Volume 37, Issue 15
RESEARCH ARTICLE

A flexible and coherent test/estimation procedure based on restricted mean survival times for censored time‐to‐event data in randomized clinical trials

Miki Horiguchi

Division of Biostatistics, Kitasato University School of Pharmacy, Tokyo, 108‐8641 Japan

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Angel M. Cronin

Department of Medical Oncology, Dana‐Farber Cancer Institute, Boston, MA, 02215 USA

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Masahiro Takeuchi

Division of Biostatistics, Kitasato University School of Pharmacy, Tokyo, 108‐8641 Japan

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Hajime Uno

Corresponding Author

E-mail address: huno@jimmy.harvard.edu

Department of Medical Oncology, Dana‐Farber Cancer Institute, Boston, MA, 02215 USA

Department of Biostatistics and Computational Biology, Dana‐Farber Cancer Institute, Boston, MA, 02215 USA

Correspondence

Hajime Uno, Division of Population Sciences, Department of Medical Oncology, Dana‐Farber Cancer Institute/Harvard Medical School, Boston, MA 02215, USA.

Email: huno@jimmy.harvard.edu

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First published: 22 April 2018
Citations: 10

Abstract

In randomized clinical trials where time‐to‐event is the primary outcome, almost routinely, the logrank test is prespecified as the primary test and the hazard ratio is used to quantify treatment effect. If the ratio of 2 hazard functions is not constant, the logrank test is not optimal and the interpretation of hazard ratio is not obvious. When such a nonproportional hazards case is expected at the design stage, the conventional practice is to prespecify another member of weighted logrank tests, eg, Peto‐Prentice‐Wilcoxon test. Alternatively, one may specify a robust test as the primary test, which can capture various patterns of difference between 2 event time distributions. However, most of those tests do not have companion procedures to quantify the treatment difference, and investigators have fallen back on reporting treatment effect estimates not associated with the primary test. Such incoherence in the “test/estimation” procedure may potentially mislead clinicians/patients who have to balance risk‐benefit for treatment decision. To address this, we propose a flexible and coherent test/estimation procedure based on restricted mean survival time, where the truncation time τ is selected data dependently. The proposed procedure is composed of a prespecified test and an estimation of corresponding robust and interpretable quantitative treatment effect. The utility of the new procedure is demonstrated by numerical studies based on 2 randomized cancer clinical trials; the test is dramatically more powerful than the logrank, Wilcoxon tests, and the restricted mean survival time–based test with a fixed τ, for the patterns of difference seen in these cancer clinical trials.

Number of times cited according to CrossRef: 10

  • Dynamic RMST curves for survival analysis in clinical trials, BMC Medical Research Methodology, 10.1186/s12874-020-01098-5, 20, 1, (2020).
  • Clinical Versus Statistical Significance in Studies of Thoracic Malignancies, Journal of Thoracic Oncology, 10.1016/j.jtho.2020.06.007, (2020).
  • Restricted mean survival time for interval‐censored data, Statistics in Medicine, 10.1002/sim.8699, 39, 26, (3879-3895), (2020).
  • Designing clinical trials with (restricted) mean survival time endpoint: Practical considerations, Clinical Trials, 10.1177/1740774520905563, (174077452090556), (2020).
  • Empirical power comparison of statistical tests in contemporary phase III randomized controlled trials with time-to-event outcomes in oncology, Clinical Trials, 10.1177/1740774520940256, (174077452094025), (2020).
  • Reply to H. Uno et al and B. Huang et al, Journal of Clinical Oncology, 10.1200/JCO.20.00015, (JCO.20.00015), (2020).
  • Is the Log-Rank and Hazard Ratio Test/Estimation the Best Approach for Primary Analysis for All Trials?, Journal of Clinical Oncology, 10.1200/JCO.19.03097, (JCO.19.03097), (2020).
  • A permutation test based on the restricted mean survival time for comparison of net survival distributions in non-proportional excess hazard settings, Statistical Methods in Medical Research, 10.1177/0962280219870217, (096228021987021), (2019).
  • Non-parametric individual treatment effect estimation for survival data with random forests, Bioinformatics, 10.1093/bioinformatics/btz602, (2019).
  • Methods for Accommodating Nonproportional Hazards in Clinical Trials: Ready for the Primary Analysis?, Journal of Clinical Oncology, 10.1200/JCO.19.01681, (JCO.19.01681), (2019).

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