Multicategory Angle-based Learning for Estimating Optimal Dynamic
Treatment Regimes with Censored Data
- URL: http://arxiv.org/abs/2001.04629v1
- Date: Tue, 14 Jan 2020 05:19:15 GMT
- Title: Multicategory Angle-based Learning for Estimating Optimal Dynamic
Treatment Regimes with Censored Data
- Authors: Fei Xue, Yanqing Zhang, Wenzhuo Zhou, Haoda Fu, Annie Qu
- Abstract summary: An optimal treatment regime (DTR) consists of a sequence of decision rules in maximizing long-term benefits.
In this paper, we develop a novel angle-based approach to target the optimal DTR under a multicategory treatment framework.
Our numerical studies show that the proposed method outperforms competing methods in terms of maximizing the conditional survival function.
- Score: 12.499787110182632
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: An optimal dynamic treatment regime (DTR) consists of a sequence of decision
rules in maximizing long-term benefits, which is applicable for chronic
diseases such as HIV infection or cancer. In this paper, we develop a novel
angle-based approach to search the optimal DTR under a multicategory treatment
framework for survival data. The proposed method targets maximization the
conditional survival function of patients following a DTR. In contrast to most
existing approaches which are designed to maximize the expected survival time
under a binary treatment framework, the proposed method solves the
multicategory treatment problem given multiple stages for censored data.
Specifically, the proposed method obtains the optimal DTR via integrating
estimations of decision rules at multiple stages into a single multicategory
classification algorithm without imposing additional constraints, which is also
more computationally efficient and robust. In theory, we establish Fisher
consistency of the proposed method under regularity conditions. Our numerical
studies show that the proposed method outperforms competing methods in terms of
maximizing the conditional survival function. We apply the proposed method to
two real datasets: Framingham heart study data and acquired immunodeficiency
syndrome (AIDS) clinical data.
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