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.
Related papers
- Learning Robust Treatment Rules for Censored Data [14.95510487866686]
We propose two criteria for estimating optimal treatment rules.
We show improved performance compared to existing methods.
We also demonstrate the proposed method using AIDS clinical data.
arXiv Detail & Related papers (2024-08-17T09:58:58Z) - Robust Learning for Optimal Dynamic Treatment Regimes with Observational Data [0.0]
We study the statistical learning of optimal dynamic treatment regimes (DTRs) that guide the optimal treatment assignment for each individual at each stage based on the individual's evolving history.
arXiv Detail & Related papers (2024-03-30T02:33:39Z) - Stage-Aware Learning for Dynamic Treatments [3.6923632650826486]
We propose a novel individualized learning method for dynamic treatment regimes.
By relaxing the restriction that the observed trajectory must be fully aligned with the optimal treatments, our approach substantially improves the sample efficiency and stability of IPWE-based methods.
arXiv Detail & Related papers (2023-10-30T06:35:31Z) - TCFimt: Temporal Counterfactual Forecasting from Individual Multiple
Treatment Perspective [50.675845725806724]
We propose a comprehensive framework of temporal counterfactual forecasting from an individual multiple treatment perspective (TCFimt)
TCFimt constructs adversarial tasks in a seq2seq framework to alleviate selection and time-varying bias and designs a contrastive learning-based block to decouple a mixed treatment effect into separated main treatment effects and causal interactions.
The proposed method shows satisfactory performance in predicting future outcomes with specific treatments and in choosing optimal treatment type and timing than state-of-the-art methods.
arXiv Detail & Related papers (2022-12-17T15:01:05Z) - Federated Offline Reinforcement Learning [55.326673977320574]
We propose a multi-site Markov decision process model that allows for both homogeneous and heterogeneous effects across sites.
We design the first federated policy optimization algorithm for offline RL with sample complexity.
We give a theoretical guarantee for the proposed algorithm, where the suboptimality for the learned policies is comparable to the rate as if data is not distributed.
arXiv Detail & Related papers (2022-06-11T18:03:26Z) - Policy Learning for Optimal Individualized Dose Intervals [3.9801611649762263]
We propose a new method to estimate such a policy.
We prove that our estimated policy is consistent, and its risk converges to that of the best-in-class policy at a root-nn rate.
arXiv Detail & Related papers (2022-02-24T17:59:20Z) - Improving Classification Model Performance on Chest X-Rays through Lung
Segmentation [63.45024974079371]
We propose a deep learning approach to enhance abnormal chest x-ray (CXR) identification performance through segmentations.
Our approach is designed in a cascaded manner and incorporates two modules: a deep neural network with criss-cross attention modules (XLSor) for localizing lung region in CXR images and a CXR classification model with a backbone of a self-supervised momentum contrast (MoCo) model pre-trained on large-scale CXR data sets.
arXiv Detail & Related papers (2022-02-22T15:24:06Z) - Estimating Optimal Infinite Horizon Dynamic Treatment Regimes via
pT-Learning [2.0625936401496237]
Recent advances in mobile health (mHealth) technology provide an effective way to monitor individuals' health statuses and deliver just-in-time personalized interventions.
The practical use of mHealth technology raises unique challenges to existing methodologies on learning an optimal dynamic treatment regime.
We propose a Proximal Temporal Learning framework to estimate an optimal regime adaptively adjusted between deterministic and sparse policy models.
arXiv Detail & Related papers (2021-10-20T18:38:22Z) - MIA-Prognosis: A Deep Learning Framework to Predict Therapy Response [58.0291320452122]
This paper aims at a unified deep learning approach to predict patient prognosis and therapy response.
We formalize the prognosis modeling as a multi-modal asynchronous time series classification task.
Our predictive model could further stratify low-risk and high-risk patients in terms of long-term survival.
arXiv Detail & Related papers (2020-10-08T15:30:17Z) - An Online Method for A Class of Distributionally Robust Optimization
with Non-Convex Objectives [54.29001037565384]
We propose a practical online method for solving a class of online distributionally robust optimization (DRO) problems.
Our studies demonstrate important applications in machine learning for improving the robustness of networks.
arXiv Detail & Related papers (2020-06-17T20:19:25Z) - DTR Bandit: Learning to Make Response-Adaptive Decisions With Low Regret [59.81290762273153]
Dynamic treatment regimes (DTRs) are personalized, adaptive, multi-stage treatment plans that adapt treatment decisions to an individual's initial features and to intermediate outcomes and features at each subsequent stage.
We propose a novel algorithm that, by carefully balancing exploration and exploitation, is guaranteed to achieve rate-optimal regret when the transition and reward models are linear.
arXiv Detail & Related papers (2020-05-06T13:03:42Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.