Informed Bayesian survival analysis

被引:8
|
作者
Bartos, Frantisek [1 ,2 ]
Aust, Frederik [1 ]
Haaf, Julia M. [1 ]
机构
[1] Univ Amsterdam, Dept Psychol, Amsterdam, Netherlands
[2] Czech Acad Sci, Inst Comp Sci, Prague, Czech Republic
基金
欧洲研究理事会;
关键词
Bayesian; Survival analysis; Model-averaging; Bayes factor; Historical data; HISTORICAL CONTROL DATA; CLINICAL-TRIALS; MEDICAL JOURNALS; MODEL SELECTION; R PACKAGE; DESIGN; STATISTICS; EXTRAPOLATION; DISTRIBUTIONS; PROBABILITY;
D O I
10.1186/s12874-022-01676-9
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background We provide an overview of Bayesian estimation, hypothesis testing, and model-averaging and illustrate how they benefit parametric survival analysis. We contrast the Bayesian framework to the currently dominant frequentist approach and highlight advantages, such as seamless incorporation of historical data, continuous monitoring of evidence, and incorporating uncertainty about the true data generating process. Methods We illustrate the application of the outlined Bayesian approaches on an example data set, retrospective re-analyzing a colon cancer trial. We assess the performance of Bayesian parametric survival analysis and maximum likelihood survival models with AIC/BIC model selection in fixed-n and sequential designs with a simulation study. Results In the retrospective re-analysis of the example data set, the Bayesian framework provided evidence for the absence of a positive treatment effect of adding Cetuximab to FOLFOX6 regimen on disease-free survival in patients with resected stage III colon cancer. Furthermore, the Bayesian sequential analysis would have terminated the trial 10.3 months earlier than the standard frequentist analysis. In a simulation study with sequential designs, the Bayesian framework on average reached a decision in almost half the time required by the frequentist counterparts, while maintaining the same power, and an appropriate false-positive rate. Under model misspecification, the Bayesian framework resulted in higher false-negative rate compared to the frequentist counterparts, which resulted in a higher proportion of undecided trials. In fixed-n designs, the Bayesian framework showed slightly higher power, slightly elevated error rates, and lower bias and RMSE when estimating treatment effects in small samples. We found no noticeable differences for survival predictions. We have made the analytic approach readily available to other researchers in the RoBSA R package. Conclusions The outlined Bayesian framework provides several benefits when applied to parametric survival analyses. It uses data more efficiently, is capable of considerably shortening the length of clinical trials, and provides a richer set of inferences.
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页数:22
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