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论文ICLR 2026 Poster2026 年clinical prediction

重用基础模型实现可泛化医学时间序列分类

ICLR 2026 Poster accepted paper at ICLR 2026. Medical time series (MedTS) classification suffers from poor generalizability in real-world deployment due to inter- and intra-dataset heterogeneity, such as varying numbers of channels, signal lengths, task definitions, and patient characteristics. % implicit patient characteristics, variable channel configurations, time series lengths, and diagnostic tasks. To address this, we propose FORMED, a novel framework for repurposing a backbone foundation model, pre-trained on generic time series, to enable highly generalizable MedTS classification on unseen datasets. FORMED combines the backbone with a novel classifier comprising two components: (1) task-specific channel embeddings and label queries, dynamically sized to match any number of channels and target classes, and (2) a shared decoding attention layer, jointly trained across datasets to capture medical domain knowledge through task-agnostic feature-query interactions.

论文默认配图 - 医学影像计算

论文详情

英文标题
Repurposing Foundation Model for Generalizable Medical Time Series Classification
作者
Nan Huang, Haishuai Wang, Zihuai He, Marinka Zitnik, Xiang Zhang
期刊/会议
ICLR 2026 Poster
发表年份
2026 年
研究方向
clinical prediction