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HLSC 4613 Principles of Epidemiology Instructor: Ches Jones, PhD University of Arkansas Contents Unit One-Introduction and Definitions Unit Two-Rates and Measurements Unit Three-Descriptive Epidemiology Unit Four-Analytic Epidemiology Unit Five-Screening and Surveillance Unit One Introduction and Definitions Epidemiology-Definition Branch of medicine dealing with a combination of knowledge and research methods concerned with the distribution and determinants of health and illness in populations, and with contributors to health and control of health problems. Main Components of Epi 1) 2) An analytic, descriptive component termed classical epidemiology, and A diagnosis, management of illness, and critical review of literature termed clinical epidemiology. Evolution of Modern Epidemiology 3 Eras Miasma (Sanitary statistics) – Disease due to bad air. – Prior to 1850 Infectious Disease (Germ theory) – 1850-1930 Chronic Disease (Black box) – 1930-present Infectious Disease (Acute) Cause DiagnosisTreatment Severity Disease of short duration Affects mainly the young Chronic Disease Cause Diagnosis Treatment (cure) Disease of long induction period Time allows multiple causes to develop Affects mainly the old Public Health Approach Implementation How to do it? Intervention Evaluation What works? Risk Factor Identification What’s the cause? Surveillance What’s the problem? Problem Response 3 Levels of Prevention Primary- prevention of the development of disease Secondary- early detection and treatment of disease Tertiary-rehabilitation and/or restoration of effective functioning after treatment of disease Epidemiologic Surveillance Definition The ongoing process and systematic collection, analysis, and interpretation of health data in the process of describing and investigating the health status of a population. Epidemiological Surveillance Two types: Passive-Disease frequency data collected Periodically. Current results not available Active-Disease status is updated constantly. Usually as the result of an outbreak or other identified epidemic. Is more costly than passive surveillance. Current Uses of Epidemiology Identifying the etiology and cause of a new epidemic or syndrome. Examples: – Carpal Tunnel Syndrome – Toxic Shock Syndrome – Post Traumatic Stress Syndrome Current Uses of Epidemiology Investigating the risk associated with a harmful exposure Examples: Health risks associated with: – Radon exposure – Lead – Environmental tobacco smoke – Dioxin Current Uses of Epidemiology • Determine if a treatment is effective. Results from a study showing survival rates following segmental and total mastectomies. 100 90 80 70 0 1 2 3 4 5 Years after Surgery Total Maste ctomy Segmental Mastectomy Current Uses of Epidemiology Study and identify health service utilization needs and trends. Examples: – Effect of health insurance coverage on health services used by poor and nearpoor populations. – Impact of youth violence on emergency room services and utilization Current Uses of Epidemiology To provide rationalization and justification for health policy planning. Examples: – Smoking bans – Gun-control bans – Drunk-driving laws – Hazardous waste regulations Aims of Epidemiology 1) 2) 3) Study occurrence, distribution, and progression of diseases and to describe the health status of a population. Provide data that will contribute to the understanding of the etiology of health and disease Promote utilization of epidemiological concepts to the management of health services. Types of Epi Strategies Used 1) Descriptive 2) Analytic (retrospective (case-control), prospective (longitudinal or cohort), and cross-sectional) 3) Experimental (cause and effect) Limitations of Epidemiology Difficult to assess risk from epidemiology data because: 1) Research studies on humans are sometimes unethical, expensive, and difficult to obtain. 2) Chronic disease situations often finds very low risk. Limitations of Epidemiology (Continued) 3) The number of persons with the disease or exposure is very small. 4) Latency period between exposure and disease status are sometimes many years apart. 5) Humans may be exposed to multiple chemical, biological, and physical hazards. Epidemiological Models – Traditional Model – Health Field Concept – Other Models Traditional Model Agent Host Environment Health Field Concept Biology/Heredity Lifestyle Environment Health Care System Health Field Concept Lifestyle – Leisure – Consumption patterns – Employment/occupational risks Environment – Physical – Social Psychological Health Field Concept Human Biology – Genetic Inheritance maturation and aging Medical Care System – Preventive – Restorative – Curative Use of HFC in Epi 1) 2) 3) Selection of diseases that are of high risk and contribute to mortality and morbidity. Allocate resources proportionally to disease occurrences. Allocate total health expenditures to the four elements of the epidemiology model. Web of Causation Shows multiple factors Antecedents of risk factors Time Illustrates complication of disease etiology Identifies intervention points Diabetes Diet Smoking Lack of Exercise High Sugar Weight Loss Stress Addiction Snacks Poor diet Job High School Child No time Family No Equipment Job Concept of Risk With multiple causes and chronic diseases, epidemiologists like to refer to the concept of causality based on the odds (risks, chances) of the occurrence of disease or health status as associated with the occurrence of a specific exposure (risk/protective factor). Criteria for determining causality (more applicable to single cause/single effect) Temporal relationship: a causes b, then a comes first Specificity: a cause leads to a single effect Strength or intensity (strong relationship between findings) Consistency (same association is found study after study) Coherence (does it make sense?) Criteria for a Risk factor 1) Risk increases with increased exposure 2) Time sequence Risk Factor 3) Disease Limited or no error involved Chronic Disease Risk Factors Unit Two Epidemiological Measurement Epidemiological Measurement Mortality Rates Morbidity Rates Epidemiological Measurement Where to get data? – Mortality/Vital Statistics – Morbidity/Hospital/Clinic Records – Health Assessments/Behavior Surveys – Surveillance Systems Measures of Mortality Crude Mortality Rate Infant Mortality Rate Specific Mortality Rate (age, sex, race, and cause) Case Fatality Rate Proportionate Mortality Ration (PMR) Epidemiological Measurements General Formula Number of events (cases, deaths, services) In a specified time period Population at risk of experiencing the event X n 10 Some base of ten: 1,000 10,000 100,000 Rates and Risks Reasons to Use Caution When Interpreting Rates and Risks Ecological Fallacy (generalizing) Variations in Base (what base is used) False Association (rates apply to pop’n) Variance of Rates (differences based on rates) Crude Mortality Rate All deaths during a calendar year Population at mid-year X 1,000 = deaths per 1,000 Infant Mortality Rate Most widely accepted measure for estimating the health status of a population Number of infant deaths * (less than 1 year of age) Number of live births *excludes fetal deaths X 1,000 (common rate) Specific Mortality Rates Before the experiences of two populations can be compared, account must be taken for differences in age, sex, race, or cause. Rates are adjusted in order to remove the effect of a confounding variable, such as age, sex, or race. Specific Mortality Rates Examples Mortality Rates Specific For: Age Specific MR: by age group Gender Specific MR: for males, for females Race/Ethnic Group: for white, blacks, etc. Cause Specific-Mortality Deaths assigned to the specified disease during a calendar year X 100,000 Population at mid-year =deaths per 100,000 population per year Case Fatality Ratio Number of deaths due to the disease in a specific time period number of cases of the disease in the same time period X 100 Express as % Case Fatality Ratio This measure represents the probability of death among diagnosed cases, or the killing power of a disease. Proportionate Mortality Ratio Deaths assigned to the disease in a certain year Total deaths in the population in the same year Express as % X 100 Proportionate Mortality Ratio Used to describe the proportion of the overall mortality that is ascribed to a specific cause. Morbidity Rates Attack Rate Incidence Prevalence Years of Potential Life Lost (YPLL) Attack Rate An incidence rate used to describe the occurrence of food borne illnesses, infectious diseases, and other acute, short time period diseases. ill ill + well X 100 (%) Attack Rate (example) ill = 10 not ill = 3 Total = 13 10 13 X 100 = 76% Incidence and Prevalence The two main measures of disease frequency (morbidity). Incidence = NEW cases of a certain disease Prevalence = ALL cases of a certain disease Incidence and Prevalence Incidence Recover Death Prevalence Pot Incidence Incidence rates are designed to measure the rate at which people without a disease develop the disease during a specific period of time. Number of new cases of a disease over a period of time Incidence = rate population at risk of the disease in the time period Incidence Example Gonorrhea in Arkansas 1987 8898 new cases 2,342,699 = 381/100,000 1996 5027 new cases 2,509,793 = 200/100,000 Prevalence Prevalence rates measure the number of people in a population who have the disease at a given point of time. Total number of cases of a Prevalence rate = disease at a given time Total population at a given time Prevalence Types Annual (yearly) Lifetime (overall prevalence) Period (specific period of time) Point (right now!) Years of Potential Life Lost Indicates how diseases compare in reducing life expectancy. Calculated for ages up to 65. Example: A person killed at the age of 25 has lost 40 years of potential life. (2565=40) Years of Potential Life Lost Application: – In 1988, an estimated 1,198,887 years of potential life lost (YPLL) before age 65 were attributed to smoking. – Source: CDC. Smoking-attributable mortality and years of potential life lost -United States, 1988. MMWR 1991;40:623,69-71. AIDS in Arkansas County Benton Carroll Pulaski Wash Pop’n 105,588 19,505 353,394 142,737 AIDS 8 9/95-6/96 0 60 17 AIDS Total 23 687 161 68 Rate Adjustment (Standardized Rates) Adjustment for differences in population Composition (age, gender, ethnicity, etc.) -Direct Adjustment -Indirect Adjustment Direct Method of Adjustment Application of population composition specific rates to determine the expected number of events in a standard population. Uses Standard Populations Indirect Method of Adjustment Standard rates applied to populations being compared in order to calculate the expected number of events, and the compared with the observed number of events. Uses Standard Rates Standardized Mortality/Morbidity Ratio (SMR) A rate used for comparing the standardized mortality rates. Observed Deaths Expected Deaths Unit Three Descriptive Epidemiology Descriptive and Analytic Epidemiology Descriptive Epidemiology- amount and distribution of disease within a population by person, place, and time Analytic Epidemiology-more focused study on the determinants of disease or reason for relatively high or low frequency in specific groups. Ask these questions: Who (Person) – D What (Type of Disease, illness, disability)-D When (Time) –D Where (Place) – D How (Etiology or cause of event) – A D= Descriptive A= Analytic Case Definition Standard criteria used to assess whether a person has a particular disease or health condition. Ensures that every case is diagnosed using the same criteria. Comparisons with time, place, and populations can be conducted. Foodborne Illness Outbreak Case Definition An incident in which two or more persons experience a similar illness after ingestion of a common food, and epidemiologic analysis implicates the food as the source of the illness Descriptive Person 3 main characteristics: – Age – Gender – Ethnic Age Age- is the most important determinant among the person variables. Mortality and morbidity rates of conditions show some relation to age. Infectious disease-younger Chronic disease- older Gender Mortality- higher among males Morbidity- higher among females Gender Mortality- linked with inheritance, hormonal balance, environment, or habit pattern Morbidity- women have higher rates of illness and more physician contacts than men. Possible reasons: 1)Women seek medical care more freely and perhaps at an earlier stage of disease and, 2) The same disease will tend to have a less lethal dose in women than in men Ethnic Group Classifying people by ethnic group is difficult but important in field of epidemiology. Why: 1.) Many diseases differ in frequency, severity, or both in different racial groups, and, 2.) Statistics by race are helpful for identifying health problems. Other Person Variables Social Class Occupation Marital Status Family Variables Family Size Birth Order Personality traits Maternal Age Parental Deprivation Blood Type Environmental Exposure Place considerations Frequency of disease can be related to place of occurrence by: Natural Boundaries (more useful) (such as river, deserts, mountains) Political Subdivisions (more convenient) Place considerations Mapping environmental factors Urban-Rural differences International comparisons Time considerations 3 major time measurements: Secular trends (long-term variations) Cyclic (recurrent alterations in the frequency of disease) Short-term fluctuations Unit Four Analytic Study Designs Criteria to Evaluate Study 1.) Study size—was it large enough 2.) How were subjects selected? 3.) Bias prone? 4.) Confounding prone? 5.) Adequate analysis? 6.) Were limitations discussed? Study Design Definitions Confounding- illusory associated between two variables. Association caused by 3rd factor, “confounder” Example: link between coffee and colon cancer may actually be caused by smoking. Study Design Definitions Bias- Subjects chosen for study are unrepresentive of the population. Types of bias include: (over 57 types) – Healthy Worker bias – Information – Volunteer – Recall – Researcher Control for Confounding Prevention Randomization Matching Restriction Analysis Stratification Multivariate techniques Reducing Bias Case Definition High Participation Rates Ensure Representation Use Standardized Forms Training of Research Personnel Blind Participants and Researchers Study Design Definitions Chance- making assumptions and inferences of the measure of disease frequency concerning the experience of a population based on an evaluation of only a sample. Because of chance variation, for any two sample in a population to be identical is highly unlikely. Chance-example via checkerboard Eliminate Chance Findings P-value Confidence Intervals Reduce Errors Causation is not measured by the P-value P-value only reflects that results are a consequence of chance (random error). Not: – Result of bias- (systematic error) – Attributable to confounding – Study is reflecting causal relationship – Study design is correct Types of Study Designs Case Report or Case Series Descriptive (Population-based) Analytic (Individual-based) Follow-Up (Cohort) Case-Control Follow-Up Studies (Cohort) Retrospective Prospective Retrospective Investigates the association between a disease and past exposure to a risk factor among a cohort. Retrospective PAST PRESENT Look for past exposure in population Select cohort Retrospective Strengths 1.) Less expensive 2.) Faster to do study Limitations 1.) Impossible to control for confounding factors 2.) Bias prone Prospective Study starts with a group (cohort) of people who are free of disease, but who vary according to exposure to probable disease factor. Prospective Present Select cohort and Classify as to Exposure to factor Future Follow-up to see frequency with which disease develops Prospective Strengths 1.) Temporal sequence is clear 2.) Bias and confounding are relatively easy to control 3.) Absolute measure of occurrence are available (incidence, mortality, etc.) 4.) Provides information on many factors Prospective Limitations 1.) Very expensive and time consuming 2.) May not provide significant findings until after 5-10 years 3.) Inappropriate for rare diseases 4.) Problems with following up on subjects 5.) Extremely inefficient Case Control Study People diagnosed as having a disease (cases) are compared with persons who do not have the disease (controls) with relation to various risk factors. Case Control Study PAST Look for past exposure to factor in cases and controls PRESENT Select individuals with the disease(cases) Select individuals without the disease (controls) Case-Control Study Dominate form of epidemiologic study (>80%) Difficult but rewarding design to use Case-control studies have been used in other areas besides causationpreventive services and health services research Case-Control Study Strengths 1) Appropriate for rare diseases 2) Appropriate for disease with long induction time. 3) Economical and done rapidly 4) Allow evaluation of multiple hypotheses 5) Extremely efficient 6) Large amount of information on small amount of subjects Case-Control Study Limitations 1) People don’t understand it (abused) 2) Study is poor when exposure of interests is rare 3) Only relative measures are available 4) Bias prone Case-Control Study Design questions 1) Where to get cases? • • Population based (expensive) Selected Population Where to get controls? 2) • • General population (ideal but unrealistic) Hospital controls Measure of Risk Absolute Risk Relative Risk Attributable Risk Caution with Risks 1.) All those exposed to the disease factor will not develop the disease or illness but just have a probability of doing so. 2.) Some people not exposed to disease factor will develop the disease. Absolute Risk Synonymous with incidence and means the rate of occurrence of the disease. Relative Risk and Attributable Risk Epidemiologic measures of the association between exposure to a particular factor and risk of a certain outcome. Relative Ratio (Odds Ratio) Incidence rate among exposed Incidence rate among non-exposed Attributable Risk I (exposed) – I (non-exposed) Case-Control Analysis Disease Status CA-Yes CO-No Yes a b M1 No c d M0 N1 N0 Exposure Status Exposure Rates a Case exposure = N1 Control exposure = b N0 Odds Ratio (RR) Odds Ratio = (a x d) (b X c) Among people who (risk factor), the incidence of (disease) is (OR) greater or lower than those who don’t (risk factor). Attributable Incident Rate AIE %= (OR-1)/OR Among people who (risk factor), % of (disease) is attributable to (risk factor). AIT %=(AIE %) (CAE) If nobody (risk factor), I of (disease) would go down by % in the population. Confidence Intervals Confidence intervals are calculations of the best estimate of the OR. Researchers are stating that they are (%) confident that their true range is between the lower and upper limits of the confidence interval. Unit Five Screening and Surveillance Screening Purpose To identify people who have an enhanced probability of receiving a disease and have no signs or symptoms of disease. A screening test is not intended to be diagnostic. Screening Characteristics of a good screening program: Targeted at appropriate disease Uses a good test Has good compliance from targeted population Follow-up on those tested positive. Assist them in accessing medical care services Screening Problems with screening 1) Creates anxiety in people 2) False sense of reassurance 3) Produces morbidity through test itself (screening devices and equipment) 4) Excess morbidity No Screening Age B Exposure period Cells exfoliate 20 40 Symptoms diagnosis 50 55 60 Death Cancer begins Screening Age B Exposure period Cells exfoliate 20 40 Symptoms diagnosis 50 55 60 Death Cancer begins Screening Detection Screening Current Situation Care for Chronic Disease Self-Referral Diagnosis Surveillance Recovery Screening Projection for the Future Care for Chronic Disease Self-Referral Diagnosis Surveillance Recovery Three Phases of Disease Pre-Clinical Phase (PCP)- begins when cancer begins. Pre-clinical Phase ends at symptom diagnosis Detectable Pre-Clinical Phase (DPCP) begins at first possible detection of cancer. Detectable Pre-Clinical Phase ends when symptoms appear Clinical Phase Age 30 55 45 55 Screening Characteristics of disease that makes it suitable for screening: 1) Serious disease 2) Early therapy better than late therapy 3) The detectable pre-clinical phase is high 4) There is treatment available for disease Screening Analysis Test Results Positive Negative True Diagnosis Diseased Not Diseased a b c d a+c b+d a+b c+d a+b+c+d Measures of a Screening Test True Positive Rate, Sensitivity – a/(a+c) Capacity of a test to give a positive finding when the person tested truly has the disease. True Negative Rate, Specificity- d/(b+d) Capacity of a test to give a negative finding when the person tested is truly free of disease. Measures of Screening Test False Negative Rate- c/(a+c) Percent measure of a test to give a negative finding when the person tested truly has the disease. False Positive Rate-b/(b+d) Percent measure of a test to give a positive finding when the person tested does not have the disease. Screening Example Test Results Positive Negative True Diagnosis Diseased Not Diseased 40 100 10 1,000 50 1,100 140 1,010 1,150 Screening Example Sensitivity (a/a+c) = 80% False Negative Rate (c/a+c) = 20% Specificity (d/b+d) = 91% False Positive Rate (b/b+d) = 9% Evaluating Screening Program Three primary methods 1.) Process measures Number of people screened Number of times people were screened Total cost of program Cost per case detected Evaluating a Screening Program 2.) Special process measure Predicted Value Positive (PVP) is useful in measuring the proportion of positive tests that are truly positive. PVP= a/ (a+b) PVP= 40/ 140 = 29% A high PV signifies a satisfactory test, but alone it does not provide any information on the tests validity Evaluating a Screening Program 2.) Special process measure Predicted Value Negative (PVN) is useful in measuring the proportion of negative tests that are truly negative. PVP = d/ (c+d) PVP= 1000/1010 = 99% A high PV signifies a satisfactory test, but alone it does not provide any information on the tests validity. Evaluating a Screening Program 3.) Outcome measures • Mortality of screened disease • Case Fatality Rate of screened disease Problems with Screening Evaluation Lead Time Bias- belief that screening program has given more years of life to individual who was positively screened for disease. Length Time Bias- belief that screen detected cases have a better prognosis than symptoms-detected cases. Patient Self-Selection Bias Epidemiologic Surveillance Definition The ongoing process and systematic collection, analysis and interpretation of health data in the process of describing and investigating the health status of a population. Characteristics of System 1. 2. 3. 4. 5. 6. Public health importance of the health event/problem Describe the surveillance system Usefulness of system Evaluate according to 7 attributes Resources used to operate system Conclusions and Recommendations Public Health Importance Number of cases Incidence Prevalence Case fatality Index of severity Preventability Hospital and medical costs Describe System Objectives of surveillance system Describe the health events (case definition of each health event) Flow chart of the system Components and operation of system • • • • • • • Population Time of data collection Information collected Who provides data How is information stored, transferred How is data analyzed, how often How are reports distributed and to whom Usefulness of System A surveillance system is useful if it contributes to the prevention and control of a health problem. It may also indicate other health events or problems as being serious. Evaluation Evaluate system based on following attributes: Simplicity- How simple is the surveillance system to use Flexibility- is surveillance system flexible to adapt to changing information needs and operating conditions Acceptability- are health care and public health agencies willing to participate in the surveillance system Sensitivity- how efficient is system in detecting cases of disease or adverse health conditions. Evaluation Predictive value positive (PVP)-the proportion of persons identified as having cases who actually have the disease. Representativeness-does surveillance system accurately describe. 1) The occurrence of a health problem 2) Its distribution in the population by place, time, and person Timeliness-the time of reporting cases within each step of the surveillance system. Resources to Operate System Personnel requirements Other resources Travel Supplies Equipment, etc. Conclusions and Recommendations One of the main purposes of a surveillance system is to provide feedback and information to prevent and control disease. After disease has been monitored, suggestions and recommendations are provided in order to facilitate the control of disease and prevent future outbreaks and occurrences of health events. Classification Systems Definition An orderly arrangement of data that serves a specific purpose. Should meet 3 criteria: 1) Classes used must be mutually exclusive 2) It should be exhaustive 3) It should have a reasonable number of classes and a reasonable frequency of cases in each class. Examples of Classification Systems International Classification of Disease E-codes National Ambulatory Medical Care Survey Utilization Behavior Diagnosis-Related Groups (DRG) International Classification of Diseases (ICD-9 codes) Primarily used to code mortality and morbidity cases to obtain statistical summaries and analysis. Many other classification systems base their surveillance mechanisms on this system. Most popular and used system. Classes = 17 (main sections) National Ambulatory Medical Care Survey Survey gives information concerning ambulatory patients’ visits to primary care physician (PCP). It also provides measure of the magnitude and nature of complaints by those who visit PCP. Classes = 13 (refers to anatomic site or system) National Ambulatory Medical Care Survey Example: Estimating the impact of a national health insurance plan on health care utilization that is based on pilot plans or studies. Classification by Utilization Behavior Classification system used to group diseases into classes most likely to result in similar medical care usage. Classes = 10 (disease and non-disease groups) Classification by Utilization Behavior Example Useful in linking medical care usage to health conditions. The types and amount of medical care services could be assessed. Can provide information on the value of various interventions or services. Diagnosis-Related Groups (DRGs) Classification system of hospitalized cases that is used for reimbursing hospitals prospectively on a cont-percase bases for the care of Medicare patients. Based on length of stay (LOS) and severity of illness. Classes = 23 major diagnostic categories Diagnosis-Related Groups (DRGs) Example: The Hospital Efficiency and Effectiveness Analysis Identifies health care facilities, or areas within a facility, which have utilization habits and/or pricing policies inconsistent with the local market and those facilities which have superior or adverse outcomes as compared with the nations.