亚组te:用亚组识别推进治疗效果评估。

IF 6.6 4区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Seungyeon Lee, Ruoqi Liu, Wenyu Song, Lang Li, Ping Zhang
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引用次数: 0

摘要

对治疗效果的准确估计是准确评估干预措施的关键。虽然深度学习模型在学习治疗效果估计(TEE)的反事实表征方面表现出了良好的表现,但大多数这些模型的一个主要限制是,它们往往忽略了具有不同治疗效果和特征的潜在子组之间治疗效果的多样性,将整个人群视为同质群体。这一限制限制了精确估计治疗效果和提供有针对性的治疗建议的能力。在本文中,我们提出了一种新的治疗效果估计模型,称为SubgroupTE,该模型将TEE中的子群识别纳入其中。SubgroupTE识别具有不同反应的异质亚组,通过在估计过程中考虑亚组特异性治疗效果,更精确地估计治疗效果。此外,我们引入了一个基于期望最大化(EM)的训练过程,该过程迭代优化估计和子组网络,以提高估计和子组识别。在合成和半合成数据集上的综合实验表明,与现有的治疗效果估计和子分组模型相比,SubgroupTE具有出色的性能。此外,一项现实世界的研究表明,通过将亚组识别与治疗效果评估相结合,亚组te能够增强阿片类药物使用障碍(OUD)患者的靶向治疗建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

SubgroupTE: Advancing Treatment Effect Estimation with Subgroup Identification.

SubgroupTE: Advancing Treatment Effect Estimation with Subgroup Identification.

SubgroupTE: Advancing Treatment Effect Estimation with Subgroup Identification.

SubgroupTE: Advancing Treatment Effect Estimation with Subgroup Identification.

Precise estimation of treatment effects is crucial for accurately evaluating the intervention. While deep learning models have exhibited promising performance in learning counterfactual representations for treatment effect estimation (TEE), a major limitation in most of these models is that they often overlook the diversity of treatment effects across potential subgroups that have varying treatment effects and characteristics, treating the entire population as a homogeneous group. This limitation restricts the ability to precisely estimate treatment effects and provide targeted treatment recommendations. In this paper, we propose a novel treatment effect estimation model, named SubgroupTE, which incorporates subgroup identification in TEE. SubgroupTE identifies heterogeneous subgroups with different responses and more precisely estimates treatment effects by considering subgroup-specific treatment effects in the estimation process. In addition, we introduce an expectation-maximization (EM)-based training process that iteratively optimizes estimation and subgrouping networks to improve both estimation and subgroup identification. Comprehensive experiments on the synthetic and semi-synthetic datasets demonstrate the outstanding performance of SubgroupTE compared to the existing works for treatment effect estimation and subgrouping models. Additionally, a real-world study demonstrates the capabilities of SubgroupTE in enhancing targeted treatment recommendations for patients with opioid use disorder (OUD) by incorporating subgroup identification with treatment effect estimation.

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来源期刊
ACM Transactions on Intelligent Systems and Technology
ACM Transactions on Intelligent Systems and Technology COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, INFORMATION SYSTEMS
CiteScore
9.30
自引率
2.00%
发文量
131
期刊介绍: ACM Transactions on Intelligent Systems and Technology is a scholarly journal that publishes the highest quality papers on intelligent systems, applicable algorithms and technology with a multi-disciplinary perspective. An intelligent system is one that uses artificial intelligence (AI) techniques to offer important services (e.g., as a component of a larger system) to allow integrated systems to perceive, reason, learn, and act intelligently in the real world. ACM TIST is published quarterly (six issues a year). Each issue has 8-11 regular papers, with around 20 published journal pages or 10,000 words per paper. Additional references, proofs, graphs or detailed experiment results can be submitted as a separate appendix, while excessively lengthy papers will be rejected automatically. Authors can include online-only appendices for additional content of their published papers and are encouraged to share their code and/or data with other readers.
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