Literature DB >> 22850076

Testing the assumptions for the analysis of survival data arising from a prevalent cohort study with follow-up.

Vittorio Addona1, Juli Atherton, David B Wolfson.   

Abstract

In a prevalent cohort study with follow-up subjects identified as prevalent cases are followed until failure (defined suitably) or censoring. When the dates of the initiating events of these prevalent cases are ascertainable, each observed datum point consists of a backward recurrence time and a possibly censored forward recurrence time. Their sum is well known to be the left truncated lifetime. It is common to term these left truncated lifetimes "length biased" if the initiating event times of all the incident cases (including those not observed through the prevalent sampling scheme) follow a stationary Poisson process. Statistical inference is then said to be carried out under stationarity. Whether or not stationarity holds, a further assumption needed for estimation of the incident survivor function is the independence of the lifetimes and their accompanying truncation times. That is, it must be assumed that survival does not depend on the calendar date of the initiating event. We show how this assumption may be checked under stationarity, even though only the backward recurrence times and their associated (possibly censored) forward recurrence times are observed. We prove that independence of the lifetimes and truncation times is equivalent to equality in distribution of the backward and forward recurrence times, and exploit this equivalence as a means of testing the former hypothesis. A simulation study is conducted to investigate the power and Type 1 error rate of our proposed tests, which include a bootstrap procedure that takes into account the pairwise dependence between the forward and backward recurrence times, as well as the potential censoring of only one of the members of each pair. We illustrate our methods using data from the Canadian Study of Health and Aging. We also point out an equivalence of the problem presented here to a non-standard changepoint problem.

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Year:  2012        PMID: 22850076     DOI: 10.1515/1557-4679.1419

Source DB:  PubMed          Journal:  Int J Biostat        ISSN: 1557-4679            Impact factor:   0.968


  2 in total

1.  Parametric modelling of prevalent cohort data with uncertainty in the measurement of the initial onset date.

Authors:  J H McVittie; D B Wolfson; D A Stephens
Journal:  Lifetime Data Anal       Date:  2019-08-02       Impact factor: 1.588

2.  A risk set adjustment for proportional hazards modeling of combined cohort data.

Authors:  J H McVittie; V Addona
Journal:  J Appl Stat       Date:  2021-05-12       Impact factor: 1.416

  2 in total

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