cs.AI updates on arXiv.org 10月14日
PhysioME:缺失模态下生理信号处理新框架
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本文提出PhysioME,一种针对生理信号处理中缺失模态问题的鲁棒框架。通过多模态自监督学习、Dual-PathNeuroNet骨干网络和恢复解码器,实现缺失模态下的可靠性能,为临床决策提供支持。

arXiv:2510.11110v1 Announce Type: cross Abstract: Missing or corrupted modalities are common in physiological signal-based medical applications owing to hardware constraints or motion artifacts. However, most existing methods assume the availability of all modalities, resulting in substantial performance degradation in the absence of any modality. To overcome this limitation, this study proposes PhysioME, a robust framework designed to ensure reliable performance under missing modality conditions. PhysioME adopts: (1) a multimodal self-supervised learning approach that combines contrastive learning with masked prediction; (2) a Dual-PathNeuroNet backbone tailored to capture the temporal dynamics of each physiological signal modality; and (3) a restoration decoder that reconstructs missing modality tokens, enabling flexible processing of incomplete inputs. The experimental results show that PhysioME achieves high consistency and generalization performance across various missing modality scenarios. These findings highlight the potential of PhysioME as a reliable tool for supporting clinical decision-making in real-world settings with imperfect data availability.

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生理信号处理 缺失模态 PhysioME 自监督学习 临床决策
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