Multiple Time Scales and Longitudinal Measurements in Event History Analysis | |
Abstract |
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A
general time-to-event data analysis known as event history analysis
is considered. The focus is on the analysis of time-to-event data
using Cox’s regression model when the time to the event may be measured from different origins giving several observable time scales and when longitudinal measurements are involved. For the multiple time scales problem, procedures to choose a basic time scale in Cox’s regression model are proposed. The connections between piecewise constant hazards, time-dependent covariates and time-dependent strata in the dual time scales are discussed. For the longitudinal measurements problem, four methods known in the literature together with two proposed methods are compared. All quantitative comparisons are performed by means of simulations. Applications to the analysis of infant mortality, morbidity, and growth are provided. |
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Keywords and phrases: Cox regression, multiple events,
proportional hazards, random effects, survival analysis,
time-dependent covariates, time origin. |