PROBABILISTIC LEARNING OF TREATMENT TREES IN CANCER.

IF 1.3 4区 数学 Q2 STATISTICS & PROBABILITY
Annals of Applied Statistics Pub Date : 2023-09-01 Epub Date: 2023-09-07 DOI:10.1214/22-aoas1696
Tsung-Hung Yao, Zhenke Wu, Karthik Bharath, Jinju Li, Veerabhadran Baladandayuthapani
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引用次数: 0

Abstract

Accurate identification of synergistic treatment combinations and their underlying biological mechanisms is critical across many disease domains, especially cancer. In translational oncology research, preclinical systems such as patient-derived xenografts (PDX) have emerged as a unique study design evaluating multiple treatments administered to samples from the same human tumor implanted into genetically identical mice. In this paper, we propose a novel Bayesian probabilistic tree-based framework for PDX data to investigate the hierarchical relationships between treatments by inferring treatment cluster trees, referred to as treatment trees (Rx-tree). The framework motivates a new metric of mechanistic similarity between two or more treatments accounting for inherent uncertainty in tree estimation; treatments with a high estimated similarity have potentially high mechanistic synergy. Building upon Dirichlet Diffusion Trees, we derive a closed-form marginal likelihood encoding the tree structure, which facilitates computationally efficient posterior inference via a new two-stage algorithm. Simulation studies demonstrate superior performance of the proposed method in recovering the tree structure and treatment similarities. Our analyses of a recently collated PDX dataset produce treatment similarity estimates that show a high degree of concordance with known biological mechanisms across treatments in five different cancers. More importantly, we uncover new and potentially effective combination therapies that confer synergistic regulation of specific downstream biological pathways for future clinical investigations. Our accompanying code, data, and shiny application for visualization of results are available at: https://github.com/bayesrx/RxTree.

癌症治疗树的概率学习。
准确识别协同治疗组合及其潜在的生物学机制对于许多疾病领域至关重要,尤其是癌症。在转化肿瘤学研究中,患者来源的异种移植物(PDX)等临床前系统已成为一种独特的研究设计,用于评估对植入基因相同小鼠的同一人类肿瘤样本进行的多种治疗。在本文中,我们提出了一种新的基于贝叶斯概率树的PDX数据框架,通过推断处理聚类树(称为处理树(Rx树))来研究处理之间的层次关系。该框架激发了两种或两种以上处理之间机制相似性的新度量,考虑到树估计中固有的不确定性;具有高估计相似性的处理具有潜在的高机制协同作用。在Dirichlet扩散树的基础上,我们推导了一种对树结构进行编码的闭式边缘似然,这有助于通过一种新的两阶段算法进行计算高效的后验推理。仿真研究表明,该方法在恢复树结构和处理相似性方面具有优越的性能。我们对最近整理的PDX数据集的分析产生了治疗相似性估计,显示出与五种不同癌症治疗的已知生物学机制高度一致。更重要的是,我们发现了新的、潜在有效的联合疗法,为未来的临床研究提供了对特定下游生物途径的协同调节。我们的附带代码、数据和用于结果可视化的闪亮应用程序可在以下位置获得:https://github.com/bayesrx/RxTree.
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Annals of Applied Statistics
Annals of Applied Statistics 社会科学-统计学与概率论
CiteScore
3.10
自引率
5.60%
发文量
131
审稿时长
6-12 weeks
期刊介绍: Statistical research spans an enormous range from direct subject-matter collaborations to pure mathematical theory. The Annals of Applied Statistics, the newest journal from the IMS, is aimed at papers in the applied half of this range. Published quarterly in both print and electronic form, our goal is to provide a timely and unified forum for all areas of applied statistics.
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