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      Predicting the restricted mean event time with the subject's baseline covariates in survival analysis.

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          Abstract

          For designing, monitoring, and analyzing a longitudinal study with an event time as the outcome variable, the restricted mean event time (RMET) is an easily interpretable, clinically meaningful summary of the survival function in the presence of censoring. The RMET is the average of all potential event times measured up to a time point τ and can be estimated consistently by the area under the Kaplan-Meier curve over $[0, \tau ]$. In this paper, we study a class of regression models, which directly relates the RMET to its "baseline" covariates for predicting the future subjects' RMETs. Since the standard Cox and the accelerated failure time models can also be used for estimating such RMETs, we utilize a cross-validation procedure to select the "best" among all the working models considered in the model building and evaluation process. Lastly, we draw inferences for the predicted RMETs to assess the performance of the final selected model using an independent data set or a "hold-out" sample from the original data set. All the proposals are illustrated with the data from the an HIV clinical trial conducted by the AIDS Clinical Trials Group and the primary biliary cirrhosis study conducted by the Mayo Clinic.

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          Author and article information

          Journal
          Biostatistics
          Biostatistics (Oxford, England)
          Oxford University Press (OUP)
          1468-4357
          1465-4644
          Apr 2014
          : 15
          : 2
          Affiliations
          [1 ] Department of Health Research and Policy, Stanford University, Stanford, CA 94305, USA.
          Article
          kxt050
          10.1093/biostatistics/kxt050
          3944973
          24292992
          630655fd-2e7c-426d-aec1-f8eea2d7549e
          History

          Hold-out sample,Accelerated failure time model,Cox model,Cross-validation,Personalized medicine,Perturbation-resampling method

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