TAMER: A Test-Time Adaptive MoE-Driven Framework for EHR Representation Learning
TAMER: A Test-Time Adaptive MoE-Driven Framework for EHR Representation Learning
We propose TAMER, a Test-time Adaptive MoE-driven framework for Electronic Health Record (EHR) Representation learning. TAMER introduces a framework where a Mixture-of-Experts (MoE) architecture is co-designed with Test-Time Adaptation (TTA) to jointly mitigate the intertwined challenges of patient heterogeneity and distribution shifts in EHR modeling. The MoE focuses on latent patient subgroups through domain-aware expert specialization, while TTA enables real-time adaptation to evolving health status distributions when new patient samples are introduced. Extensive experiments across four real-world EHR datasets demonstrate that TAMER consistently improves predictive performance for both mortality and readmission risk tasks when combined with diverse EHR modeling backbones. TAMER offers a promising approach for dynamic and personalized EHR-based predictions in practical clinical settings.
Yinghao Zhu、Xiaochen Zheng、Michael Krauthammer、Ahmed Allam
医药卫生理论医学研究方法
Yinghao Zhu,Xiaochen Zheng,Michael Krauthammer,Ahmed Allam.TAMER: A Test-Time Adaptive MoE-Driven Framework for EHR Representation Learning[EB/OL].(2025-01-09)[2025-05-13].https://arxiv.org/abs/2501.05661.点此复制
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