High dimensional precision medicine from patient-derived xenografts
Naim U. Rashid, Daniel J. Luckett, Jingxiang Chen, Michael T. Lawson,, Longshaokan Wang, Yunshu Zhang, Eric B. Laber, Yufeng Liu, Jen Jen Yeh,, Donglin Zeng, Michael R. Kosorok

TL;DR
This paper develops machine learning methods to estimate personalized treatment rules from patient-derived xenograft data, addressing high-dimensionality and correlated outcomes to improve precision medicine in cancer treatment.
Contribution
It introduces novel machine learning approaches tailored for PDX data, including superlearner ensemble methods, to enhance the estimation of optimal individualized treatment rules.
Findings
Superlearner approach improves ITR performance over individual methods.
PDX data effectively inform personalized oncology treatments.
Regression and direct search methods yield comparable results.
Abstract
The complexity of human cancer often results in significant heterogeneity in response to treatment. Precision medicine offers potential to improve patient outcomes by leveraging this heterogeneity. Individualized treatment rules (ITRs) formalize precision medicine as maps from the patient covariate space into the space of allowable treatments. The optimal ITR is that which maximizes the mean of a clinical outcome in a population of interest. Patient-derived xenograft (PDX) studies permit the evaluation of multiple treatments within a single tumor and thus are ideally suited for estimating optimal ITRs. PDX data are characterized by correlated outcomes, a high-dimensional feature space, and a large number of treatments. Existing methods for estimating optimal ITRs do not take advantage of the unique structure of PDX data or handle the associated challenges well. In this paper, we explore…
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Taxonomy
TopicsCancer Genomics and Diagnostics · Mathematical Biology Tumor Growth · Statistical Methods in Clinical Trials
MethodsQ-Learning
