Comparison of risks of cardiovascular events in the elderly using standard survival analysis and multiple-events and recurrent-events methods.

Pubmed ID: 25887387

Pubmed Central ID: PMC4364095

Journal: BMC medical research methodology

Publication Date: March 8, 2015

Affiliation: Department of Epidemiology and Prevention, Wake Forest School of Medicine, Winston-Salem, USA. abertoni@wakehealth.edu.

MeSH Terms: Humans, Aged, Cardiovascular Diseases, Risk Factors, United States, Algorithms, Survival Analysis, Risk Assessment, Proportional Hazards Models, Multivariate Analysis, Models, Statistical, Prospective Studies, Recurrence

Grants: 1U01HL101066-01, R01AG031827A, U01 HL101066, R01 AG031827

Authors: Bertoni AG, Ip EH, Efendi A, Molenberghs G

Cite As: Ip EH, Efendi A, Molenberghs G, Bertoni AG. Comparison of risks of cardiovascular events in the elderly using standard survival analysis and multiple-events and recurrent-events methods. BMC Med Res Methodol 2015 Mar 8;15:15.

Studies:

Abstract

BACKGROUND: Epidemiological studies about cardiovascular diseases often rely on methods based on time-to-first-event for data analysis. Without taking into account multiple event-types and the recurrency of a specific cardiovascular event, this approach may underestimate the overall cardiovascular burden of some risk factors, if that is the goal of the study. METHODS: In this study we compare four different statistical approaches, all based on the Weibull distribution family of survival model, in analyzing cardiovascular risk factors. We use data from the Cardiovascular Health Study as illustration. The four models respectively are time-to-first-event only, recurrent-events only, multiple-event-types only, and joint recurrent and multiple-event-type models. RESULTS: Although the four models produce consistent results regarding the significance of the risk factors, the magnitude of the hazard ratios and their confidence intervals are different. The joint model produces hazard ratios that are substantially higher than the time-to-first-event model especially for the risk factors of smoking and diabetes. CONCLUSION: Our findings suggest that for people with diabetes and are currently smoking, the overall cardiovascular burden of these risk factors would be substantially higher than that estimated using time-to-first-event method.