使用贝叶斯加性回归树对剔除结果进行动态治疗。

IF 1.2 3区 数学 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Lifetime Data Analysis Pub Date : 2024-01-01 Epub Date: 2023-09-02 DOI:10.1007/s10985-023-09605-8
Xiao Li, Brent R Logan, S M Ferdous Hossain, Erica E M Moodie
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引用次数: 0

摘要

为了实现为每一位患者提供最佳治疗的目标,医生需要为具有相同健康状况的患者量身定制治疗方案,尤其是在治疗癌症等可能进一步发展并需要额外治疗的疾病时。随着疾病的发展,在多个阶段做出决策可以被正式定义为动态治疗机制(DTR)。用于估计动态治疗方案的大多数现有优化方法,包括流行的 Q-learning 方法,都是在频数主义背景下开发的。最近,有人提出了一种通用的贝叶斯机器学习框架,有助于使用贝叶斯回归模型来优化 DTR。在本文中,我们在加速失效时间建模框架下,针对每个阶段使用贝叶斯加性回归树(BART),并通过模拟研究和真实数据示例,将所提出的方法与 Q-learning 方法进行比较,从而使该方法适用于有删减的结果。我们还开发了一个 R 封装函数,利用标准 BART 生存模型来优化删减结果的 DTR。该封装函数可轻松扩展,以适应任何类型的贝叶斯机器学习模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Dynamic Treatment Regimes Using Bayesian Additive Regression Trees for Censored Outcomes.

Dynamic Treatment Regimes Using Bayesian Additive Regression Trees for Censored Outcomes.

To achieve the goal of providing the best possible care to each individual under their care, physicians need to customize treatments for individuals with the same health state, especially when treating diseases that can progress further and require additional treatments, such as cancer. Making decisions at multiple stages as a disease progresses can be formalized as a dynamic treatment regime (DTR). Most of the existing optimization approaches for estimating dynamic treatment regimes including the popular method of Q-learning were developed in a frequentist context. Recently, a general Bayesian machine learning framework that facilitates using Bayesian regression modeling to optimize DTRs has been proposed. In this article, we adapt this approach to censored outcomes using Bayesian additive regression trees (BART) for each stage under the accelerated failure time modeling framework, along with simulation studies and a real data example that compare the proposed approach with Q-learning. We also develop an R wrapper function that utilizes a standard BART survival model to optimize DTRs for censored outcomes. The wrapper function can easily be extended to accommodate any type of Bayesian machine learning model.

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来源期刊
Lifetime Data Analysis
Lifetime Data Analysis 数学-数学跨学科应用
CiteScore
2.30
自引率
7.70%
发文量
43
审稿时长
3 months
期刊介绍: The objective of Lifetime Data Analysis is to advance and promote statistical science in the various applied fields that deal with lifetime data, including: Actuarial Science – Economics – Engineering Sciences – Environmental Sciences – Management Science – Medicine – Operations Research – Public Health – Social and Behavioral Sciences.
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