Biosignal Fingerprinting: A Cross-Modal PPG-ECG Foundation Model
Zhangdaihong Liu, Chang Liu, Fenglin Liu, Yixuan Chen, Yang Yang, David A. Clifton, and Xiao Gu

TL;DR
This paper introduces biosignal fingerprints, a cross-modal foundation model trained on ECG and PPG signals, enabling robust, privacy-preserving cardiovascular monitoring across multiple clinical tasks with high accuracy.
Contribution
The authors develop M2AE, a novel multi-modal autoencoder that creates transferable, compact biosignal representations applicable across modalities and tasks without retraining.
Findings
Achieved 0.974 AUROC in five-class CVD classification.
Attained 0.877 AUROC in hypertension detection.
Maximum 27.7% improvement in AUROC across tasks.
Abstract
Cardiovascular disease remains the leading cause of global mortality, yet scalable cardiac monitoring is hindered by the gap between diagnostic-rich ECG and ubiquitous wearable PPG. Bridging this gap requires representations that are compact, transferable across modalities and devices, and deployable without task-specific retraining. Here we introduce biosignal fingerprints: compact latent representations of cardiovascular state derived from a cross-modal foundation model, the Multi-modal Masked Autoencoder (M2AE), trained on over 3.4 million paired ECG and PPG signals. M2AE integrates modality-specific encoders with a shared bottleneck and dual decoders, jointly optimized using reconstruction and cross-modal contrastive objectives, yielding generalizable fingerprints that retain intra- and inter-modality features. Like a biometric fingerprint, these representations uniquely encode an…
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