Literature DB >> 33311956

Multicategory Outcome Weighted Margin-based Learning for Estimating Individualized Treatment Rules.

Chong Zhang1, Jingxiang Chen1, Haoda Fu2, Xuanyao He2, Ying-Qi Zhao3, Yufeng Liu1.   

Abstract

Due to heterogeneity for many chronic diseases, precise personalized medicine, also known as precision medicine, has drawn increasing attentions in the scientific community. One main goal of precision medicine is to develop the most effective tailored therapy for each individual patient. To that end, one needs to incorporate individual characteristics to detect a proper individual treatment rule (ITR), by which suitable decisions on treatment assignments can be made to optimize patients' clinical outcome. For binary treatment settings, outcome weighted learning (OWL) and several of its variations have been proposed recently to estimate the ITR by optimizing the conditional expected outcome given patients' information. However, for multiple treatment scenarios, it remains unclear how to use OWL effectively. It can be shown that some direct extensions of OWL for multiple treatments, such as one-versus-one and one-versus-rest methods, can yield suboptimal performance. In this paper, we propose a new learning method, named Multicategory Outcome weighted Margin-based Learning (MOML), for estimating ITR with multiple treatments. Our proposed method is very general and covers OWL as a special case. We show Fisher consistency for the estimated ITR, and establish convergence rate properties. Variable selection using the sparse l 1 penalty is also considered. Analysis of simulated examples and a type 2 diabetes mellitus observational study are used to demonstrate competitive performance of the proposed method.

Entities:  

Keywords:  Angle-based Classifier; Large-margin; Multiple Treatments; Outcome Weighted Learning; Precision Medicine; Support Vector Machine

Year:  2020        PMID: 33311956      PMCID: PMC7731977          DOI: 10.5705/ss.202017.0527

Source DB:  PubMed          Journal:  Stat Sin        ISSN: 1017-0405            Impact factor:   1.261


  3 in total

1.  A parsimonious personalized dose-finding model via dimension reduction.

Authors:  Wenzhuo Zhou; Ruoqing Zhu; Donglin Zeng
Journal:  Biometrika       Date:  2020-10-20       Impact factor: 3.028

2.  Learning Optimal Distributionally Robust Individualized Treatment Rules.

Authors:  Weibin Mo; Zhengling Qi; Yufeng Liu
Journal:  J Am Stat Assoc       Date:  2020-09-15       Impact factor: 5.033

3.  Near-optimal Individualized Treatment Recommendations.

Authors:  Haomiao Meng; Ying-Qi Zhao; Haoda Fu; Xingye Qiao
Journal:  J Mach Learn Res       Date:  2020       Impact factor: 5.177

  3 in total

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