Literature DB >> 28508545

Comparison of joint modeling and landmarking for dynamic prediction under an illness-death model.

Krithika Suresh1, Jeremy M G Taylor1, Daniel E Spratt2, Stephanie Daignault1, Alexander Tsodikov1.   

Abstract

Dynamic prediction incorporates time-dependent marker information accrued during follow-up to improve personalized survival prediction probabilities. At any follow-up, or "landmark", time, the residual time distribution for an individual, conditional on their updated marker values, can be used to produce a dynamic prediction. To satisfy a consistency condition that links dynamic predictions at different time points, the residual time distribution must follow from a prediction function that models the joint distribution of the marker process and time to failure, such as a joint model. To circumvent the assumptions and computational burden associated with a joint model, approximate methods for dynamic prediction have been proposed. One such method is landmarking, which fits a Cox model at a sequence of landmark times, and thus is not a comprehensive probability model of the marker process and the event time. Considering an illness-death model, we derive the residual time distribution and demonstrate that the structure of the Cox model baseline hazard and covariate effects under the landmarking approach do not have simple form. We suggest some extensions of the landmark Cox model that should provide a better approximation. We compare the performance of the landmark models with joint models using simulation studies and cognitive aging data from the PAQUID study. We examine the predicted probabilities produced under both methods using data from a prostate cancer study, where metastatic clinical failure is a time-dependent covariate for predicting death following radiation therapy.
© 2017 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim.

Entities:  

Keywords:  Dynamic prediction; Illness-death model; Joint modeling; Landmarking

Mesh:

Year:  2017        PMID: 28508545      PMCID: PMC5957493          DOI: 10.1002/bimj.201600235

Source DB:  PubMed          Journal:  Biom J        ISSN: 0323-3847            Impact factor:   2.207


  17 in total

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Authors:  Jeremy M G Taylor; Menggang Yu; Howard M Sandler
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Authors:  Hein Putter; Hans C van Houwelingen
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8.  Individualized dynamic prediction of survival with the presence of intermediate events.

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