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Online Appendix for the following JACC article TITLE: Arterial Wave Reflections and Incident Cardiovascular Events and Heart Failure: The Multiethnic Study of Atherosclerosis AUTHORS: Julio A. Chirinos, MD,* Jan G. Kips, PHD,† David R. Jacobs Jr., PHD,‡ Lyndia Brumback, PHD,§ Daniel A. Duprez, MD, PHD,¶ Richard Kronmal, PHD,§ David A. Bluemke, MD,# Raymond R. Townsend, MD,* Sebastian Vermeersch, PHD,† Patrick Segers, PHD† APPENDIX Supplemental Methods Pulse wave quality control All pressure waveforms were visually inspected by an investigator (JAC) for quality and physiologic consistency. We excluded averaged waveforms that met any of the following criteria: (1) A non-physiologic appearance (usually from bigeminy, trigeminy, or contamination of the signal average by aberrantly recorded complexes); (2) Cardiac cycle duration variation ≥10%; (3) Pulse height (beat-to-beat pulse pressure) variation ≥20%; (4) Less than 10 adequately recorded cycles available for signal averaging. Central pulse wave separation analysis We used a physiologic flow waveform previously obtained from averaging empiric measurements among men and women without cardiovascular disease as previously described (1). Using the central pressure and the physiologic flow waveforms, linear wave separation analysis was performed as first described by Westerhof et al (2). First, characteristic impedance, Zc, which describes the relationship between pulsatile pressure and flow in the proximal aorta in the absence of wave reflections, was calculated by averaging the modulus of the 3rd to 10th harmonics of input impedance (i.e., pressure moduli divided by corresponding flow moduli). Pressure and flow waveforms were then used for wave separation as follows: Pf = (P + Zc*Q)/2 Pb = (P – Zc*Q)/2 Where P and Q denote harmonics derived from the measured pressure and flow waveform, using Fourier decomposition. To obtain the total forward and backward wave, forward and backward harmonics were summated. As described by Westerhof et al. (3), waveform calibration is not necessary for wave separation. Given that Zc is expressed as P/Q, the product Zc*Q is independent of flow amplitude (because the flow units in the numerator and denominator cancel out). Once Pf and Pb were computed, reflection magnitude was calculated as the ratio of their amplitudes expressed as a percentage (100 * Pb amplitude/Pf amplitude). Statistical Methods Our statistical analyses were aimed at: (1) Assessing the independent association between central pressure indices and incident cardiovascular events/heart failure; (2) Assessing the increase in predictive performance achieved by adding central pressure indices to models containing established risk factors; (3) Comparing the strength/performance of central pressure indices to established risk factors (particularly brachial pressures) as predictors of incident cardiovascular events/heart failure in multivariate analyses; (4) Assessing the population-attributable risk of incident events/heart failure associated with central pressure indices and comparing it to that of hypertension (the only currently well-established risk factor defined on the basis of arterial pressure measurements). Cumulative probability curves for the endpoints of interest were constructed by using the Kaplan-Meier method, stratifying participants according to tertiles of the central pressure variable of interest. The relations of central pressure variables to incident events were further investigated with the use of Cox proportional-hazards regression in two sets of models: crude models and models adjusted for established risk factors for cardiovascular disease and other potential confounders. These included age, gender, systolic blood pressure, diastolic blood pressure, antihypertensive medication use, body height and weight, diabetes mellitus, total cholesterol, HDL-cholesterol, current smoking, heart rate and glomerular filtration rate (estimated by the Modification of Diet in Renal Disease formula [4]). The performance of various Cox models was assessed for statistical aims (2) and (3) mentioned above. We used several indices of model performance, which in turn express several aspects of fit and predictive ability. Overall model fit was compared with the Akaike information criterion (AIC) and the Bayesian information criterion (BIC) (5,6), both of which are functions of the log likelihood with an added penalty for the number of parameters. Lower values of the AIC and BIC indicate better fit. The discriminative ability of the models was assessed with the Harrel's c-index, which is analogous to the area under the receiver operator characteristic curve, applied to survival data (5,7,8). Improvements in subject risk reclassification was further assessed using the net reclassification improvement (NRI), as described by Pencina et al (8) and applied to censored (survival) data (5,8). The NRI quantifies the amount of correct reclassification achieved by using a new model compared to the classification achieved by using a “base” model. The NRI depends on the difference between new and the base model in the individual estimated probability that a subject will be classified as an event, given that the individual is observed to be an event, minus the corresponding model difference estimated probability of classification as an event, given that the individual is observed to be a nonevent. An increased probability that observed events will be correctly classified as events and an increased probability that observed nonevents will be correctly classified as nonevents imply better prediction ability, whereas the opposite implies worse prediction ability. The NRI is computed as the net proportion of events reclassified correctly plus the net proportion of nonevents reclassified correctly. We computed 2 versions of the NRI: a category-based NRI and a category-free NRI. The category-based NRI was based on usual categories for 10-year coronary heart disease risk (adapted at 5 years as <2.5%, 2.5-<5%, 5-<10% and ≥10%). Since no established categories exist that guide clinical decisions for CHF risk, we primarily used category-free reclassification measures for this endpoint, which are independent of arbitrarily defined risk thresholds (9). The category-free NRI is computed as the net proportion of events in whom the new model correctly predicts a higher probability of the event (compared to the estimated probability of the base model) plus the net proportion of non-events in whom the new model correctly predicts a lower probability of the event (compared to the estimated probability of the base model). Although the category-free NRI measures reclassification of case and control subjects to a higher or lower predicted probability, it does not account for the magnitude of the difference of predicted probabilities between cases and controls in the base and the new model. The difference of predicted probabilities between cases and controls is called the discrimination slope. The integrated discrimination improvement (IDI), expresses the absolute improvement in mean discrimination slope, or the improvement in the probability of discrimination (calling an observed event an event and observed nonevent a nonevent) between the base model and new model (5,8–10). Because the IDI, as an absolute difference in probabilities, is highly sensitive to event rates (which in our cohort are relatively low, particularly for the heart failure endpoint), its absolute magnitude is difficult to interpret quantitatively. Therefore, it is useful to express IDI as the relative IDI (10). The relative IDI expresses the relative increase in separation of events and non-events from the separation achieved in the base model (i.e., the difference in discrimination slopes is expressed as a proportion of the discrimination slope of the base model). For example, if the addition of a new variable to a base model results in a relative IDI of 0.10, this indicates that the addition of the new variable results in a 10% improvement in separation of events and non-events relative to the separation that had been achieved by the joint effect of all variables included in the base model. Confidence intervals for IDI and relative IDI were computed with the bootstrap method. Larger positive IDI and relative IDI values indicate larger improvements in model discrimination. We acknowledge that indices of model performance are under intense development. Each index describes different aspects of model performance and at the present time none can be stated to be a better or worse descriptor. To assess model calibration, we used the Hosmer-Lemeshow test, which compares observed and predicted risk according to deciles of predicted risk for various models. Analyses were performed using SPSS for Windows v17 (SPSS Inc., Chicago, IL). All statistical tests were 2-tailed and alpha was set at 0.05. Adjustment for body size To adjust for body size and obesity in initial analyses, body height and weight (rather than body mass index), were used as separate terms, due to the known important relationship between AIx/pulse pressure amplification and body height (requiring specific adjustment for body height in the models). Although reflection magnitude is not importantly related to body height, it was handled in an identical fashion in initial analyses to allow for direct comparisons with models containing other central pressure indices. However, in additional models focused on reflection magnitude, body mass index was used instead of body weight and height. Although this did not appreciably change the hazard ratio or improvements in model performance associated with reflection magnitude, it did allow for an intuitive assessment of the contribution of obesity (expressed in units of body mass index of kg/m2) to event risk in the Cox models. Adjudication of events During follow-up, in addition to three on-site MESA examinations, a telephone interviewer contacted each participant every 9 to 12 months to inquire about all interim hospital admissions, cardiovascular outpatient diagnoses, and deaths. In order to verify self-reported diagnoses, copies were requested of all death certificates and medical records for all hospitalizations and outpatient cardiovascular diagnoses. Trained personnel abstracted any medical records suggesting possible cardiovascular events. Two physicians from the MESA events committee independently reviewed all medical records for blinded endpoint classification and assignment of incidence dates using pre-specified criteria. If the reviewing physicians disagreed on the event classification, they adjudicated differences. If disagreements persisted, the full events committee made the final classification. The endpoint of congestive heart failure (CHF), required "definitive" criteria, including clinical symptoms (e.g., shortness of breath) or signs (e.g., edema), a physician diagnosis of CHF and medical treatment for CHF in addition to: (a) pulmonary edema/congestion by chest X-ray and/or (b) dilated ventricle or poor LV function by echocardiography or ventriculography, or evidence of left ventricular diastolic dysfunction. Our composite endpoint of incident “hard cardiovascular events” was met when any of the following occurred: myocardial infarction, coronary heart disease death, resuscitated cardiac arrest, stroke, or stroke death. The endpoint of "all cardiovascular events," was defined as any hard cardiovascular event, angina, other atherosclerotic death, or other cardiovascular disease death. Therefore, hard cardiovascular events and all cardiovascular events are related composite endpoints (all hard cardiovascular events are included in the “all cardiovascular event” endpoint), whereas the definition of the heart failure endpoint is independent of the other two endpoints. Myocardial infarction was defined based on combinations of symptoms (e.g., chest pain), ECG abnormalities, and cardiac biomarker levels. Coronary heart disease (CHD) death was classified as present or absent based on hospital records and interviews with families. CHD death required a myocardial infarction within 28 days of death, chest pain within the 72 hours before death, or a history of CHD and the absence of a known non-atherosclerotic or non-cardiac cause of death. Stroke required documented focal neurologic deficit lasting 24 hours or until death, or if <24 hours, there was a clinically relevant lesion on brain imaging. Patients with focal neurologic deficits secondary to brain trauma, tumor, infection, or other nonvascular cause were excluded. Adjudicators classified angina based on their clinical judgment and documentation of chest pain or anginal equivalents and objective evidence of reversible myocardial ischemia or obstructive coronary artery disease (e.g., ≥70% coronary artery obstruction or positive stress test). Supplemental results Reclassification improvement for heart failure risk achieved with reflection magnitude The table below shows a detailed categorical reclassification table for 5-year heart failure risk. These were adapted from the usual 10-year risk categories for cardiovascular risk as <2.5%, 2.5 to <5%, 5 to <10% and ≥10% at 5 years, respectively. The proportions of events and non-events in each reclassification cell were computed using the 5-year Kaplan-Meier estimates within each cell as described by Pencina et al. (9). The net reclassification improvement achieved by adding reflection magnitude to a base model containing age, ethnicity, gender, body mass index, diabetes mellitus, systolic blood pressure, diastolic blood pressure, antihypertensive medication use, total cholesterol, HDL-cholesterol, current smoking, heart rate and estimated glomerular filtration rate was 0.17 (P=0.005). Estimates computed with observed events within 5 years (rather than Kaplan-Meier estimates in each cell) yielded very similar results. Category-free indices were also computed. The category-free NRI was 0.38 (P<0.0001), the integrated discrimination improvement was 0.018 (P<0.0001) and the relative integrated discrimination improvement was 0.48 (P<0.0001). This relative IDI indicates that a 48% relative increase in the discrimination slope achieved by the joint effect of all variables in the base model was achieved by addition of reflection magnitude to the model. Supplemental Table. Probability predicted by new model (all variables in base model + reflection magnitude) Probability Number predicted by base model Number (proportion) (proportion) 2.5 to 5 to <5% <10% ≥10% <2.5% Total reclassified reclassified at lower at higher risk risk <2.5 % Total n Events, n Nonevents, n 3787 308 14 0 4109 14 1 0 0 15 0 (0) 1 (0.07) 3773 307 14 0 4094 0 (0) 321 (0.08) 0.38% 0.32% 0% 0% 0.37% 232 607 248 12 1099 4 18 11 0 33 4 (0.12) 11 (0.33) 228 589 237 12 1066 228 (0.21) 249 (0.23) 1.78% 2.96% 4.33% 0% 2.98% 12 118 312 108 550 Kaplan-Meier 5 yr estimate, % 2.5 to <5% Total n Events, n Nonevents, n Kaplan-Meier 5 yr estimate, % 5 to <10% Total n Events, n 0 0 13 10 22 0 (0) 10 (0.45) Nonevents, n 12 118 299 98 528 130 (0.25) 98 (0.19) 0% 0% 4.19% 8.81% 4.09% Total n 0 3 37 136 176 Events, n 0 0 0 15 14 0 (0) 0 (0) Nonevents, n 0 3 37 121 162 40 (0.25) 0 (0) 0% 0% 0% 10.68% 8.22% 4031 1036 611 256 5934 18 19 24 24 83 4 (0.05) 22 (0.27) 4013 1017 587 232 5851 398 (0.07) 668 (0.11) 0.46% 1.82% 3.91% 9.34% 1.40% Kaplan-Meier 5 yr estimate, % ≥10% Kaplan-Meier 5 yr estimate, % Total Events, n Nonevents, n Kaplan-Meier 5 yr estimate, % References 1. 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