, reducing the risk for infectious illness in the military is a national research priority. Ex vivo vaccine challenge is a useful 2 model for examining the effects of psychological stress on inflammatory responses to immune triggers. The purpose of this study was to determine if a seasonal, inactivated, trivalent influenza vaccine elicited a measurable inflammatory response ex vivo; and if the glucocorticoid sensitivity (GCS) of cytokine production was related to psychological stress. Background Overview of Immune Response The immune response to vaccination is described in the context of the immune response and in the combined regulation by the immune and neuroendocrine systems. Immune Response to Vaccination Within the immune system, the response to vaccination involves the coordination of a wide variety of immune cells. The initial recognition of an antigen (i.e. influenza vaccine) occurs through its presentation to cells by antigen presenting cells (APCs). Once presented by the APCs, helper T cells recognize the antigen and process and present it to the β lymphocytes (β cells) to stimulate β-cell proliferation and differentiation into plasma cells, which produce antibodies or immunoglobulin (Phillips, 2012; Kindt, Osborne, Goldsby, & Kuby, 2006). Antibodies secreted by β cells include immunoglobulin A (IgA), IgE, IgM, IgG, and IgD (Segerstrom & Miller, 2004). Vaccination with an antigen not previously encountered induces a primary antibody response, with the earliest antibody to be produced (IgM) peaking approximately 5 days after vaccination. Interaction between activated T- and β-cells 3 leads to the production of high affinity or very specific antibodies in bodily fluids such as IgG (found primarily in the blood) and IgA (found mainly at mucosal surfaces). Secondary antibody responses occur through repeated natural antigenic exposure or following repeated vaccination against more common pathogens such as influenza. Secondary antibody responses are usually more rapid and of greater magnitude as a result of some of the activated T- and β-cells becoming long-lived immune memory cells (Phillips, 2012). Vaccines, such as influenza vaccine consist of inactivated or dead viruses and induce a thymus-dependent antibody response that requires helper T cell involvement (Phillips, 2012). Another type of vaccination elicits a thymus-independent response, requires helper T cells in antigen recognition, and relies solely upon antigen recognition through β-cells (e.g., meningococcal A or tetanus). These vaccine types do not elicit as strong or maintained response as thymus-dependent vaccines (Phillips, 2012). A third vaccine type uses a conjugate vaccine to enhance the response to thymus-independent antigens by attaching a protein to the antigen, stimulating an immune response involving helper T-cell recognition (e.g., haemophilus influenzae type B). Immune and Neuroendocrine System Reponses to Vaccination Besedovsky and Sorkin (1977) provided the first evidence from animal studies of a bidirectional communication flow from the activated immune system to the hypothalamus, suggesting that the brain is involved in the immune response through an immune-neuroendocrine network. The neuroendocrine response to an antigen (in this study using the influenza vaccine) is represented in Figure 1. 4 Vaccination stimulates a transient increase in proinflammatory cytokine production which stimulates cortisol secretion through direct effects on the adrenal cortex and by releasing corticotrophin-releasing hormone (CRH) from the hypothalamus and adrenocorticotropic hormone (ACTH) from the anterior pituitary. Proinflammatory cytokine production is then counter-regulated by anti-inflammatory effects of increased cortisol release (Elenkov, et al., 2000a; Tsigos & Chrousos, 2002) and by production of anti-inflammatory cytokines (Elenkov, et al., 2000b; Sapolsky, Romero, & Munck, 2000; Vedhara, et al., 1999). This cross-regulation of neuroendocrine and inflammatory responses is necessary for T-cell and β-cell proliferation, antibody synthesis, and seroprotection (Burns, et al., 2002a; Burns, et al., 2002b; S. Cohen, et al., 2001; Elenkov, et al., 2000a; Glaser, et al., 1992; Glaser, et al., 2000; Kiecolt-Glaser, et al., 1996; Morag, et al., 1999; Sapolsky, et al., 2000; Tsigos & Chrousos, 2002). Figure 1 Cortisol and Regulation of Proinflammatory Cytokines Figure 1. Illustration of (+): Stimulates/Produces (-): Inhibits HPA Axis activation and cortisol regulation of proinflammatory cytokine production in response to influenza vaccine. 5 Cortisol is a hormone that is activated in stressful situations, providing the neuroendocrine link between stress and immunity. The field of science that developed from this discovery is psychoneuroimmunology (PNI), the study of the relationships among brain, behavior and immunity, reflecting the effects of psychological stress on endocrine and immune function (Ader, 2000). PNI is an appropriate model to study psychological stress and inflammation as risk predictors of increased susceptibility to infection (Blalock, 2005; Blalock & Smith, 2007; Elenkov, et al., 2000b). The immune response to influenza vaccine in the presence of psychological stress is depicted in Figure 2. Psychological stress activates the HPA axis to elicit cortisol secretion, which can have significant effects on regulation of inflammatory and immune responses (see Figure 1). Acute stress is known to activate the HPA axis, resulting in short bursts of increased cortisol secretion. Acute increases in cortisol secretion just prior to vaccination have been found to enhance antibody production in healthy individuals (Edwards, et al., 2006). In contrast, chronic stress leads to prolonged activation of the HPA axis, prolonged elevation of cortisol levels, suppressed immune responses (Agarwal & Marshall, 2001; Marshall, et al., 1998; Plotnikoff, Faith, Murgo, & Good, 2007), diminished viral infection clearance (Glaser & Kiecolt-Glaser, 2005), and poorer antibody response to vaccination (Burns, et al., 2002a; Burns, et al., 2002b; S. Cohen, et al., 2001; Glaser, et al., 1992; Glaser, et al., 2000; Kiecolt-Glaser, et al., 1996; Morag, et al., 1999; Vedhara, et al., 1999). 6 Figure 2 Psychological Stress, Impaired GCS, and Proinflammatory Cytokines (+): Stimulates/Produces (-): Inhibits (X): Disrupts Figure 2. Illustration of psychological stress and impaired GCS of proinflammatory cytokine production in response to influenza vaccine. Psychological stress exerts globally suppressive effects on immune responses including reduced humoral immunity, reduced lymphocyte proliferation, and reduced cytotoxic function of natural killer cells (M. Cohen, et al., 2002; Herbert & S. Cohen, 1993; Kiecolt-Glaser, Marucha, Malarkey, Mercado, & Glaser, 1995). However, in the 7 context of sustained psychological stress, individuals exhibit decreased or blunted cortisol responses to acute stress (Heim, Ehlert, & Hellhammer, 2000; Miller, Cohen, & Ritchey, 2002), persistent elevations in serum levels of proinflammatory cytokines, and poorer antibody response following vaccination (Burns, Carroll, et al., 2002; Burns, Drayson, et al., 2002; Cohen, et al., 2001; Glaser, et al., 1992; Glaser, et al., 2000b; Kiecolt-Glaser, et al., 1996a; Morag, et al., 1999). The traditional concept of stressinduced immunosuppression does not offer a clear explanation as to why and how chronic stress affects the inflammatory response. It has been proposed that chronic psychological stress can lead to glucocorticoid resistance in which the immune system demonstrates a diminished or sensitivity to glucocorticoids (GCS) that normally control excessive inflammation. Impaired GCS leads to HPA axis dysregulation and a subsequent, feed-forward cycle of uncontrolled proinflammatory cytokine responses to stress (Miller, et al., 2002). The basic principle used to assess GCS ex vivo is to induce cytokine production (via a bacterial endotoxin or a mitogen stimulant) and co-incubate cells with serial dilutions of DEX to determine the inhibition of cytokine production. Studies using this approach have shown reduced GCS of immune cells and subsequent higher production levels of proinflammatory cytokine IL-6 and TNF-α in the presence of varying concentrations of DEX in chronically stressed populations (DeRijik, et al., 1997; Miller, et al., 2002; Rohleder, J. Wolf, & O. Wolf, 2010; Wirtz, et al., 2003). In this study, GCS was measured by examining the inhibitory effect of DEX on production of IL-6, IL-1β, IFN-γ, and TNF-α by influenza vaccinestimulated peripheral blood cells. A lower percent inhibition of vaccine-stimulated 8 cytokine production indicates a lower GCS (or greater resistance) to anti-inflammatory effects of DEX. The effect of chronic stress on the immune response is the basis for the hypothesized relationships in this study. Figure 3 presents the conceptual model for this research. From left to right, the conceptual model depicts the hypothesized relationships between increased psychological stress and impaired GCS in response to vaccine stimulation as denoted in the 3 specific aims of the study (Figure 3). Figure 3 Conceptual Model with Sequence of Specific Aims Figure 3. Graphical representation of conceptual model with sequence of specific aims 9 Purpose of the Study The purpose of this study was to determine whether psychological stress affects proinflammatory cytokine production by peripheral blood cells in response to influenza vaccine challenge and dexamethasone, a synthetic form of cortisol. The central hypothesis is that higher perceived stress and anxiety can downregulate GCS of immune cells and result in elevated proinflammatory cytokine production in response to vaccine challenge. Specific Aims • Determine if psychological stress affects proinflammatory cytokine production by peripheral blood cells stimulated ex vivo by Influenza Vaccine • Determine if dexamethasone (DEX) suppresses vaccine-stimulated cytokine production • Determine if psychological stress predicts GCS (percent inhibition of stimulated cytokine production to DEX) Hypotheses • Peripheral blood cells from subjects with higher psychological stress (based on PSS & STAI-T scores) will have higher production of cytokines (↑IFN-γ, ↑IL-1β, ↑IL-6, ↑TNF-α) in response to stimulation by Influenza Vaccine • DEX will reduce vaccine-stimulated cytokine production of IFN-γ, IL-1β, IL-6, and TNF-α • Psychological stress (PSS & STAI-T scores) will predict GCS (percent inhibition of cytokine production to DEX) 10 Conceptual Framework Psychoneuroimmunology (PNI) PNI is the study of the relationships among brain, behavior and immunity, reflecting the effects of psychological stress on endocrine and immune function (Ader, 2000). PNI has aided scientists in understanding how psychological, neuroendocrine and immunologic events can affect health. Psychological stress. Psychological stress is defined as an individual’s experience of negative events or perceptions of distress, typically associated with the inability to cope (Cohen, et al., 2001), and occurring when an individual perceives that environmental demands strain or exceed coping and adapting capacity (S. Cohen, Janicki-Deverts, & Miller, 2007). Psychological stress activates the HPA axis, leading to increased secretion of glucocorticoids such as cortisol (Everly & Lating, 2002). Glucocorticoid sensitivity (GCS). Glucocorticoids have a fundamental role in regulating inflammatory and neuroendocrine responses to a pathogen exposure (Anisman & Merali, 2003; Charmandari, Tsigos, & Chrousos, 2005; Kiecolt-Glaser, McGuire, Robles, & Glaser, 2002; Petrovsky, 2001; Raison & Miller, 2003). GCS refers to the sensitivity of immune cells to glucocorticoid hormones that normally terminate the inflammatory response (Bailey, Engler, Hunzeker, & Sheridan, 2003; Marques, Silverman, & Sternberg, 2009; Miller, et al., 2002; Stark et al., 2001). It has been proposed that chronic psychological stress and prolonged activation of the HPA and sympathetic-adrenal medullary (SAM) axes may result in loss of counter-regulatory responses in stimulated lymphocytes (Miller, et al., 2002; Raison & Miller, 2003). 11 Influenza vaccine (ex vivo challenge). Inflammatory responses to influenza vaccination are mild compared to responses to influenza infection. When influenza vaccine is used to stimulate the immune response en vivo and ex vivo, researchers can study production of cytokines that drive the inflammatory response (Tsai et al., 2005), and study alterations in immunological responses to challenge under well-controlled conditions (Glaser & Kiecolt-Glaser, 2005). Because influenza vaccination is considered safe, it provides an excellent model for studying immune inflammatory responses to antigen challenge in populations required to have an annual influenza vaccination (i.e., military personnel and college ROTC students). Significance of this Study This study is broadly focused on improving the health of military service members. Infection-related illness and hospitalizations are significant barriers to health and readiness of military units world-wide. Outbreaks of influenza among military personnel, including military student trainees, exceed rates seen in civilian population although the reasons for this remain unknown. Individuals in the military are under considerable stress. Consequently, stress-induced effects on GCS may lead to dysregulation of the inflammatory response to vaccination. This research will increase understanding of the effects of psychological stress on the inflammatory response, and may have implications regarding psychological stress effects on immune responses to vaccination in military personnel, students, and other highly-stressed populations. 12 CHAPTER 2 REVIEW OF LITERATURE Introduction A growing body of literature suggests that chronic psychological stress impairs the immune response to vaccination or viral challenge. It has been reported that military individuals, despite being a presumably fit and healthy population, have higher rates of infections such as influenza than do civilian populations, posing a significant health risk to the readiness of military units worldwide (Balicer, et al., 2005; Klontz, et al., 1998; Makras, et al., 2001; Snyder, et al., 2006). This chapter reviews the literature on psychological stressors in military personnel and Reserve Officer Training Corps (ROTC) cadets, the physiology of the stress response, normal responses to immune stimuli, and the effects of chronic stress on the immune response to vaccine challenge. This literature informed the design of this study, conducted to determine if psychological stress affects influenza vaccine-induced production of pro-inflammatory cytokines in whole blood of healthy ROTC college students. Overview of Stress in ROTC students Research on the psychological effects of stress on immune function in active and training military personnel is sparse. These populations are either currently facing or will encounter considerable stress due to long military combat-support and humanitarian 13 deployments, family separations, and reintegration transitions from the battlefield to the home-front. Negative effects of stress on immune function could place these otherwise healthy individuals at risk for infections. Although the stress experienced by military students is different from active duty military members, there are some parallels that permit the military student population to serve as a proxy in determining the effects of psychological stress on immune function in military personnel. ROTC is a military scholarship and leadership program designed to prepare college students for military service as Commissioned Officers in the U.S. Armed Forces upon graduation. ROTC college students have potentially stressful experiences similar to those of civilian college students; however, superimposed are military training duties, physical fitness standards, and high academic achievement performance demands required for ROTC scholarship and entrance into active duty military service as a Commissioned Officer. Some students participating in ROTC are active duty members, National Guardsmen/Reservists, and veterans who may have been previously exposed to the stressors associated with military deployment. Many returning Iraqi and Afghan military veterans have returned to college. Students who are new to college and who are also actively serving as military members may experience culture shock when transitioning from military to civilian institutions such as college. Zinger and Cohen (2010) reported that student veterans describe post traumatic stress disorder (PTSD), depression, physical injury, lack of structure in civilian life, and difficulties with personal relationships and social functioning. 14 Cadets train together in their respective military service groups, but are evaluated as individuals on their potential to be future military officers. The student is constantly in direct competition with all members of his or her own military service peer group. Cadets report academic and military performance concerns and workload as sources of stress. These stressors are inversely associated with cadet well-being and performance outcomes (Adler, McGurk, Stetz, & Bliese, 2003). Cadets have also reported anticipatory stress, time management pressures, sleep deprivation, military leadership and physical fitness performance evaluations, conflicts between teamwork and competitive grading, and inexperience in the leadership role (Gold & Friedman, 2000). Although research involving military students is sparse, perceived stress has been shown to have negative effects on service academy cadets’ physical health and susceptibility to illness and physical injury (Glaser, et al., 1999; Lee, Meehan, Robinson, Mabry, & Smith, 1992). A growing body of literature suggests that psychological stress may play a role in the pathogenesis of respiratory infections (Cohen, et al. 2012a), which could explain the increased risk of respiratory infections such as influenza in military personnel (Balicer, et al., 2005; Earhart, et al., 2001; Klontz, et al., 1998; Makras, et al., 2001; Snyder, et al., 2006). Biological Overview of Stress Response Stress Stress is often described as a response, a stimulus, or a bidirectional exchange or transaction (Lyon, 2000). Lazarus and Folkman (1984) described stress as an internal 15 process and relationship between the person and the environment wherein an individual appraises an event as a threat. The stress response is classically described as the body's reaction to a perceived or real threat to well-being (Charmandari, et al., 2005; Chrousos, 2000). The stress response involves activation of the hypothalamic-pituitary-adrenal (HPA) axis and/or the sympathetic nervous system (SNS) to aid an organism in physiologically dealing with the threat and restoring well-being. Stress responses are the physiological and psychological consequences of the appraisal of the event as a stressor. A stressor may be any condition or external stimulus that poses a physical or psychological challenge and elicits a stress response. The two main types of stressors are categorized as psychological and biological. Both stressor types can interact to magnify or alter the stress response. Psychological stressors can be real or imagined environmental events that prime activation of the stress response through cognitive appraisal mechanisms (Chrousos, 2009). Before an event can elicit the stress response, an individual must perceive the event as stressful. Psychological stress is defined as an individual’s experience of negative events or perceptions of distress and negative affect typically associated with the inability to cope with or respond adequately to a stressor (Cohen, et al., 2001; Cohen, et al., 2007). Examples of probable psychological stressors for ROTC cadets are peer-to-peer competitiveness for leadership roles and ROTC scholarship, or taking examinations. Psychological stress can be classified as either acute (i.e., short term, generally lasting days to weeks) or chronic (i.e., longer term, generally lasting weeks to months). Acute stress is commonly due to the occurrence of a major life event or trauma; chronic stress is 16 most often the result of the accumulation of day-to-day stress such as caregiving or poverty. Both acute and chronic stress can have long term consequences for the individual (McEwen, 1998; Selye, 1985, 1998). Biological stressors can activate the stress response without cognitive perception or appraisal of the stressor (Everling & Lating, 2002). An example of a probable biological stressor for ROTC cadets is intensive physical fitness training activities. Stress Response The mind and body react to stressors through activation of several complex physiologic responses at the level of the central nervous system; these responses affect behavior and all major organ systems (Charmandari, et al., 2005). The stress response is tightly controlled and maintained by a variety of feedback loops (Gold & Chrousos, 2002). During the perception of an event appraised to be potentially harmful, the cerebral cortex and limbic systems activate the hypothalamus (Blalock, 2005; Tsigos & Chrousos, 2002) which controls the release of corticotrophin-releasing hormone (CRH) from paraventricular nuclei (PVN) of the hypothalamus. In the acute stress response, characterized by increased circulating cortisol levels, there is a surge of CRH secretion which causes a surge in the secretion of adrenal corticotrophic hormone (ACTH) from the anterior pituitary, resulting in increased secretion of glucocorticoids such as cortisol from the adrenal cortex (Charmandari, et al., 2005). The central stress response also activates neural pathways to increase release of androgens and mineralocorticoids from 17 the adrenal cortex, these also act on the HPA axis to potentiate its activity and increase cortisol secretion (Charmandari, et al., 2005). The elevated levels of cortisol terminate the stress response by acting on the HPA axis through a negative feedback loop to reduce the release of CRH and ACTH, allowing serum cortisol levels to return to basal levels (Burke, Davis, Otte, & Mohr, 2005; Jacobson & Sapolsky, 1991; Sapolsky, et al., 2000). This negative feedback is mediated through two types of intracellular receptors. The majority of these receptors, known as mineralocorticoid receptors or type I receptors, are located within the hippocampus. Type I receptors respond to low concentrations of cortisol in basal conditions and play a role in the normal circadian activity of the HPA Axis. Type II glucocorticoid receptors (GR) are located within the hippocampus, hypothalamus, and pituitary gland (Claes, 2004; Stark, et al., 2001) and respond to both basal and stress-induced elevations of glucocorticoids. With chronic stress, basal levels of cortisol secretion do not follow the normal circadian pattern of cortisol release over 24 hours, suggesting stress induced dysregulation of the HPA axis. Further evidence of HPA axis dysregulation comes from research using magnetic resonance imaging, finding that chronic exposure to elevated glucocorticoids decreases hippocampal volume (McEwen, 1998). As the hippocampus is a site of negative feedback for the HPA axis, the decrease in functional hippocampal integrity may contribute to continued elevation of cortisol levels and dysregulation of the HPA axis as seen in patients with post traumatic stress disorder (PTSD), Cushing's Syndrome, and depression (Lee, Ogle, & Sapolsky, 2002). Studies using animal models of chronic stress found that GR in areas of the prefrontal cortex, hippocampus, and 18 hypothalamus are differentially regulated under chronic stress conditions (Mizoguchi, Ishige, Aburdad, & Tabira, 2003; Stark, et al., 2001). These findings suggest that the hippocampus, as well as GR, may be integral in the dysregulation of the HPA axis with chronic stress. Normal Immune Response Protection against stress, tissue injury, and invading pathogens are controlled through innate (non-specific) and adaptive (specific) immune responses McCance, Huether, Brashers, & Rote, 2009; Segerstrom & Miller, 2004). When exposed to immune stimuli, the innate immune system is activated, and resident cells are actively attracted and migrate to the site of injury, resulting in cellular phagocytosis and removal of debris from dead pathogens. This activity signals the initiation of acute inflammation in which macrophages and other cells are stimulated to produce pro-inflammatory mediators such as cytokines. During the typical innate inflammatory response, concurrent system activation of the adaptive immune response occurs, and macrophages present antigens (foreign, nonself cells) for recognition, killing, and removal. The adaptive immune response requires recognition of the foreign antigens as non-self to preserve and avoid attack of host (self) cells which would cause autoimmune disease. Humoral and cell-mediated immune responses both comprise the adaptive immune system (Kindt, et al., 2006). The humoral immune branch, which involves antibody (immunoglobulin) production, is made of β lymphocytes (β cells) that secrete antigen-specific antibodies that bind and neutralize pathogens, protecting against bacterial, parasitic infections and disease (Kindt, et al., 19 2006). Cell-mediated immunity consists of both T helper lymphocytes (CD4+) and cytotoxic T lymphocytes (CTLs) (CD8+), which protect through killing intracellular and virally infected cells. β cells mature in the bone marrow and T lymphocytes migrate and mature in the thymus gland; both are necessary for humoral and cellular immune responses (Kindt, et al., 2006). When activated by immune challenge, CD4+ T cells can differentiate into either T helper-1 (Th1) or T helper-2 (Th2) cells. The Th1 immune response is associated with a strong cell-mediated killing/CTL response, whereas a Th2 response is characterized by a humoral or antibody-mediated immune response (Esser, et al., 2003). Collectively, all are crucial in the elimination of infections. Immune Response to Vaccination Influenza vaccine consists of inactivated or attenuated viruses, and induces a thymus-dependent antibody response that requires helper T cell involvement (Phillips, 2012). Within the immune system, the response to vaccination involves the coordination of a wide variety of immune cells. Initially antigen presenting cells (APCs), such as dendritic cells and macrophages, present influenza antigen to the T helper cells for antigen recognition. Once T helper cells have recognized the antigen, the stimulation and differentiation of β cells into plasma cells occurs. Plasma cells then produce antibodies or immunoglobulin such as IgA, IgE, IgM, IgG, and IgD (Phillips, 2012; Kindt, et al., 2006; Segerstrom & Miller, 2004). Vaccination with an antigen not previously encountered induces a primary antibody response, wherein the earliest antibody (IgM) is produced with peaks occurring approximately 5 days after vaccination. Interaction between activated T- and β-cells leads to the production of high affinity antibodies in 20 bodily fluids such as IgG (found mainly in the blood) and IgA (found mainly at mucosal surfaces). Secondary antibody responses occur against more common pathogens, such as influenza, when the immune system has been previously exposed to the antigen, either through natural occurrence or by previous vaccination. Secondary antibody responses are usually more rapid and of greater magnitude as some of the previously activated T and βcells become long-lived immune memory cells, which are readily available to respond to subsequent immune antigenic challenges (Phillips, 2012). Inflammatory Response to Vaccination Another essential aspect of the immune response that occurs during vaccination is an inflammatory response, providing immediate host defense and initiating adaptive immune responses to pathogen exposure. Inflammation is a complex defense mechanism involving interactions among multiple classes of mediators and cell types. Inflammation is influenced by the production of cytokines, small polypeptides secreted by white blood cells (WBCs) attracted to sites of injury or infection (Abbas, Lichtman, & Pillai, 2009; Murphy, Travers, & Walport, 2007; Kumar, Abbas, Fausto, & Aster, 2009). Inflammatory cytokines have a diverse range of biological effects that include directing WBCs toward sites of injury or infection, stimulating the production of other mediators involved in the inflammatory response, and enhancing the cytotoxic capacity of certain WBC classes (Miller, et al., 2002). Cytokines are classified as either proinflammatory or anti-inflammatory. Proinflammatory cytokines such as IFN-γ, IL-1β, IL-6, and TNF-α are of special interest in PNI research because they are the primary regulators of innate immune and 21 inflammatory responses (Maes, Christophe, Bosmans, Lin, & Neels, 2000; Maes, et al., 1998a; Maes, et al., 1998b) and have been useful biomarkers of alterations in the immune and stress response systems with chronic stress. The proinflammatory cytokines IL-1β, IL-6, and TNF-α, are released in the early stages of an immune response from a variety of cell types, including macrophages, vascular endothelial cells, fibroblasts, and neurons (Li, et al., 2008; Sasaki, et al., 2002). IFN-γ plays a critical role in both innate and adaptive immunity and has antiviral, immunoregulatory and anti-tumor properties (Schroder, Hertzog, Ravasi, & Hume, 2004). IFN-γ is predominantly produced by natural killer T cells as part of the innate immune response, followed by CD4+ Th1 lymphocytes and CD8+ cytotoxic T lymphocytes (CTL) once antigen-specific immunity develops (Schoenborn, & Wilson, 2007; Schroder, et al., 2004). IFN-γ plays an important role in the differentiation of antigen-inexperienced CD4+ cells (Th0 cells) into Th1 cells. Additionally, IFN-γ suppresses Th2 cell differentiation and secretion of anti-inflammatory cytokines such as IL-4 and IL-10 (Schroder, et al., 2004). Because excessive IFN-γ expression is associated with a number of autoinflammatory and autoimmune diseases(Schroder, et al., 2004), it is of particular interest to this study which examines the effects of perceived psychological stress on inflammatory responses to ex vivo vaccine challenge. IL-1β is another potent inflammatory cytokine, produced primarily by monocytes, but also by activated macrophages, dendritic cells and certain epithelial cells in response to infection and injury (Li, et al., 2008; Sasaki, et al., 2002). Increased levels of IL-1β have been reported in patients with infections, acute inflammation, trauma (i.e., post- 22 surgical) and chronic inflammatory conditions such as atherosclerosis, ischemic disease, and cancer. It is also increased in healthy subjects after strenuous exercise (Li, et al., 2008; Shabakhti, et al., 2004). IL-6 is one of the most studied cytokines in relation to psychological stress and health outcomes (Kiecolt-Glaser, et al., 2003; Ridker, Hennekens, Buring, & Rifai, 2000; Steptoe, Hamer, & Chida, 2007). Concomitantly produced with IL-1β and/or TNF-α, increased levels of IL-6 are commonly seen in chronically stressed individuals. IL-6 is produced by monocytes, macrophages, and non-lymphoid cells in response to stress, tissue injury, or infection. In addition to involvement in the activation of plasma lymphocytes and synthesis of β-cells, IL-6 uniquely exhibits two contrasting inflammatory effects important in the transition from acute to chronic inflammation (Gabay, 2006; Kaplinski, Marin, Montero-Julian, Mantovani, & Farnier, 2003). In models of acute inflammation, IL-6 exhibits anti-inflammatory Th2 properties by activating the HPA axis, resulting in cortisol release (Goebel, Mills, Irwin, & Ziegler, 2000) to resolve inflammation. In contrast, prolonged elevations of IL-6 have been shown to favor a Th1 response and contribute to pathogenesis of rheumatoid arthritis and colitis (Calcagni & Elenkov, 2006; Kaplinski, et al., 2006; Miller, et al., 2002). Typically, the HPA axis prevents the excessive peripheral release of IL-6 through cortisol effects following acute stress. However, resistance to the inhibitory effects of glucocorticoids on proinflammation has been shown to result in higher systemic levels of IL-6 in chronically stressed individuals when compared to healthy control subjects (Miller, et al., 2002). 23 TNF-α, a proinflammatory cytokine, is produced mainly by activated macrophages that plays a key role in the local inflammatory response and helps to control infections. Increased release of TNF-α concomitantly with IL-1β and IL-6 secretion occurs with sepsis and contributes to the pathobiology of septic shock (Goebel, et al., 2000). Circulating levels of TNF-α are also increased in both young and older adults under chronic stress (Wright, et al., 2004). During an immune challenge such as vaccination, the immune system is activated to produce inflammatory cytokines. Measuring the production of proinflammatory cytokines, such as IFN-γ, IL-1β, IL-6, and TNF-α may be helpful in examining inflammatory responses to vaccine challenge in stressed military students. Typically, vaccination stimulates a transient increase in plasma levels of proinflammatory cytokines as part of the innate and adaptive immune responses. This increase in inflammatory cytokines has a profound effect on the HPA axis, inducing glucocorticoid release of cortisol (Tsigos & Chrouos, 2002). IL-1β, IL-6, and TNF-α stimulate secretion of cortisol through direct effects on the cells of the adrenal cortex and indirect effects on CRH release from the hypothalamus and ACTH from the anterior pituitary (Petrovsky, 2001; Petrovsky & Harrison, 1997). Thus, the proinflammatory release of cytokines due to vaccination is counterbalanced by the anti-inflammatory effects of increased cortisol secretion (Elenkov, et al., 2000a; Tsigos & Chrousos, 2002) and reciprocal Th2 derived anti-inflammatory cytokine activity (Elenkov, et al., 2000b; Sapolsky, et al., 2000; Vedhara et al., 1999). The cross-regulation of neuroendocrine and inflammatory responses is needed for T-cell and β-cell proliferation, antibody synthesis, and 24 seroprotection (Burns, et al., 2002a; Burns, et al., 2002b; Cohen, et al., 2001; Elenkov, et al., 2000b; Glaser, et al., 1992; Glaser, et al., 2000; Kiecolt-Glaser, et al., 1996; Morag, et al., 1999; Sapolsky, et al., 2000; Tsigos & Chrousos, 2002). Cortisol Regulation of Inflammatory Cytokine Production Cortisol, the end-product of the stress response and HPA axis activation, inhibits nearly all aspects of the immune system, including the inflammatory response to immune stimuli (Gold & Chrousos, 2002; Tsigos & Chrousos, 2002). Glucocorticoids influence the balance between Th1derrived proinflammatory and Th2 anti-inflammatory cytokine secretion (Elenkov, 2004). For example, proinflammatory cytokines such as IL-1β, TNFα, and IFN-γ are down regulated by cortisol (Elenkov, et al., 2000a; Hu, Li, Meng, & Ivashkiv, 2003) in contrast, the production of anti-inflammatory cytokines such as IL-10 and IL-4 is enhanced by cortisol (Elenkov, & Chrousos, 1999, 2002; Schuld, et al., 2003). The inhibitory role of glucocorticoids (e.g., cortisol) provides host protection from the detrimental consequences of an overactive inflammatory response (Anisman & Merali, 2003; Charmandari, et al., 2005; Kiecolt-Glaser, et al., 2002; Petrovsky, 2001). Glucocorticoids have been used as anti-inflammatory treatment since the 1930s (Chrousos, 2000). Glucocorticoid steroidal medications are generally thought to be immunosuppressive (Chrousos, 2000); however, more recent evidence suggests the interplay between the immune system, stress system, and inflammatory responses is more complex than previously believed (Cohen, et al., 2012a; Miller, et al., 2002; Rohleder, 2012; Tsigos & Chrousos, 2002). Normally, cortisol decreases production of proinflammatory cytokines, abating the inflammatory response. Glucocorticoid 25 responsiveness or sensitivity to the effects of cortisol has an important role in regulating the cytokine balance and susceptibility to inflammatory, autoimmune and infectious diseases (Cohen, et al., 2012a; Miller, et al., 2002; Rohleder, 2012; Tsigos & Chrousos, 2002). During the acute or initial phase of inflammation with vaccine exposure, cellular immune responses occur through Th1 lymphocyte secretion of proinflammatory cytokines IFN-γ and TNF-α, which recruit macrophages, cytotoxic T lymphocytes, and natural killer cells to kill and remove antigenic debris (Elenkov, 2004). Cortisol also plays an important role in modulating inflammatory responses to immune stimuli through its effects on acquired immunity, primarily through the stimulation of Th2 lymphocytes (Chrousos, 2000). As a result of elevated cortisol and glucocorticoid stimulation of Th2 lymphocytes the secretion of anti-inflammatory cytokines IL-4 and IL-10 occurs to suppress Th1 proinflammatory cytokines, and to affect humoral (antibody) immunity by promoting differentiation of β lymphocytes into plasma cells to produce antibodies (Elenkov, 2004). The shift from the initial cellular (Th1/proinflammatory) to humoral (Th2/anti-inflammatory) immune responses indicates the suppressive effects of cortisol on proinflammatory cytokine production (Calcagni & Elenkov, 2006; Elenkov, 2004; Glaser, et al., 2001). Effect of Chronic Stress on Immune Function Psychological stress can affect immune function in response to vaccination or viral challenge (Black, 2003). Chronic stress affects inflammation, cortisol regulation of cytokine production levels and antibody production during vaccination. 26 Chronic Stress and Inflammation Psychological stress is known to increase production of inflammatory cytokines and cortisol in otherwise healthy individuals (Hamer & Steptoe, 2007). Both physical and psychological stress provokes transient increases in cytokines; in particular IL-6 (DeRijik et al., 1997; Zhou, Kusnecov, Shurin, DePaoli, & Rabin, 1993). Kiecolt-Glaser (2003) suggested that the increase in IL-6 may be due in part to stress behaviors such as smoking, over eating, excessive alcohol use, insufficient sleep, or leading a sedentary lifestyle without exercise that affect IL-6 production. Increased levels of IL-6 can persist for as long as 3 years beyond the stress experience (Kiecolt-Glaser, et al., 2003). Acute inflammation is a limited beneficial response, particularly during infectious challenge. In contrast, chronic inflammation may result from persistent infection, prolonged exposure to inflammatory stimuli or toxins, or presence of autoimmune disease. Transition to chronic inflammation occurs when acute inflammatory responses cannot be resolved. Chronic inflammation is prolonged and may last for weeks, months or longer. Because chronic inflammation may not manifest the typical signs or symptoms seen with acute inflammation, a person with chronic, systemic, low-grade inflammation may appear asymptomatic and healthy, but could be at risk for infection and disease. Chronic Stress and Cortisol Regulation of Inflammatory Cytokines Cortisol, increased in response to elevated levels of cytokines, is also activated in stressful situations, and is the neuroendocrine link between stress, inflammation, and immunity. Psychological stress activates the HPA axis to elicit cortisol secretion, which may have significant effects on regulation of inflammatory and immune responses. 27 Acute stress exposure activates the HPA axis, resulting in short bursts of increased cortisol secretion. Acute increases in cortisol secretion just prior to vaccination enhance antibody production in healthy individuals (Edwards et al., 2006). However, chronic stress exposure leads to prolonged activation of the HPA axis and prolonged elevation of cortisol levels and suppressed immune responses (Agarwal & Marshall, 2001; Marshall, et al., 1998; Plotnikoff, Faith, Murgo, & Good, 2007), diminished viral infection clearance (Glaser & Kiecolt-Glaser, 2005), and poorer antibody response to vaccination (Burns, et al., 2002a; Burns, et al., 2002b; Cohen, et al., 2001; Glaser, et al., 1992; Glaser, et al., 2000; Kiecolt-Glaser, et al., 1996; Morag, et al., 1999; Vedhara, et al., 1999). The prolonged elevations of proinflammatory cytokines that result from chronic stress induce a decrease in glucocorticoid receptors in the central nervous system, causing hypothalamic CRH-secreting cells to become insensitive to increasing cortisol concentrations and dampening normal negative feedback responses. Exposure to high amounts of stress, coupled with an impaired response to glucocorticoids due to diminished cortisol concentrations or impaired GR function, predisposes individuals to upper respiratory infections (Cohen, et al., 2012a) as well as autoimmune and inflammatory, glucocorticoid-resistant, inflammatory disease (Burnsides, et al., 2012; Silverman & Sternberg, 2008). Chronic activation of the HPA axis with prolonged cortisol elevations seen in individuals under chronic stress or GR hypersensitivity leads to suppression of proinflammatory/Th1 immune responses and increases risk for infection (Chrousos, 1995; Chrousos & Gold, 1992; Elenkov, Chrousos, et al., 2000b). These 28 types of conflicting findings are barriers to understanding how stress and inflammation impact immune responses, factoring in infection and disease risk. Nonetheless, if inflammation is not controlled, illness and disease can occur. In earlier research, psychological stress was shown to exert globally suppressive effects on immune responses including reduced humoral immunity, reduced lymphocyte proliferation, and reduced cytotoxic function of natural killer cells. A sustained elevation in cortisol caused by psychological stress favors a persistent bias toward a Th2 response, which impairs innate Th1 proinflammatory responses to pathogens (Cohen, et al., 2002; Herbert & Cohen, 1993; Kiecolt-Glaser, et al., 1995). However, in the context of sustained or chronic psychological stress, individuals exhibited decreased or blunted cortisol responses to acute stress (Heim, et al., 2000; Miller, Cohen, & Ritchey, 2002), persistent elevations in serum levels of proinflammatory cytokines, and poorer antibody response following vaccination (Burns, et al., 2002a; Burns, et al., 2002b; Cohen, et al., 2001; Glaser, et al., 1992; Glaser, et al., 2000; Kiecolt-Glaser, et al., 1996; Morag, et al., 1999). The traditional concept of stress-induced immunosuppression does not offer a clear and definitive explanation for the immune effects of chronic stress. It has been proposed that chronic psychological stress, resulting in the prolonged activation of the HPA axis and elevation of serum cortisol levels, may also result in downregulation of the expression and function of glucocorticoid receptors. This functional loss of glucocorticoid sensitivity (GCS) or glucocorticoid resistance (GCR) leads to HPA axis dysregulation and a subsequent, feed-forward cycle of uncontrolled proinflammatory cytokine responses or biased Th1 responses (Miller, et al., 2002). 29 Chronic stress can lead to glucocorticoid resistance in which the immune system demonstrates a diminished sensitivity to glucocorticoids that normally control excessive inflammation. Impaired GCS or GCR can be inherited or acquired, and is a major problem in the glucocorticoid steroid treatment of many inflammatory diseases including asthma, ulcerative colitis, systemic lupus erythematosus, and rheumatoid arthritis, where as many as 30% of patients may be glucocorticoid resistant (Burnsides, et al., 2012; Hearing, Norman, Smyth, Foy, & Dayan, 1999). Additional support for significant GCR comes from previous studies reporting that an estimated 30 % of the normal healthy population is glucocorticoid nonresponsive or resistant, or has impaired GCS (Burnsides, et al., 2012; Hearing, et al., 1999). Evidence of the effects of chronic stress and impaired GCS of inflammation comes from studies of animals as well as humans. Animal studies demonstrate the possibility that chronic stress diminishes the immune system’s responsiveness or sensitivity to GCs that normally controls excessive inflammation. Researchers, using social disruption as a stress model, found that socially defeated mice had reduced GCS to stressed-induced elevations of GCs (e.g., corticosterone) in lipopolysaccharide (LPS) stimulated splenocytes, resulting in higher IL-6 production (Stark, et al., 2001). Mirroring these findings, socially disrupted stress-induced defeated mice with decreased GCS were found to have greater risk for increased inflammation and mortality from experimental influenza infection and septic shock (Padgett, Marucha, & Sheridan, 1998; Quan, et al., 2001). These findings warrant research in humans, particularly in military personnel who often are experiencing, have encountered, or can expect to face stressors 30 of long family separations (i.e. social disruption, chronic stress) during deployments, and challenging reintegration transitions from the battlefield to the home-front. GCS is most often measured through ex vivo assays, where immune cells of chronically stressed people (as compared to their respective control groups) are harvested and incubated with a bacterial endotoxin (e.g., LPS, tetanus) or a mitogen (e.g., phytohemagglutinin [PHA]) in combination with various concentrations of synthetic GCs such as dexamethasone (DEX), hydrocortisone, or prednisone to measure dose response. Studies using this approach have shown reduced GCS of immune cells, and subsequent higher production levels of proinflammatory cytokine IL-6 and TNF-α in the presence of varying concentrations of DEX from samples of spousal caregivers of dementia patients (Bauer, et al., 2000), parents of children undergoing treatment for cancer (Miller, et al., 2002), and stress-related syndromes such as extreme exhaustion in industrial employees (Wirtz, et al., 2003), chronic fatigue (ter Wolbeek, et al., 2008), and depression (Miller, Pariante, & Pearce, 1999). Miller and colleagues (2002) demonstrated that peripheral blood cells obtained from 25 young adults (n =25) parenting a child undergoing medical treatment for cancer produced higher levels of the proinflammatory cytokine IL-6 when exposed to dexamethasone (a potent synthetic form of cortisol) compared with cells from 25 nonchronically stressed adult parents of healthy children without cancer Miller, et al., 2002). Wirtz and colleagues (2003), found that blood monocytes from highly exhausted, middle-age, healthy, male industrial workers had reduced responsiveness to DEX inhibition of LPS-stimulated IL-6 production than did non-exhausted workers (p =0 31 .003). Although this study only focused on healthy male subjects, the authors suggested that reduced GCS may lead to sustained cytokine production once monocytes have encountered a biological stressor such as LPS. They also proposed that altered regulation of proinflammatory cytokine production may serve as one possible pathway linking exhaustion with increased risk of atherosclerosis in healthy and other at- risk populations. Cohen and colleagues (2012a) proposed that chronic exposure to a major stressful life event may result in glucocorticoid receptor resistance (i.e., GCR or decreased GCS), and in turn, result in a failed down-regulation of the inflammatory response, and subsequent increased signs and symptoms of upper respiratory infection to rhino virus exposure. Subjects were assessed for chronic stress, exposed to the rhino virus, and monitored in quarantine for 5 days for signs of respiratory infection and illness. GCR was assessed prior to viral challenge using a standard ex vivo model, wherein leukocytes were co-incubated with lipopolysaccharide (LPS) and DEX, and proinflammatory cytokine production were measured in supernatants, obtained from nasal fluid samples. Cohen and colleagues (2012) found that subjects who reported higher levels of stress also had higher GCR (lower GCS) prior to viral exposure produced higher proinflammatory cytokines when they were infected. Higher GCR (i.e., impaired GCS) predicted greater production of proinflammatory cytokines, IL-6 and TNF-α, obtained from nasal tissue fluids among infected and healthy subjects. According to the authors of this study, this finding indicates that chronic stress may induce glucocorticoid resistance or lower GCS, which in turn interferes with appropriate regulation and glucocorticoid control of inflammation. 32 Chronic Stress and Poor Antibody Production Psychological stress has been shown to enhance the risk for infectious disease, prolong infection-related illnesses, and reduce antibody production (Konstantinos & Sheridan, 2001; Burns, et al., 2002a; Burns, et al., 2002b; S. Cohen, et al., 2001; Glaser, et al., 1992; Glaser, et al., 2000; Kiecolt-Glaser, et al., 1996; Morag, et al., 1999). In a seminal study, Kiecolt-Glaser and colleagues (1996) found impaired antibody responses to influenza vaccination in Alzheimer’s caregivers relative to matched controls; only 37% of the highly stressed caregivers demonstrated an increase in antibody response at 1 month following vaccination (Kiecolt-Glaser, et al., 1996). Other studies have found that men and women chronically stressed by caring for a spouse with dementia had distinct deficits in both cellular and humoral immune responses to the influenza vaccine compared with well-matched control non-caregiver subjects (Kiecolt-Glaser, et al., 1996a; Vedhara, et al., 2003; Vedhara, et al., 1999). Although conceptually distinct, stress and depression involve activation of the HPA axis and increased plasma levels of proinflammatory cytokines (Anisman & Merali, 2003). In much of the literature on psychosocial stress these two constructs are measured together. Depression is associated with higher proinflammatory responses to antigen challenge (Glaser, Robles, Sheridan, Malarkey, & Kiecolt-Glaser, 2003; Zhou, et al., 1993). Glaser and colleagues (2003) found that individuals reporting more depressive symptoms showed increases in IL-6 serum levels two weeks following influenza vaccination when compared to those who reported less depressive symptoms. 33 The protection offered through antiviral vaccines is contingent upon the humoral as well as the cell-mediated immune response and is reduced in chronically stressed individuals (Deng, Jing, Campbell, & Gravenstein, 2004). Chronic psychological stress impaired antibody responses in younger adults following influenza, rubella, or hepatitis B vaccinations (Burns, Carroll, Drayson, Whitham, & Ring, 2003; Burns, et al., 2002b; Glaser, et al., 1992; Glaser, et al., 2000; Miller, et al., 2004; Morag, et al., 1999). Stress also reduces the antibody response to antibacterial vaccines (Glaser, et al., 2000; Burns, et al., 2003; Burns, et al., 2002b). These studies show that individuals who reported greater stress or anxiety had poorer, delayed, and shorter-lived immune responses to recommended and seasonal vaccinations. Individuals with poorer responses to vaccines have higher rates of clinical illness associated with respiratory viruses, herpes virus, and Epstein-Barr virus (Cohen et al., 1998; S. Cohen, Tyrell, & Smith, 1991; Glaser, et al., 1999; Plotkin, 2001). Paradox Despite world-wide use of the influenza vaccine, the effect of individual factors on vaccination outcomes is complex and not completely understood. The literature does not clearly explain why chronically stressed individuals who have elevated cortisol exhibit persistent elevations of serum inflammatory cytokines such as IL-6, and poorer antibody response following vaccination (Burns, et al., 2002a; Burns, et al., 2002b; Cohen, et al., 2001; Glaser, et al., 1992; Glaser, et al., 2000; Kiecolt-Glaser, et al., 1996; Morag, et al., 1999; Miller, et al., 2004). If stress downregulates immune responses through increased secretion of cortisol, then proinflammatory cytokines, such as IL-6 34 should be suppressed as well. As vaccine stimulated proinflammatory cytokine production initially increases and elicits cortisol secretion, a shift from Th1 to Th2 activity promotes β-lymphocyte proliferation, differentiation, and antibody production (Burns, et al., 2002a; Burns, et al., 2002b; Cohen, et al., 2001; Elenkov, et al., 2000a; Glaser, et al., 1992; Glaser, et al., 2000; Kiecolt-Glaser, et al., 1996b; Morag, et al., 1999; Sapolsky, et al., 2000; Tsigos & Chrousos, 2002). If this is the case, there should be a decrease in the production of Th1 proinflammatory cytokines, which would permit an increase in Th2 activity, and possibly greater antibody production in response to chronic stress. Much of the relevant literature regarding the relationships among psychological stress, inflammation, and immune function are focused on the effects of glucocorticoids. The two basic models that describe the effects of glucocorticoids in immune function during stress are the immunosuppression and the glucocorticoid-resistance models. Immunosuppression versus Glucocorticoid Resistance Immunosuppression The immunosuppression model's main tenet is that stress suppresses the immune function in a way that results in greater vulnerability to infectious diseases (Miller, et al., 2002): Stress is assumed to downregulate immunity by (a) activating autonomic nervous system fibers that descend from the brain to lymphoid organs, (b) triggering the secretion of hormones and neuropeptides that bind to white blood cells and alter 35 their function, and (c) inducing immunomodulatory coping behaviors, such as cigarette smoking and alcohol consumption (p. 531). The immunosuppression model does not provide an explanation for how stress might influence diseases and symptoms whose central feature is excessive inflammation. The immunosuppression model focuses on the suppression of inflammatory cytokine responses to immune stimuli. The paradox with this theory is that if stress downregulates immunity through the triggering of the stress response with secretion of cortisol, then proinflammatory cytokines should be suppressed as well. There should be a decrease in the production of inflammatory mediators and possibly enhanced antibody production in response to chronic stress. However, chronic stress is associated with elevated levels of circulating biomarkers of inflammation and poorer antibody response to vaccination. Glucocorticoid Resistance In an attempt to explain this paradox, Miller and colleagues (2002) proposed the glucocorticoid resistance model, which serves as the foundation of this study's overarching hypothesis: chronic stress diminishes leukocyte responsiveness to the antiinflammatory effects of glucocorticoid hormones (i.e. cortisol). This model begins with stress-induced activation of the HPA and sympathetic adrenal medullary (SAM) axes. Chronic stress results in prolonged exposure to elevated levels of glucocorticoids, leading to downregulated expression or altered function of glucocorticoid receptors. Miller also found that downregulation of receptors impairs the cell’s ability to respond to the normal 36 anti-inflammatory actions of cortisol. This process can also increase risk of diseases associated with inflammation by creating a persistent proinflammatory milieu. For the purposes of this study, the term glucocorticoid sensitivity (GCS) will be used in lieu of glucocorticoid resistance. The term sensitivity is a more appropriate description in this study, which is designed to determine whether perceived psychological stress affects virus-induced cytokine production by leukocytes of healthy military students, and if dexamethasone (a synthetic form of cortisol) suppresses cytokine production. For the purposes of this study, we have defined GCS as the percent reduction in vaccine-induced cytokine production (Bailey, et al., 2003; S. Cohen, et al., 2012a; Marques, et al., 2009; Miller, et al., 2002; Stark, et al., 2001). Military individuals as well as veterans and military college students may be under considerable stress. Consequently, stress may reduce GCS causing loss of normal suppressive effects of cortisol on production of proinflammatory cytokines in response to an immune stimulus such as attenuated influenza virus. This hypothesis has not previously been examined among healthy military personnel or military college student subjects, and may prove useful in explaining the high rates of influenza infection in military personnel. Purpose of this Study Studies demonstrate that despite being a presumably fit and healthy population, military training recruits, cadets, and deployed personnel have higher rates of upper respiratory infections, such as influenza, than do civilian populations. This poses a significant health risk to the readiness of military units world-wide. 37 Literature suggests that psychological stress may play a role in the pathogenesis of respiratory infections (Cohen et al. 2012a), which could explain the increased risk of respiratory infections such as influenza in military personnel. The inflammatory response, in particular production of proinflammatory cytokines, plays a key role in the antibody response to immune stimuli such as vaccination. Cortisol plays a key role in abating the inflammatory response to promote antibody production. We hypothesized that with chronic stress, cells lose their sensitivity to effects of glucocorticoids, resulting in a protracted inflammatory response and reduced antibody production. Research conducted on military students is sparse despite the fact that previous studies have shown that perceived stress has negative effects on cadet physical health and susceptibility to illness (Glaser, et al., 1999; Lee, et al., 1992). Thus, the current study was designed to determine if perceived psychological stress affects influenza vaccineinduced production and regulation of pro-inflammatory cytokines in whole blood of healthy ROTC college students. 38 CHAPTER 3 STUDY DESIGN AND METHODS Chapter 3 presents the research design, the sample/setting and the measures and instruments used in the study. Procedures for collecting and processing blood specimens and biomarker assays are described. The protection of human subjects, data collection, and a plan for data analysis are discussed. Research Design A cross-sectional descriptive design was used to accomplish the specific aims of the study. Sample and Setting This was a study of full-time military college students regardless of gender. The inclusion criteria included the following: able to read, write, and speak English; 18-39 years old; general good health with no pre-existing conditions (e.g., asthma, Crohn’s disease, Cushing’s disease, cardiovascular disease, metabolic syndrome, Type II diabetes, atherosclerosis, COPD, chronic pain, pregnancy/lactation); no recent acute illness or use of antibiotic, steroidal or anti-inflammatory, or anti-depressant medications in the past 6 weeks (with the exception of oral contraceptives). The criteria were designed to minimize the interference of factors known to affect the production of proinflammatory 39 cytokines or immune function. Subjects were recruited via flier advertisements and faceface contact with military college students in the Tri-Service military service Reserve Officer Training Corps at a large Midwest public university. Measures Study variables included 1) psychological stress, 2) cytokine production, and 3) glucocorticoid sensitivity (GCS). Demographic data were also collected about factors that could affect study results. Demographic Data: Demographic Survey Form (Appendix A). This questionnaire was used to collect pertinent demographic data, including: General Information (i.e., age, race, ethnicity, gender and marital status); Military Information (i.e., rank/pay-grade/ROTC student rank, years of military service, military service branch, active duty/reserve duty status, commissioned/enlisted status, designator/ specialty, deployment history, date and length of most recent deployment, and combat/combat support exposure); and Student Information (i.e., cumulative GPA, student class rank, and scholarship status). Psychological Stress: Psychological stress is defined as an individual’s experience of negative events or perceived distress and negative mood. In this study, psychological stress was measured using the Perceived Stress Scale (PSS) and the trait subscale portion of the State-Trait Anxiety Inventory (STAI-T). 40 Perceived Stress Scale (PSS). The PSS has been used in numerous populations and has been widely translated into other languages (Cohen & Janicki-Deverts, 2012b; Cohen, et al., 1983; Glaser, et al., 1999). It is a 10-item questionnaire used to elicit an individual’s evaluation of stressful experiences in the past month (Appendix B). The responses are rated on a Likert-scale from 0 to 4, or from “never” to “very often” (0 = Never, 1 = Almost never, 2 = Sometimes, 3 = Fairly often, 4 = Very often). A score is determined by reversing the scores on the 4 positive items, and then summing across all 10 items for a global score. Scores can range from 0 to 40, with higher scores indicating greater stress. PSS scores in the range of 0-13 indicate low stress, those in the range of 14-26 indicate moderate stress, and those in the range of 27-40 indicate high stress (Cohen & Janicki-Deverts, 2012b). The PSS was designed to be used in individuals with at least a junior high school education and can be administered in 5 minutes or less. No special training is required to administer or score the instrument and all instructions for scoring were clearly described in the original publication. Psychometric properties of the PSS are appropriate for this study. Reliability and internal validity have been reported as high Cronbach's α coefficients (0.84 to 0.86) (S. Cohen, Kamarck, & Mermelstein, 1983; Polit & Beck, 2008). It is a valid and reliable instrument across diverse populations (Cohen, et al., 1983) and was previously used with 2 military academy student samples as well as other military populations (Glaser, et al., 1999; Taylor, et al., 2008b). State-Trait Anxiety Inventory (STAI-T). The trait portion subscale was used to measure self-reported anxiety, as the second measure of psychological stress. The STAI- 41 T measures longstanding, enduring anxiety and includes a series of 20 items (Appendix C). Trait anxiety represents a predisposition to react with anxiety in perceived stressful situations: trait anxiety scores are higher in psychoneurotic, chronically stressed, and depressed people (Spielberger, Gorsuch, & Lushene, 1983; Taylor, et al., 2008b). The STAI-T targets how respondents “generally feel” using a 4-point Likert-type scale (e.g., “I am a steady person”, “I lack self-confidence”) with possible responses ranging from “almost never” to “almost always.” Other examples of items are “I feel pleasant,” “I worry too much about something that does not matter” and “I make decisions easily” (Spielberger, et al., 1983). The STAI-T inventory is scored by reverse coding each positive item and then summing across all items. Scores range from 20 to 80, with lower scores indicating less trait anxiety and higher scores indicating higher trait anxiety. Reliability and internal validity are acceptable and have been reported as 0.79 to 0.93 (Spielberger, et al., 1983; Taylor, et al., 2008b); stability has been established through test-re-test correlation (Barnes, Harp, & Jung, 2002; Grös, Antony, Simms, & McCabe, 2007). Raw scores obtained from STAI-T for this study were treated as continuous variables for data analysis. A median split technique was used to identify high and low anxiety groups, and to determine the strength of correlation with continuous PSS scores. Cytokine Production: Production of IFN-γ, IL-1β, IL-6, and TNF-α in whole blood was measured by exvivo stimulation of whole blood with attenuated influenza virus. Ex vivo stimulation of whole blood was used in this study because it is a useful tool in investigating cytokine 42 responses to a various stimuli, including bacterial endotoxin (i.e., LPS or PHA), antigens (i.e., influenza, tetanus, or hepatitis vaccines), allergens, and antibiotics (Thurm & Halsey, 2005). It is also useful in determining the effects that potential inhibitors (e.g., pharmacological agents such as corticosteroids or synthetic glucocorticoids such as DEX) may have on inflammatory processes (Thurm & Halsey, 2005; Creed, et al., 2009; Cohen & Janicki-Deverts, 2012a). Using ex vivo whole blood culture provides an approximation of the state of circulating cells and their interactions occurring in vivo. Whole blood was selected over isolated leukocytes for cytokine measures because whole blood assays are believed to be better reflections of in vivo cytokine activity, since whole blood contains physiological concentrations of factors that influence immune cell function. Additionally, the use of ex vivo whole blood cultured conditions alleviates placing human subjects at increased risk for illness or unnecessary increased stress-induced immune changes that could confound outcome measures (Thurm & Halsey, 2005). Whole blood was stimulated with Afluria trivalent inactivated influenza vaccine that contained the following three strains for 2011-2012: A/California/7/09 (H1N1)-like virus (pandemic (H1N1) 2009 influenza virus); A/Perth /16/2009 (H3N2)-like virus; and B/Brisbane/60/2008-like virus (CSL Biotherapies, Parkville, Australia). Influenza vaccine was used in this study as an immuno-stimulant to trigger cytokine production ex vivo because it provides an ideal context to study the general model of stress leading to disease via effects on the HPA axis and inflammatory regulation (Cohen & JanickiDeverts, 2012a). Influenza vaccine has been widely used in studies as a mild immune trigger to examine individual differences in both in vivo and ex vivo inflammatory 43 responses in young and elderly adult populations (Posthouwer, Voorbij, Grobbee, Numans, & van der Bom, 2004; Skowronski, et al., 2003; van der Beek, Visser, & de Maat, 2002; Glaser, et al., 2003; Tsai, et al., 2005). The inflammatory responses induced by influenza vaccine are substantially milder and have a more transient effect on cytokine responses. Ex vivo influenza vaccine-stimulated inflammatory responses, as used in this study, may more closely mimic immune responses that occur in vivo than using ex vivo stimulation of cytokine production through endotoxin exposure with LPS. The ex vivo use of LPS may not reflect immune responses in vivo, as LPS works through a different immune pathway than influenza vaccine, which requires less incubation period and is elicited through a much more powerful, stimulated secretion of cytokines from monocytes (Thurm & Halsey, 2005). Thus, the use of ex vivo influenza vaccine as an immuno-stimulant of cytokine production in this current study is a useful model for examining individual differences in inflammatory responses to immune challenge. Glucocorticoid Sensitivity (GCS) GCS is defined as the capacity of immuno-stimulated leukocytes to respond to the normal anti-inflammatory actions of glucocorticoids (Bamberger, Schulte, & Chrousos, 1996; DeRijik, et al., 1997; Miller, et al., 2002; Rohleder, et al., 2010; Wirtz, et al., 2003). Assays to determine glucocorticoid sensitivity include the dexamethasone suppression test (Chriguer, et al., 2005; Ebrecht et al., 2000; Syed, Redfern, & Weaver, 2010), inhibition of peripheral blood mononuclear cell (PBMC) proliferation (Chriguer, et al., 2005), quantification of the number and affinity of glucocorticoid receptors (GRs) in PBMCs (Chriguer, et al., 2005), and glucocorticoid suppression of either mitogen or 44 antigen-stimulated cytokine production by peripheral blood leukocytes (PMCs) (DeRijik, et al., 1997; Ebrecht, et al., 2000; Miller, et al., 2002; Syed, et al., 2010; Wirtz, von Känel, Rohleder, & Fischer, 2004; Wirtz, et al., 2003). For the purposes of this study, glucocorticoid suppression of cytokine production by PBC in whole blood stimulated with influenza vaccine was examined. Dexamethasone (DEX) has been widely used as a glucocorticoid (GC) (DeRijik, et al., 1997; Miller, et al., 2002; Rohleder, et al., 2010; Wirtz, et al., 2003) in studies examining GCS (Wirtz, et al., 2003). The basic principle used to assess GCS is to induce cytokine production and co-incubate cells with serial dilutions of DEX to determine the inhibition of cytokine production. In this study, DEX phosphate (Sigma-Aldrich, St. Louis, MO; Material Number D2915-100MG, Batch SLBB7572V) was used at a final concentration of DEX 200 nM to approximate GC levels commonly found in vivo during moderate stress (Agarwal & Marshall, 2001; Miller, et al., 2002). GCS was measured by examining the inhibitory effect of DEX on production of IFN-γ, IL-1β, IL-6, and TNF-α by influenza vaccine-stimulated peripheral blood cells. The following formula was used to quantify percent inhibition of cytokine production: % Inhibition = 1- stimulated cytokine level with DEX X100 stimulated cytokine level w/out DEX e.g., % Inhibition = 1- 20 pg/ml X100 = 80% inhibition of cytokine production 100 pg/ml A lower percent inhibition of cytokine production indicated lower GCS (greater resistance) to anti-inflammatory effects of DEX. 45 Data Collection Procedure Military students were approached face-to-face and study information was presented via an IRB-approved oral script by the investigator. Flyers were posted on university bulletin boards in the ROTC facility. In order to prevent undue influence during the consent process, the investigator’s military rank was not included on recruitment flyers, advertisements, or in any subsequent email/phone/face-to-face communications with the military student participants. The investigator wore civilian business attire during all interactions and explained his role as a doctoral student. Prospective subjects were also informed that all data were confidential and would not be divulged to military Command Staff. Subjects were made aware that participation was voluntary and that they could withdraw from the study at any time without consequence. All potential subjects were encouraged to ask questions and voice concerns regarding participation. If the potential subject agreed to participate after the study was explained and time was provided to ask questions, informed (Appendix D) and HIPAA (Appendix E) consents were completed. Following enrollment, subjects were seated in a private room in the ROTC Unit building and completed the demographic data form, the 10-item PSS, and 20-item STAIT. Blood (20 ml) was drawn from each subject’s antecubital vein into heparin-coated vacutainer tubes (Becton-Dickinson, Franklin Lakes, NJ; BD Model Number 367880) using 21-gauge butterfly needles. All subjects required only one venipuncture. The blood tubes from each individual were placed in an individually labeled, biologic specimen bag on an ice-pack and transported from the ROTC unit to the laboratory by the 46 investigator. All specimens were processed within 2 hours of collection. To control for diurnal variations of endogenous cortisol effects on inflammatory cytokine production levels, all blood was drawn between 9:00 a.m. and 3:00 p.m. The total time commitment averaged 20 minutes for each subject. Each subject received a $10 gift card as compensation for their time. Ex-vivo cytokine production Three ml of whole blood was diluted 1:1 with complete 1640 RPMI medium containing no fetal calf serum (Gibco by Life Technologies) and 1.8 ml of the diluted blood was placed into each of 3 wells of a 6-well culture plate [Figure 4]. Well A was diluted blood with 0.2 ml medium to capture spontaneous, cytokine production in nonstimulated cells, Well B was blood with 0.1 ml of the influenza vaccine and 0.1ml of medium to capture vaccine-induced cytokine production, and Well C was blood and 0.1 ml of influenza vaccine and 0.1 ml of dexamethasone to determine glucocorticoid sensitivity. The final volume in each well was 2.0 ml. The samples were then incubated for 72 hours at 37°C with 5% CO2. At 72 hours, the culture fluid was aspirated from each well and centrifuged at 500g (1250 rpm) for 10 minutes. The cell-free supernatant fluids were stored in 500 μL aliquots in a -80°C freezer until batch-assays for cytokine levels were performed (De Groote, et al., 1992; Maes, et al., 1998a). 47 Figure 4 Blood Collection, Cultures, and Assays A B C Figure 4. Illustration of Blood Culture Well Conditions (A) Spontaneous/non-stimulated, B) Stimulated and C) Inhibited), Incubation Periods, and Processing Supernatants for Cytokine Assays. Measurement of Cytokine Production The concentrations of IFN-γ, IL-1β, IL-6, and TNF-α in the culture fluid supernatants were determined using quantitative multiplex array technology (Meso Scale Discovery [MSD]). The MSD 4-Plex I Ultra-Sensitive Kits demonstrate good intra-assay and inter-assay precision (MSD Catalog; Product Number K15009C-2). To control for any variation between assay kits, samples were batched by subject for analysis and all samples were assayed in duplicate. Intra-assay and inter-assay coefficients of variation 48 are < 5% and < 10%, respectively. Sensitivity of detection varied by cytokine: IFN-γ = 0.55 pg/ml; IL-1β = 2.4 pg/ml; IL-6 = 0.7 pg/ml; and TNF-α = 0.2 pg/ml. All samples were run at the same time according to the manufacturer’s instructions. Protection of Human Subjects Approval The study was reviewed and approved by the Institutional Review Board for Biomedical Research at The Ohio State University (see Appendix E; Protocol # 2012H0079). Potential Risks The single-time venous blood draw may be slightly painful and cause bruising and/or light-headedness. Rarely, syncope or infection at the site may result. To minimize risk, only the investigator, who is skilled at phlebotomy, performed all blood draws. If a subject became light-headed, the investigator would remain with the subject until he/she was fully recovered. These risks were minor compared to the knowledge expected to be gained from this study. There were no long-term consequences of subject participation. Potential Benefits There were no direct benefits to individual participants. 49 Confidentiality All subjects were assigned a 3 digit number and no personal, identifiable data were collected in this study. The subject numbers were the only identification method used to link blood specimen data to questionnaire data. For example, demographic form (#001), PSS (#001), STAI-T (#001), and blood specimen tube (#001), followed similarly by (#002) for the next subject. Consent forms were securely stored in a locked file cabinet. Subject data were stored on a secure server only accessible to the research team by using an encrypted password. These measures minimized risk for breach of subject confidentiality. Data Analysis Sample Size Calculation A sample size of 55 achieved 90% power at alpha of 0.05 to detect an R-Squared of 0.15 (medium effect) attributable to 1 predictor in a multiple regression model, adjusting for 3 control variables with an R-Squared of 0.10 (Cohen, 1998). Data Analysis Demographic information was described using frequencies and descriptive statistics, and was explored to determine normality of the distribution. Data were analyzed using the Statistical Package for Social Sciences (SPSS) software (version 19.0) (IBM Cooperation, Armonk, NY). Cytokine data were reviewed for outliers, missing data, and errors. Cytokine values that were extreme and biologically impossible were considered erroneous and cleaned from the dataset. Only 14 cytokine 50 values (1.9% of the total measurements) from 6 different subjects were removed. Untransformed concentrations of each cytokine are reported as mean and standard deviation. Statistical Analysis Descriptive statistics (frequencies, percentages, means, and standard deviations) were estimated for all variables. Following univariate analyses, bivariate data analyses were conducted using Pearson correlation coefficients for relationships between continuous variables, and one-way Analysis of Variance (ANOVA) testing with post-hoc procedures to test for significance and differences between each previously described ex vivo cytokine condition. Multiple regression models were fit to examine if PSS predicts GCS (percent inhibition of influenza vaccine-stimulated cytokine production) of IFN-γ, IL-1β, IL-6, and TNF-α, controlling for age, gender, race, and student cumulative grade point average (GPA). Significance level was set a priori at 0.05. Specific Aims, Hypotheses, and Statistical Analysis Plans Aim 1. Determine if psychological stress affects proinflammatory cytokine production by peripheral blood cells stimulated ex vivo by Influenza Vaccine. Hypothesis1. Peripheral blood cells from subjects with higher psychological stress (based on PSS & STAI-T scores) will secrete more IFN-γ, IL-1β, IL-6, or TNF-α in response to stimulation by Influenza Vaccine. 51 Analysis Plan 1: Bivariate analysis for this aim was conducted through estimating Pearson Correlation to assess the relationship among PSS and stimulated cytokine production. Aim 2. Determine if dexamethasone suppresses vaccine-stimulated production of IFN-γ, IL-1β, IL-6, and TNF-α. Hypothesis 2a. There will be significant differences in cytokine concentration in each culture condition (spontaneous, vaccine-stimulated, DEX+vaccine). Hypothesis 2b. DEX will significantly reduce vaccine-induced cytokine production. Analysis Plan 2: A one-way Analysis of Variance (ANOVA) with the post-hoc procedure, Dunnett's T3 test, was used to test for significant effects of DEX on vaccine-induced production of IFN-γ, IL-1β, IL-6, and TNF-α. Aim 3. Determine if psychological stress predicts GCS (percent inhibition of stimulated cytokine production). Hypothesis 3. Psychological stress (as measured by PSS scores) will be the strongest predictor of glucocorticoid sensitivity (GCS)–DEX suppression of vaccine-induced cytokine production of IFN-γ, IL-1β, IL-6, and TNF-α. Analysis Plan 3: The relationship between Stress (PSS) and GCS of each cytokine was estimated with Pearson correlations, followed by multiple 52 regression models controlling for age, gender, race, and student cumulative GPA. 53 CHAPTER 4 RESULTS Descriptive Statistics The results of this study are organized into four sections. The first section describes the characteristics of the sample. The second section presents the results of the psychosocial measures. The third section describes data analysis of the demographics, psychosocial variables, proinflammatory cytokine production concentrations, and glucocorticoid sensitivity (GCS). The fourth section presents the results related to each aim of the study. The purpose of the study was to determine if higher psychological stress diminished GCS and regulation of proinflammatory cytokine production in a population of military students. It was hypothesized that subjects with greater psychological stress would have lower GCS, producing higher proinflammation subsequent to an ex vivo influenza vaccine challenge. Descriptive and inferential statistics were used to address the study hypotheses. Data were analyzed using the Statistical Package for SPSS, version 19.0. Demographic Characteristics A convenience sample of 61 healthy male and female military (active duty, reservist, and veteran) full-time college students with an average age of 22 years (SD = 54 4.1, ranging from 18 to 37 years) who met the inclusion criteria were enrolled over a period of 3 months from July through September, 2012. The demographic data for the sample were obtained via a self-report questionnaire form (Appendix A). Information included age, race, gender, level of education, marital status, current military rank, and previous military experience. Demographic characteristics of the sample are displayed in Table 1. Educational and military service characteristics of the sample are presented in Table 2 and 3, respectively. Table 1 Demographic Characteristics of the Sample (n =61) ________________________________________________________________________ n (%) Gender Male 46 (75) Female 15 (25) Race/Ethnicity White African American Asian Native American Indian Unknown Marital Status Married Resides with spouse Does not geographically reside with spouse 53 1 5 1 1 (86) (2) (8) (2) (2) 6 (10) 2 (3) 17 35 (28) (57) 1 (2) Single Significant other involved No significant other involved Divorced Children Yes 3 (5) No 58 (95) ________________________________________________________________________ 55 Table 2 Educational Characteristics of the Sample (n =61) ________________________________________________________________________ n (%) Educational level College graduates 11 (18) Current Graduate Students 3 (5) Current Undergraduate Students 47 (77) Student Class Standing Freshman Sophomore Junior Senior Graduate-level student 9 20 4 25 3 (15) (33) (7) (41) (5) Student Cumulative Grade Point Average (GPA) 4.0 GPA 4 (6) > 3.8 - < 4.0 GPA 9 (15) 3.5-3.79 GPA 16 (26) 3.0-3.49 GPA 20 (33) > 2.0 - < 3.0 GPA 12 (20) < 2.0 GPA 0 (0) ________________________________________________________________________ 56 Table 3 Military Service Characteristics of the Sample (n =61) ________________________________________________________________________ n (%) Military Service Branch Army 12 (20) Navy and Marine Corps 46 (75) Air Force 3 (5) Military Duty Status Active Duty Active Reserves Inactive Reserves 13 7 41 (21) (12) (67) Years of Military Service 1-4 years 5-8 years 9-16 years 50 8 3 (82) (13) (5) Deployment History Yes No 9 52 (14) (85) Number of Deployments 0 Deployment 1 Deployment 2-4 Deployments > 5 Deployments 51 2 5 3 (84) (3) (8) (5) Deployment Type Experience (n = 15) Combat Combat- Support Humanitarian Other (i.e. submarine deterrent patrol) Multiple Types 1 3 2 5 4 (7) (20) (13) (33) (27) Military ROTC Scholarship Status Full Scholarship Student 36 (59) Partial Scholarship Student 2 (3) Non-Scholarship Student 23 (38)____________________ Note. Under Military Service Branch, subject numbers and percentages for Marine Corps and Navy are combined, as both are within the Department of the Navy. This allows the overall total sample percentages to equal 100%. 57 Differences in demographic data across gender were examined with contingency table analyses. There were no statistically significant differences for this sample among gender, racial/ethnicity, marital status, education, military service branch, military status, military physical fitness assessment results, military body composition assessment, deployment history, type of deployment, length of deployment, or years of military service, scholarship recipient category, and student class standing. Psychosocial Variables Data Results Forty-eight percent (n = 29) of the sample had experienced a "Major LifeStressor", 46% (n =28) denied any "Major Life-Stressor", and 6% (n = 4) were unsure of any "Major Life-Stressor." Findings from the10-item Perceived Stress Scale (PSS) and the 20-item trait subscale in the Spielberger State Trait Anxiety Inventory-Trait (STAI-T) and are shown in Table 4. Table 4 Psychosocial Characteristics of the Sample (n = 61) ________________________________________________________________________ M (SD) Score Range ________________________________________________________________________ PSS Score 12.82 (6.32) (0-36) STAI-T Score 37.11 (9.46) (23-77)___ Associations among Demographics, Psychosocial Variables, and GCS Demographics and Psychosocial Characteristics Correlations between demographic variables and psychosocial variables are presented in Table 5. PSS and STAI-T scores were positively correlated (r = 0.627, p 58 <0.01). Demographic variables were not correlated with psychological stress as measured by the PSS and STAI-T. Table 5 Correlations among Demographics and Psychosocial Characteristics (n =61) ________________________________________________________________________ Measure GPA BMI Years in Number PSS STAI-T Military Deployments ________________________________________________________________________ Age .037 .197 .783** -.683** .114 .184 GPA ------ BMI Years in Military Number Deployments .091 .096 .009 -.152 -.067 ------ .145 -.167 .092 -.109 .148 .179 -.115 -.164 ------ -.753 ------ PSS * p<0.05, **p<0.01 ** ------ .627** _ Demographics and GCS of Cytokine Production GPA was positively correlated with GCS for only TNF-α (r = 0.281, p = 0.028); the higher the student GPA, the higher GCS (percent inhibition) of TNF-α production, as illustrated in Table 6. GPA was the only demographic variable that was significantly correlated with GCS of cytokine production. 59 Table 6 Correlations among Demographics and GCS of Cytokine Production (n =61) ________________________________________________________________________ Measure GPA BMI Years in Number GCS GCS GCS GCS Military Deployments (IFN-γ) (IL-1β) (IL-6) (TNF-α) ________________________________________________________________________ Age .037 .197 .783** -.683** .176 -.089 .043 .096 GPA .096 .009 .109 .220 .061 .281* ------ .145 -.167 -.171 -.178 -.238 -.225 .201 -.026 .103 .087 ------ .091 BMI Years in Military ------ Number Deployments * p<0.05, **p<0.01 -.753** ------ -.165 .044 -.126 .086 ______________________________ Results for Research Aim 1 The first research aim was to determine if psychological stress affects proinflammatory cytokine production by peripheral blood cells stimulated ex vivo by influenza vaccine. Psychological Stress and Stimulated Cytokine Production Psychological and spontaneous, non-stimulated cytokine production was examined. Spontaneous cytokine production obtained from non-stimulated (control) cultures demonstrated that psychological stress, as measured by the PSS and STAI-T, was not statistically significant in the relationship to production values of IFN-γ, IL-1β, IL-6, and TNF-α (all ps>0.05). Then the extent to which psychological stress influenced cytokine production as stimulated ex vivo by influenza vaccine was examined. Bivariate analysis was conducted by estimating Pearson correlation to assess the relationship among PSS and stimulated 60 cytokine production. Stimulated cytokine production, obtained from influenza stimulated cultures, demonstrated that psychological stress as measured by the scores obtained on PSS and STAI-T was not statistically significant in the relationship to stimulated cytokine production of IFN-γ, IL-1β, IL-6, and TNF-α. Results for Research Aim 2 The second research aim was to determine if dexamethasone (DEX) suppresses vaccine-stimulated production of IFN-γ, IL-1β, IL-6, and TNF-α. Differences in Proinflammatory Cytokine Production and ex vivo Conditions To determine the suppressive effects of DEX on influenza vaccine-stimulated cytokine production, mean cytokine production was compared and examined for differences in 3 experimental groups. As shown in Table 7, the mean values of cytokine production for IFN-γ, IL-1β, IL-6, and TNF-α were obtained from the following conditions: (a) spontaneous production of cytokines in non-stimulated cells, (b) influenza vaccine-induced cytokine production, and (c) DEX-suppression of vaccine-induced cytokine production (as a measure of glucocorticoid sensitivity). 61 Table 7 Mean Proinflammatory Cytokine Production Values and Experimental Conditions ________________________________________________________________________ Cytokine Experiment n M (SD) ________________________________________________________________________ IFN-γ a) Spontaneous 61 2.80 6.53 b) Stimulated 61 1262.23 1224.75 c) Inhibited 61 496.47 523.80 IL-1β a) Spontaneous b) Stimulated c) Inhibited 59 61 61 9.75 11.64 2.53 31.14 14.66 3.16 IL-6 a) Spontaneous b) Stimulated c) Inhibited 55 60 60 34.46 323.99 102.34 98.81 312.68 149.63 TNF-α a) Spontaneous 59 4.77 11.07 b) Stimulated 61 74.54 86.04 c) Inhibited 61 13.15 59.31 _ Note. Ex vivo conditions for Cytokine production (a, b, and c): a) Spontaneous (unstimualted/control): culture medium only b) Stimulated: culture medium with Influenza Vaccine 9 µg/100µl c) Inhibited: culture medium with Influenza Vaccine 9 µg/100µl and DEX (200 nM) All values are in picograms per milliliter (ρg/mL). One-way analysis of variance (ANOVA) was used to test for differences in mean cytokine production levels of IFN-γ, IL-1β, IL-6, and TNF-α among the 3 ex vivo experimental conditions (Figure 5 and Table 8). Based on significant ANOVA findings, a multiple comparison post-hoc procedure using the Dunnett's T3 method was conducted to evaluate pair-wise contrasts. IFN-γ Production among ex vivo Conditions The mean cytokine production of IFN-γ was: for condition (a) (Spontaneous) 2.80 (SD = 6.53), for (b) (Stimulated) 1262.23 (SD = 1224.75), and for condition (c) (Inhibited) 496.47 (SD = 532.80). A one-way ANOVA was performed to assess 62 differences in the 3 ex vivo conditions. The 3 conditions differed, F (df = 1, 2) = 40.93, p<0.001. There was a moderate effect size with a partial eta, η = 0.313, and the observed power was strong (1.00). The R2 of 0.313 indicates that the 3 ex vivo conditions account for 31.3% of the variance in IFN-γ production. Based on the significant ANOVA for differences in the 3 conditions, a multiple comparison post-hoc procedure was conducted. The Dunnett's T3 method, appropriate in this situation due to the unequal variances in the sample, was used for all pair-wise contrasts. All of the pairs of condition groups were significantly different (p<0.001) as shown in Figure 5. IL-1β Production among ex vivo Conditions The mean cytokine production of IL-1β was: for condition (a) (Spontaneous) 9.75 (SD = 31.4), condition (b) (Stimulated) 11.64 (SD = 14.66), and condition (c) (Inhibited) 2.53 (SD = 3.16). A one-way ANOVA was performed to assess for differences in the 3 ex vivo conditions. The 3 conditions differed, F (df = 1, 2) = 3.596, p =0.029. There was a small effect size (η = 0.039), and the observed power was moderate (0.660). The R2 of 0.039 indicates that the 3 ex vivo conditions account for only about 3.9% of the variance in IL-1β production. Based on the significant ANOVA for differences in the 3 conditions, a multiple comparison post-hoc procedure was conducted. Condition Groups (b) Stimulated and (c) Inhibited were found to be significantly different (p<0.001) as shown in Figure 5. 63 IL-6 Production among Ex vivo Conditions The mean cytokine production of IL-6 was: for condition (a) (Spontaneous) 34.46 (SD = 98.81), condition (b) (Stimulated) 323.99 (SD = 312.68), and condition (c) (Inhibited) 102.34 (SD = 149.63). A one-way ANOVA was performed to assess for differences in the 3 ex vivo conditions. The 3 conditions differed, F (df = 1, 2) = 30.241, p<.001. There was a moderate effect size (η = .260), and the observed power was strong (1.00). The R2 of 0.260 indicates that the 3 ex vivo conditions account for only about 26.0% of the variance in IL-6 production. Based on the significant ANOVA for differences in the 3 conditions, a multiple comparison post-hoc procedure was conducted. All of the condition groups were found to be significantly different (p<.001) as illustrated in Figure 5. TNF-α Production among ex vivo Conditions The mean cytokine production of TNF-α was: for condition (a) (Spontaneous) 4.77 (SD = 11.07), for condition (b) (Stimulated) 74.55 (SD = 86.04), and condition (c) (Inhibited) 13.15 (SD = 10.29). A one-way ANOVA was performed to assess for differences in the 3 ex vivo conditions. The 3 conditions differed, F (df = 1, 2) = 34.168, p<.001. There was a moderate effect size (η = .277) and the observed power was strong (1.00). The R2 of 0.277 indicates that the 3 ex vivo conditions account for only about 27.0% of the variance in TNF-α production. Based on the significant ANOVA for differences in the 3 conditions, a multiple comparison post-hoc procedure was conducted. All of the condition groups were found to be significantly different (p<.001) as displayed in Figure 5. 64 Figure 5 Differences in Cytokine Production among the 3 ex vivo Conditions IL-1β Production IFN-γ Production Condition: Condition: a) Spontaneous a) Spontaneous b) Stimulated b) Stimulated c) Inhibited c) Inhibited Note: Effect of different ex vivo conditions on the 65 release of IFN-γ, TNF-α Production IL-6 Production IL-1β, IL-6, and TNF-α. Results Condition: Condition: are given as a) Spontaneous a) Spontaneous means ± standard b) Stimulated b) Stimulated error of the mean c) Inhibited c) Inhibited 65 (SEM). Table 8 Summary of ANOVA for Mean Differences in Cytokine Production among the 3 ex vivo Conditions (n =61) ________________________________________________________________________ Sum of df Mean F p η R2 Squares Square ________________________________________________________________________ IFN-γ Between groups 48439748.958 2 24219874.479 40.493** .000 .313 .313 Within groups 1.065E8 178 598117.861 Total 2.187E8 181 ________________________________________________________________________ IL-1β Between groups 2818.608 2 1409.304 3.596* .029 .039 .039 Within groups 69758.296 178 391.901 Total 84031.826 181 ________________________________________________________________________ IL-6 Between groups 2678300.289 2 1339150.145 30.241** .000 .260 .260 Within groups 7616651.082 172 44282.855 Total 14608639.412 175 ________________________________________________________________________ TNF-α Between groups 175701.330 2 87850.665 34.168** .000 .277 .277 Within groups 457662.785 178 2571.139 Total 808565.369 181_______________________________________ * p<0.05, **p<0.01 Results for Research Aim 3 The third research aim was to determine if psychological stress predicts GCS. Psychological Stress and Immune Glucocorticoid Sensitivity (GCS) The relationship between stress (PSS) and GCS of each cytokine was estimated with Pearson correlations, followed by multiple regression models controlling for age, gender, race, and student cumulative GPA. 66 Higher PSS scores were significantly correlated with lower GCS for IL-1β, IL-6, and TNF-α (see Table 9). An inverse relationship existed between psychological stress and GCS with reference to continuous raw score data obtained by the PSS and GCS as measured by percent inhibition of IFN-γ, IL-1β, IL-6, and TNF-α. Although there is an inverse relationship between PSS continuous raw scores and GCS of IFN-γ, this relationship was not statistically significant; further analysis through multiple regressions was not warranted. Table 9 Correlations among PSS and GCS of Proinflammatory Cytokines (n =61) ________________________________________________________________________ Measure PSS GCS GCS GCS GCS IFN-γ IL-1β IL-6 TNF-α ________________________________________________________________________ PSS ----.198 -.420** -.296* -.259*______ *p<0.05, **p<0.01 Following Pearson correlation estimation of the relationship between stress (PSS) and GCS of each cytokine, multiple regression models were conducted on PSS and GCS of IL-1β, IL-6, and TNF-α, controlling for age, gender, race, and student cumulative GPA. PSS and GCS of IFN-γ Production Based on the non-significant IFN-γ results in the preceding analysis, F (df = 1, 59) = 2.42, p>0.125, further analysis was not conducted. 67 PSS and GCS of IL-1β Production A multiple regression was conducted with the following predictor variables: PSS, age, gender, race, and GPA, with GCS of IL-1β as the outcome variable. The model produced an R2 of 0.176, which was statistically significant, [F (df = 1,59) = 12.637, p<0.01]. PSS, age, gender, race, and GPA accounts for 17.6% of the variance in GCS of IL-1β. There was a strong negative relationship between psychological stress (via PSS raw score) and GCS (percent inhibition) of IL-1β production (β = -0.420, t = -3.55, p<0.01) when controlling for age, gender, race, and GPA. The results of the regression analysis are shown in Table 10. PSS and GCS of IL-6 Production A multiple regression was conducted with the following predictor variables: PSS, age, gender, race, and GPA, with GCS of IL-6 as the outcome variable. The model produced an R2 of 0.088. PSS, age, gender, race, and GPA can account for 8.80% of the variance in GCS of IL-6. There was a strong negative relationship between psychological stress (via PSS raw score) and GCS (percent inhibition) of IL-6 production (β = -0.296, t = -2.36, p<0.05) when controlling for age, gender, race, and GPA. The results of the regression analysis are shown in Table 10. PSS and GCS of TNF-α Production A multiple regression was conducted with the following predictor variables: PSS, age, gender, race, and GPA, with GCS of TNF-α as the outcome variable. The model produced an R2 of .067, which was statistically significant, [F (df 68 = 1,59) = 4.246, p<.05]. PSS, age, gender, race, and GPA accounted for 6.7% of the variance in GCS of TNF-α. There was a strong negative relationship between psychological stress (via PSS raw score) and GCS of TNF-α production (β = -0.259, t = -2.060, p<0.05) when controlling for age, gender, race, and GPA. The results of the regression analysis are shown in Table 10. Table 10 Summary Multiple Regressions of PSS and GCS of IL-1β, IL-6, and TNF-α (n =61) ________________________________________________________________________ Variable B SE B β t p R2 ________________________________________________________________________ GCS of IL-1β -1.724 .485 -.420 -3.555** .001 .176 GCS of IL-6 -1.332 .564 -.296 -2.360* .022 .088 GCS of TNF-α -.640 *p<0.05, **p<0.01 .310 -.259 -2.060* .022 .067 69 CHAPTER 5 DISCUSSION AND CONCLUSION This study was conducted to determine if psychological stress levels experienced by military students might affect the inflammatory response to vaccine challenge, explaining in part increased susceptibility to influenza infection in military personnel. Using whole blood obtained from healthy ROTC college students, this study specifically sought to ascertain: (a) whether self-reported psychological stress influenced cytokine production stimulated ex vivo by influenza vaccine, (b) the suppressive effects of DEX on influenza vaccine-stimulated cytokine production, and (c) if psychological stress predicts GCS (percent inhibition of stimulated cytokine production). It was hypothesized that subjects with greater psychological stress will have lower GCS in an ex vivo laboratory model of influenza vaccine challenge. Chapter 5 provides an explanation of results and integrates current study findings with existing literature. The limitations of the study are discussed as are implications and future directions for research. 70 Discussion Psychological Stress The average score on the 10-item Perceived Stress Scale (PSS) was 12.82, similar to U.S. norms (Cohen, et al., 1983), but lower than the average score of 16.78 reported by young adults 18 to 25 years of age (Cohen & Janicki-Deverts, 2012b). Only one subject in the sample reported high stress. Because the PSS and STAI-T were highly correlated, self-reported psychological stress is likely consistent with the way each subject would rate their perceived stress on any given day, adding to the validity of the PSS used in this study. PSS and STAI-T scores were correlated; the lower PSS scores may indicate the sample in this study was not as stressed as other similarly aged adults in college or military service, warranting future research focused on active duty military populations. Psychological Stress and Vaccine-Stimulated Cytokine Production It was hypothesized that peripheral blood cells from subjects with higher selfappraised evaluations of psychological stress would have higher production of cytokines (IFN-γ, IL-1β, IL-6, and TNF-α) in response to stimulation by influenza vaccine. The results demonstrate that military students with higher PSS scores had higher stimulated production of IFN-γ, IL-1β, IL-6, and TNF-α in response to influenza vaccine challenge ex vivo, but this relationship was not statistically significant as hypothesized. This may be a result of sample size, the young age of the subjects, or the low scores on the PSS. 71 DEX-induced Suppression of Vaccine-stimulated Cytokine Production It was hypothesized that DEX would significantly reduce vaccine-induced cytokine production of IFN-γ, IL-1β, IL-6, and TNF-α. The mean cytokine production levels under 3 culture conditions were compared: (a) Spontaneous [non-stimulated control], (b) Stimulated [using influenza vaccine], and (c) Inhibited [using vaccine and DEX], which would evidence the suppressive effects of DEX on vaccine-stimulated production of IFN-γ, IL-1β, IL-6, and TNF-α. Results demonstrated that all condition pairs for cytokine production of IFN-γ, IL-1β, IL-6, and TNF-α were statistically significant in influenza vaccine-stimulated and DEX-Inhibited conditions, demonstrating that DEX had significant effect in the suppression of vaccine-stimulated cytokine production. This finding is consistent with previous studies reporting the effects of ex vivo DEX-induced, glucocorticoid suppression of inflammatory cytokine production (Miller, et al., 2002; Cohen et al., 2012a). Most of the subjects were male, consistent with the general military population as reported by the Defense Manpower Data Center (2009). Although gender did not have a significant relationship with psychological stress (PSS scores), GCS, or production of proinflammatory cytokines, male subjects exhibited higher cytokine concentration values in all three ex vivo experimental culture conditions. This finding is supported by Wirtz and colleagues (2004), who reported that IL-6 and TNF-α production were higher in men, and glucocorticoid-induced inhibition of LPS-stimulated IL-6 and TNF-α cytokine production, was less pronounced in men than in women. 72 Psychological Stress and GCS It was hypothesized that psychological stress (as measured by PSS scores) would be the strongest predictor of GCS, with the inhibitory effect of DEX on vaccinestimulated cytokine production of IFN-γ, IL-1β, IL-6, and TNF-α less in cells from subjects with higher stress compared to cells from subjects with lower stress. The results verified that a higher PSS score was negatively related to lower GCS for IL-1β, IL-6, and TNF-α only. These data are consistent with previous research suggesting that chronic stress may induce glucocorticoid resistance or lower GCS (Cohen, et al., 2012a). The negative relationship between PSS and GCS of IFN-γ production was not significant. Vaccine-stimulated production of IFN-γ was increased without significant suppression by DEX, suggesting that IFN-γ production may be less sensitive to suppressive effects of cortisol as well. The reason for this remains unclear, and requires further research to better understand the effects of stress on antibody responses to influenza production and resistance to influenza infection. GPA was statistically and positively correlated with GCS for only TNF-α; the higher the student GPA, the higher the percent inhibition of proinflammatory cytokine production of TNF-α (higher GCS). This is consistent with prior research demonstrating that examination stress suppresses immune responses with a downregulation of Th1 proinflammatory cytokines in favor of an increase in Th2 anti-inflammatory cytokines (Kang & Fox, 2001). An analysis was conducted to determine which variable best predicts GCS of cytokine production. Age, gender, race, and student GPA were entered into four 73 regression models with PSS. After controlling for these variables, multiple linear regression analysis revealed that psychological stress, as measured by the PSS score, was the strongest predictor of GCS of stimulated cytokine production for IL-1β, IL-6, and TNF-α, but not IFN-γ. These findings are consistent with findings that chronic stress can diminish the immune system GCS in spousal caregivers of dementia patients (Bauer, et al., 2000), parents of children undergoing treatment for cancer (Miller, et al., 2002), and stress-related syndromes such as vital exhaustion (Wirtz, et al., 2003), chronic fatigue (ter Wolbeek, et al., 2008), and depression (Miller, et al., 1999). Study Limitations This study had a number of limitations. The cross-sectional design prevents making any causal inferences regarding the relationship between psychological stress and overall glucocorticoid sensitivity of peripheral blood leukocytes stimulated with influenza vaccine. The small sample size is a limitation to generalizability. The study population tended to be homogenous and primarily male as a result of convenience sampling of military students. Although female reproductive hormones (i.e. progesterone and estrogen) and contraceptive use influence on inflammatory cytokine activity were accounted for, the sample size and gender distribution impaired the examination of gender effects on GCS and inflammatory cytokine production. Because the sample was not racially diverse, effects and differences in cytokine production levels based on race could not be determined. Subsequent studies should use recruitment strategies aimed at enrolling 74 more women and more racially and ethnically diverse subjects, allowing generalization to the diverse U.S. military population. The psychological stress scores were not evenly distributed, and may have affected overall results about the relationship between psychological stress and spontaneous and stimulated cytokine production. An alternative for future studies would be to use the PSS as a screening tool for inclusion, appropriately and equally matching number of subjects into tertile stress groups (i.e., low, moderate, and high stress). Implications for Future Research Despite the overall sample’s lower than average self-reported psychological stress, findings indicate that higher psychological stress resulted in a significant correlation with lower glucocorticoid sensitivity to suppressive effects of DEX on cytokine production in a healthy, young adult population. Application of this study’s design and findings to future research has potential implications for military health and readiness; this is particularly true since dysregulated glucocorticoid regulation of inflammatory cytokine production and impaired immune responses, as measured in other studies, has strong associations with adverse, relevant health outcomes in stressed populations. The process of antibody formation is complex and unfolds in stages over a period of weeks to months in response to vaccination. Future research would benefit by using repeated measures of stress and cytokines over time to better describe the timing, change, and magnitude of cytokine production responses to vaccine challenge in relation to psychological stress. Ex vivo vaccine challenge is a useful model for examining the 75 effects of psychological stress on inflammatory responses to immune triggers under wellcontrolled conditions (Glaser & Kiecolt-Glaser, 2005; Tsai et al., 2005). This study demonstrated that a seasonal, inactivated, trivalent influenza vaccine elicits a measurable and statistically significant inflammatory response ex vivo. Future studies with longer monitoring periods, and repeated collection of neuroendocrine, inflammatory, and immune measures such as cortisol, inflammatory cytokines, and influenza antibody titers would be useful in determining the extent of stress effects on humoral response and longterm antibody protection. Investigation of stress differences and effects in cytokine production levels across race and ethnic populations should be another primary goal of future research. When compared to Caucasian subjects, African-Americans tend to exhibit higher basal and stimulated inflammatory markers (Kiecolt-Glaser et al., 2003), as decreased GCS to DEX, and increased disease-related morbidity (Federico, et al., 2005). Reproducing this study in a larger, more racially and/or ethnically diverse population would be a valuable scientific contribution. Overall findings from this study, coupled with previous research findings (Hearing, et al., 1999; Miller, et al., 2002; Wirtz, et al., 2004; Wirtz, et al., 2003; Cohen, et al., 2012a), support the central hypothesis that higher perceived stress could impair GCS of cells capable of producing proinflammatory cytokines. Future research, using similar measures and influenza antibody titer, could help determine if the extent of GCS and cytokine production predicts a greater risk of decreased antibody production following influenza vaccination in high-stress populations. 76 The design and findings of this study provide a meaningful method of framing future studies about the effects of stress-reduction interventions, such as tai chi, in at-risk or immune-suppressed populations (McCain, Gray, Walter, & Robins, 2005; McCain et al., 2003; McCain & Smith, 1994). Findings can help nurse researchers and clinical nurse practitioners conceptualize health promotion interventions and infectious disease risk outcomes for immunizations in otherwise healthy military personnel. Conclusion Military personnel are often subjected to stressful situations and events, such as active combat, deployment, reintegration, and physical performance standards. Despite being a presumably fit and healthy population, military training recruits, cadets, and deployed personnel have higher rates of upper respiratory infection-related illness and hospitalizations than civilian populations. This remains as a significant barrier to health and readiness of military units worldwide. Vaccines are readily available for many diseases, but are not always effective. Research increasingly suggests that chronic stress and inflammation are critical to immune response, health, and disease risk following vaccination. Stress effects on neuroendocrine and immune responses to vaccination remain complex, and the susceptibility for increased disease risk, for certain populations is still unclear. This study provides a model for testing the assumption that chronic stress impairs normal regulation of cytokine production in response to vaccination. This study was the first to demonstrate a significant relationship between selfreported stress levels and GCS of proinflammatory cytokine production in response to ex vivo exposure to influenza vaccine in a sample of young, healthy, military college 77 students reporting lower than average psychological stress. The results can serve as a beginning point for a greater understanding of stress and immune responses. It can also provide support for researchers and clinicians striving to improve military service member health and readiness. 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Contemporary Issues in Education Research, 3(1), 39-51 92 APPENDIX A: DEMOGRAPHIC DATA QUESTIONNAIRE FORM 93 94 95 96 97 98 99 100 101 102 103 APPENDIX B: PERCEIVED STRESS SCALE (PSS) 104 105 APPENDIX C: STATE TRAIT ANXIETY INVENTORY (STAI) 106 107 108 109 110 111 APPENDIX D: INFORMED CONSENT FORM 112 113 114 115 116 117 APPENDIX E: HIPAA AUTHORIZATION TO PARTICPATE IN RESEARCH 118 119 120 121 APPENDIX F: HUMAN SUBJECTS APPROVAL TO CONDUCT RESEARCH 122 123