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Journal Article Few-Shot PPG Signal Generation via Guided Diffusion Models
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Authors
Jinho Kang, Yongtaek Lim, KyuHyung Kim, Hyeonjeong Lee, KwangYong Kim, Minseong Kim, Jiyoung Jung, Kyungwoo Song
Issue Date
2024-10
Citation
IEEE Sensors Journal, v.24, no.20, pp.32792-32800
ISSN
1530-437X
Publisher
Institute of Electrical and Electronics Engineers
Language
English
Type
Journal Article
DOI
https://dx.doi.org/10.1109/JSEN.2024.3451453
Abstract
Recent advancements in deep learning for predicting arterial blood pressure (ABP) have prominently featured photoplethysmography (PPG) signals. Notably, PPG signals exhibit significant variability due to differences in measurement environments, alongside stark disparities in the distribution of collected signal data among different labels. To address these challenges, this study introduces a bi-guided diffusion (BG-Diff) model designed to generate PPG signals with expected features of ABP within a few-shot setting for each label group. We propose a guided diffusion model architecture that simultaneously considers both the determinant group condition and the continuous label condition for each group in a few-shot setting. To the best of our knowledge, this is the first study to use a diffusion model for generating PPG signals with a limited dataset. Initially, we categorized them into four groups based on systolic blood pressure (SBP) and diastolic blood pressure (DBP) values: Hypo, Normal, Prehyper, and Hyper2. In each group, we sample an equal number of data points according to the few-shot setting and then generate appropriate PPG signals for each group through guidance. In addition, our study proposes a postprocessing technique to address the limitations of generative models in few-shot settings, consistently boosting performance across various methods, such as training from scratch, transfer learning, and linear probing (LP). When benchmarked, our methodology demonstrated performance improvements across all datasets, including BCG, PPGBP, and Sensors. We confirmed data quality by comparing training, generated, and actual data. We analyzed error cases, morphology features, and t-SNE distribution to highlight the role of synthetic data in enhancing performance.
KSP Keywords
Blood Pressure(BP), Data Quality, Diastolic blood pressure, Diffusion Model, Generative models, Linear probing, Measurement environments, Model architecture, PPG signal, Signal generation, Synthetic data