A General Framework for Generative Self-supervised Learning in Non-invasive Estimation of Physiological Parameters Using Photoplethysmography
Zexing Zhang, Huimin Lu, Songzhe Ma, Jianzhong Peng, Chenglin Lin, Niya Li, Bingwang Dong

TL;DR
This paper introduces TS2TC, a generative self-supervised learning framework for non-invasive physiological parameter estimation from PPG data, leveraging multi-domain features and a novel transfer strategy.
Contribution
It proposes a new generative SSRL framework with a cross-temporal fusion task and a dual-process transfer strategy, improving physiological estimation accuracy with limited labeled data.
Findings
TS2TC outperforms existing methods with a 2.49% RMSE improvement.
The framework effectively utilizes multi-domain PPG features for robust representation.
Limited training data (10%) suffices for high-accuracy estimation.
Abstract
Aligning physiological parameter labels with large-scale photoplethysmographic (PPG) data for deep learning is challenging and resource-intensive. While self-supervised representation learning (SSRL) can handle limited annotated data, the challenge lies in learning robust shared representations from vast unlabeled data and integrating contextual cues to learn distinctive representations. To alleviate these challenges, a generative SSRL framework TS2TC is proposed to utilize the temporal, spectrogram, and temporal-spectrogram mixed domains to explore and incorporate the unique features of PPG for universal and noninvasive physiological parameter estimation. A pretext task named Cross-Temporal Fusion Generative Anchor (CTFGA) is designed, modeling temporal dependencies and reconstructing independent segments at a coarse level to provide robust global feature extraction and local…
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