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基于效用的个体化最优剂量选择方法:机器学习方法的应用。

Utility based approach in individualized optimal dose selection using machine learning methods.

机构信息

Department of Biostatistics, University of Michigan, Ann Arbor, Michigan, USA.

Department of Radiation Oncology, University of Michigan, Ann Arbor, Michigan, USA.

出版信息

Stat Med. 2022 Jul 20;41(16):2957-2977. doi: 10.1002/sim.9396. Epub 2022 Mar 28.

Abstract

The goal in personalized medicine is to individualize treatment using patient characteristics and improve health outcomes. Selection of optimal dose must balance the effect of dose on both treatment efficacy and toxicity outcomes. We consider a setting with one binary efficacy and one binary toxicity outcome. The goal is to find the optimal dose for each patient using clinical features and biomarkers from available dataset. We propose to use flexible machine learning methods such as random forest and Gaussian process models to build models for efficacy and toxicity depending on dose and biomarkers. A copula is used to model the joint distribution of the two outcomes and the estimates are constrained to have non-decreasing dose-efficacy and dose-toxicity relationships. Numerical utilities are elicited from clinicians for each potential bivariate outcome. For each patient, the optimal dose is chosen to maximize the posterior mean of the utility function. We also propose alternative approaches to optimal dose selection by adding additional toxicity based constraints and an approach taking into account the uncertainty in the estimation of the utility function. The proposed methods are evaluated in a simulation study to compare expected utility outcomes under various estimated optimal dose rules. Gaussian process models tended to have better performance than random forest. Enforcing monotonicity during modeling provided small benefits. Whether and how, correlation between efficacy and toxicity, was modeled, had little effect on performance. The proposed methods are illustrated with a study of patients with liver cancer treated with stereotactic body radiation therapy.

摘要

个性化医学的目标是利用患者特征对治疗进行个体化,并改善健康结果。最佳剂量的选择必须平衡剂量对治疗效果和毒性结果的影响。我们考虑一种具有一个二分类疗效和一个二分类毒性结果的情况。目标是使用来自可用数据集的临床特征和生物标志物为每个患者找到最佳剂量。我们建议使用灵活的机器学习方法,如随机森林和高斯过程模型,根据剂量和生物标志物构建疗效和毒性模型。使用 Copula 来模拟两个结果的联合分布,并将估计值限制为具有非递减的剂量-疗效和剂量-毒性关系。临床医生为每个潜在的双变量结果都引出了数值效用。对于每个患者,选择最佳剂量以最大化效用函数的后验均值。我们还提出了通过添加额外的基于毒性的约束和考虑效用函数估计不确定性的方法来选择最佳剂量的替代方法。所提出的方法在模拟研究中进行了评估,以比较在各种估计的最佳剂量规则下的预期效用结果。高斯过程模型的性能往往优于随机森林。在建模过程中强制单调提供了很小的好处。是否以及如何对疗效和毒性之间的相关性进行建模,对性能影响很小。所提出的方法通过对接受立体定向体放射治疗的肝癌患者的研究进行了说明。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9303/9542983/3b9a1d1c7ba6/SIM-41-2957-g006.jpg

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