Department of Neurology and Neurological Sciences, Stanford University, Stanford, CA 94304, United States.
Department of Statistics and Actuarial Science, University of Hong Kong, Hong Kong, 999077, China.
Biometrics. 2024 Jul 1;80(3). doi: 10.1093/biomtc/ujae091.
Prior distributions, which represent one's belief in the distributions of unknown parameters before observing the data, impact Bayesian inference in a critical and fundamental way. With the ability to incorporate external information from expert opinions or historical datasets, the priors, if specified appropriately, can improve the statistical efficiency of Bayesian inference. In survival analysis, based on the concept of unit information (UI) under parametric models, we propose the unit information Dirichlet process (UIDP) as a new class of nonparametric priors for the underlying distribution of time-to-event data. By deriving the Fisher information in terms of the differential of the cumulative hazard function, the UIDP prior is formulated to match its prior UI with the weighted average of UI in historical datasets and thus can utilize both parametric and nonparametric information provided by historical datasets. With a Markov chain Monte Carlo algorithm, simulations and real data analysis demonstrate that the UIDP prior can adaptively borrow historical information and improve statistical efficiency in survival analysis.
先验分布,代表在观察数据之前对未知参数分布的信念,以关键和基本的方式影响贝叶斯推断。通过能够从专家意见或历史数据集吸收外部信息,如果先验分布适当指定,则可以提高贝叶斯推断的统计效率。在生存分析中,基于参数模型下的单位信息量(UI)的概念,我们提出了单位信息量狄利克雷过程(UIDP)作为一种新的非参数先验分布类,用于时间事件数据的基础分布。通过在累积风险函数的微分方面推导出 Fisher 信息,将 UIDP 先验公式化,以使其先验 UI 与历史数据集中的 UI 的加权平均值匹配,从而可以利用历史数据集中提供的参数和非参数信息。通过马尔可夫链蒙特卡罗算法,模拟和真实数据分析表明,UIDP 先验可以自适应地借用历史信息并提高生存分析中的统计效率。