MedMamba: Recasting Mamba for Medical Time Series Classification
ZhengXiao He, Huayu Li, Xiwen Chen, Janet M Roveda, Jinghao Wen, Siyuan Tian, Ao Li

TL;DR
MedMamba introduces a multi-scale state space architecture tailored for medical time series classification, effectively capturing complex dependencies and outperforming existing methods across multiple datasets.
Contribution
It proposes a principle-driven, efficient state space model that incorporates physiological inductive biases, advancing medical time series analysis beyond traditional models.
Findings
Achieves 85.97% accuracy on PTB dataset.
Sets new state-of-the-art on ADFTD with 54.72% accuracy.
Provides 4.6x faster inference speed.
Abstract
Medical time series, such as electrocardiograms (ECG) and electroencephalograms (EEG), exhibit complex temporal dynamics and structured cross-channel dependencies, posing fundamental challenges for automated analysis. Conventional convolutional and recurrent models struggle to capture long-range dependencies, while Transformer-based approaches incur quadratic complexity and often introduce redundant interactions that are misaligned with the intrinsic structure of physiological signals. To address these limitations, we propose MedMamba, a principle-driven multi-scale bidirectional state space architecture tailored for medical time series classification. Our design is guided by three key inductive biases of physiological signals: spatial centralization, multi-timescale temporal composition, and non-causal contextual dependency. These principles are instantiated through a lightweight…
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