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Author Notes:

Email: brent_johnson@urmc.rochester.edu

We gratefully acknowledge two anonymous referees and the associate editor whose comments enhanced the paper.

We are grateful to patients enrolled in the Southwest Oncology Group Study 9509 and Dr. John Crowley for permission to use the data.

Subjects:

Research Funding:

Dr. Johnson was supported in part by the University of Rochester Center for AIDS Research grant P30AI078498 (NIH/NIAID) and the University of Rochester School of Medicine and Dentistry Clinical & Translational Science Institute.

Drs. Long and Johnson were supported in part by a PCORI award (ME-1303-5840) and an NIH/NINDS grant (R21-NS091630) while Dr. Huang was supported in part by grants NIH HL113451 and AI050409.

The content is solely the responsibility of the authors and does not necessarily represent the official views of the PCORI or the NIH.

Keywords:

  • Science & Technology
  • Life Sciences & Biomedicine
  • Physical Sciences
  • Biology
  • Mathematical & Computational Biology
  • Statistics & Probability
  • Life Sciences & Biomedicine - Other Topics
  • Mathematics
  • Induced censoring
  • Marked point process
  • Regularization
  • Survival analysis
  • NONCONCAVE PENALIZED LIKELIHOOD
  • VARIABLE SELECTION
  • SURVIVAL-TIME
  • LINEAR-REGRESSION
  • ORACLE PROPERTIES
  • ADAPTIVE LASSO
  • RANK-TESTS
  • COST
  • ESTIMATOR

Model Selection and Inference for Censored Lifetime Medical Expenditures

Tools:

Journal Title:

Biometrics

Volume:

Volume 72, Number 3

Publisher:

, Pages 731-741

Type of Work:

Article | Post-print: After Peer Review

Abstract:

Identifying factors associated with increased medical cost is important for many micro- and macro-institutions, including the national economy and public health, insurers and the insured. However, assembling comprehensive national databases that include both the cost and individual-level predictors can prove challenging. Alternatively, one can use data from smaller studies with the understanding that conclusions drawn from such analyses may be limited to the participant population. At the same time, smaller clinical studies have limited follow-up and lifetime medical cost may not be fully observed for all study participants. In this context, we develop new model selection methods and inference procedures for secondary analyses of clinical trial data when lifetime medical cost is subject to induced censoring. Our model selection methods extend a theory of penalized estimating function to a calibration regression estimator tailored for this data type. Next, we develop a novel inference procedure for the unpenalized regression estimator using perturbation and resampling theory. Then, we extend this resampling plan to accommodate regularized coefficient estimation of censored lifetime medical cost and develop postselection inference procedures for the final model. Our methods are motivated by data from Southwest Oncology Group Protocol 9509, a clinical trial of patients with advanced nonsmall cell lung cancer, and our models of lifetime medical cost are specific to this population. But the methods presented in this article are built on rather general techniques and could be applied to larger databases as those data become available.

Copyright information:

© 2015, The International Biometric Society.

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