Dynamic prediction of survival using multivariate functional principal component analysis: A strict landmarking approach

Author:

Gomon Daniel1ORCID,Putter Hein2ORCID,Fiocco Marta12,Signorelli Mirko1

Affiliation:

1. Mathematical Institute, Leiden University, Leiden, the Netherlands

2. Department of Biomedical Data Sciences, Leiden University Medical Centre, Leiden, the Netherlands

Abstract

Dynamically predicting patient survival probabilities using longitudinal measurements has become of great importance with routine data collection becoming more common. Many existing models utilize a multi-step landmarking approach for this problem, mostly due to its ease of use and versatility but unfortunately most fail to do so appropriately. In this article we make use of multivariate functional principal component analysis to summarize the available longitudinal information, and employ a Cox proportional hazards model for prediction. Additionally, we consider a centred functional principal component analysis procedure in an attempt to remove the natural variation incurred by the difference in age of the considered subjects. We formalize the difference between a ‘relaxed’ landmarking approach where only validation data is landmarked and a ‘strict’ landmarking approach where both the training and validation data are landmarked. We show that a relaxed landmarking approach fails to effectively use the information contained in the longitudinal outcomes, thereby producing substantially worse prediction accuracy than a strict landmarking approach.

Publisher

SAGE Publications

Subject

Health Information Management,Statistics and Probability,Epidemiology

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