posted on 2015-06-26, 14:58authored byMichael J. Crowther, Paul C. Lambert, Keith R. Abrams
Background: Methodological development of joint models of longitudinal and survival data has been rapid in
recent years; however, their full potential in applied settings are yet to be fully explored. We describe a novel use of a
specific association structure, linking the two component models through the subject specific intercept, and thus
extend joint models to account for measurement error in a biomarker, even when only the baseline value of the
biomarker is of interest. This is a common occurrence in registry data sources, where often repeated measurements
exist but are simply ignored.
Methods: The proposed specification is evaluated through simulation and applied to data from the General Practice
Research Database, investigating the association between baseline Systolic Blood Pressure (SBP) and the
time-to-stroke in a cohort of obese patients with type 2 diabetes mellitus.
Results: By directly modelling the longitudinal component we reduce bias in the hazard ratio for the effect of
baseline SBP on the time-to-stroke, showing the large potential to improve on previous prognostic models which use
only observed baseline biomarker values.
Conclusions: The joint modelling of longitudinal and survival data is a valid approach to account for measurement
error in the analysis of a repeatedly measured biomarker and a time-to-event. User friendly Stata software is provided.
Funding
MJC is funded by a National Institute for Health Research (NIHR) Doctoral
Fellowship (DRF-2012-05-409) and KRA is partially supported as a NIHR Senior
Investigator (NI-51-0508-10061).
The cohort of obese patients with type 2 diabetes mellitus was obtained from
the General Practice Research Database (GPRD) under Independent Scientific
Advisory Committee (ISAC)-approved Protocol 09_094, and which was funded
by a National Institute for Health Research (NHIR) Health Technology
Assessment (HTA) Programme Project Grant (07/85/02).
History
Citation
BMC Medical Research Methodology, 2013, 13:146
Author affiliation
/Organisation/COLLEGE OF MEDICINE, BIOLOGICAL SCIENCES AND PSYCHOLOGY/School of Medicine/Department of Health Sciences