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Dynamic prediction of recurrent events data by landmarking with application to a follow-up study of patients after kidney transplant.

Authors :
Musoro JZ
Struijk GH
Geskus RB
Ten Berge I
Zwinderman AH
Source :
Statistical methods in medical research [Stat Methods Med Res] 2018 Mar; Vol. 27 (3), pp. 832-845. Date of Electronic Publication: 2016 May 02.
Publication Year :
2018

Abstract

This paper extends dynamic prediction by landmarking to recurrent event data. The motivating data comprised post-kidney transplantation records of repeated infections and repeated measurements of multiple markers. At each landmark time point t <subscript>s</subscript> , a Cox proportional hazards model with a frailty term was fitted using data of individuals who were at risk at landmark s. This model included the time-updated marker values at t <subscript>s</subscript> as time-fixed covariates. Based on a stacked data set that merged all landmark data sets, we considered supermodels that allow parameters to depend on the landmarks in a smooth fashion. We described and evaluated four ways to parameterize the supermodels for recurrent event data. With both the study data and simulated data sets, we compared supermodels that were fitted on stacked data sets that consisted of either overlapping or non-overlapping landmark periods. We observed that for recurrent event data, the supermodels may yield biased estimates when overlapping landmark periods are used for stacking. Using the best supermodel amongst the ones considered, we dynamically estimated the probability to remain infection free between t <subscript>s</subscript> and a prediction horizon t <subscript>hor</subscript> , conditional on the information available at t <subscript>s</subscript> .

Details

Language :
English
ISSN :
1477-0334
Volume :
27
Issue :
3
Database :
MEDLINE
Journal :
Statistical methods in medical research
Publication Type :
Academic Journal
Accession number :
27142981
Full Text :
https://doi.org/10.1177/0962280216643563