cs.AI updates on arXiv.org 07月22日 12:44
Benchmarking Foundation Models with Multimodal Public Electronic Health Records
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本研究提出一个评估基础模型在电子健康记录处理中性能、公平性和可解释性的基准,通过MIMIC-IV数据库系统比较八种基础模型,发现多模态数据能提高预测性能。

arXiv:2507.14824v1 Announce Type: cross Abstract: Foundation models have emerged as a powerful approach for processing electronic health records (EHRs), offering flexibility to handle diverse medical data modalities. In this study, we present a comprehensive benchmark that evaluates the performance, fairness, and interpretability of foundation models, both as unimodal encoders and as multimodal learners, using the publicly available MIMIC-IV database. To support consistent and reproducible evaluation, we developed a standardized data processing pipeline that harmonizes heterogeneous clinical records into an analysis-ready format. We systematically compared eight foundation models, encompassing both unimodal and multimodal models, as well as domain-specific and general-purpose variants. Our findings demonstrate that incorporating multiple data modalities leads to consistent improvements in predictive performance without introducing additional bias. Through this benchmark, we aim to support the development of effective and trustworthy multimodal artificial intelligence (AI) systems for real-world clinical applications. Our code is available at https://github.com/nliulab/MIMIC-Multimodal.

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基础模型 电子健康记录 多模态处理 性能评估 人工智能
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