The peak-oriented diffusion model successfully reconstructed high-fidelity ECG signals from photoplethysmogram inputs, achieving an overall root-mean-square-error of 0.220.
Does a peak-oriented diffusion model accurately reconstruct high-fidelity ECG signals from photoplethysmogram (PPG) data?
5,888 patients (yielding 59,980,410 segmented samples) from the MIMIC-III, WESAD, and PPG-DaLiA datasets
Peak-oriented diffusion model utilizing a U-Net framework with an R peak predictor for PPG-to-ECG reconstruction
Model performance measured by root-mean-squared error (RMSE) and Fréchet distancesurrogate
A novel peak-oriented diffusion model can accurately reconstruct high-fidelity ECG signals from PPG data, potentially enabling continuous ECG monitoring via mobile healthcare devices.
Cardiovascular disease is a leading cause of death, accounting for nearly one-third of all fatalities worldwide. The electrocardiogram (ECG), an electrophysiological signal representing cardiac activity, is a widely used non-invasive method for diagnosing cardiovascular diseases. However, ECG has limitations for continuous monitoring due to sensor size requirements, including electrodes. The photoplethysmogram (PPG), an optical method measuring blood volume variations, offers a more convenient alternative but provides less detailed information about heart activity than ECG. We introduce a peak-oriented diffusion model for PPG-to-ECG reconstruction, utilizing a U-Net framework composed of an encoder and decoder. We aim for the model to learn the peak differences between ECG and PPG by predicting R peaks from the systolic peaks of PPG, thereby preserving the main components of ECG signals. We evaluate the reconstructed ECG through clinical interpretation and assess it with noise input to verify model robustness under a daily environment. An R peak predictor, connected to the U-Net bottleneck, estimates R peaks incorporated into the decoder. The R peak predictor enables the model to reconstruct the ECG from the PPG while learning peak differences characterized as pulse transit time. We trained and evaluated the model using the MIMIC-III, WESAD, and PPG-DaLiA datasets. We assessed the model performance using root-mean-squared error and Fréchet distance, along with the ECG interpretation. In addition, atrial fibrillation detection and heart rate estimation are performed to verify clinical use of the reconstructed ECG. There were 59,980,410 segmented samples from 5,888 patients, split into train and test sets based on each patient, with an 8:2 ratio. The proposed model achieved a root-mean-square-error of 0.220, a Fréchet distance of 6.456, an F1-score of 0.925 for atrial fibrillation detection, and a mean difference of −0.077 −1.877, 1.723 beats/min for heart rate estimation. Our results showed that the peak-oriented diffusion model translates PPG into high-fidelity ECG for clinical applications. We believe our findings expand the usefulness of the AI-based model to mobile healthcare, which involves continuous ECG monitoring in daily life.
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Cho et al. (Mon,) conducted a other in Cardiovascular disease and atrial fibrillation (n=5,888). Peak-oriented diffusion model vs. Original ECG was evaluated on Root-mean-square-error (RMSE) of reconstructed ECG. The peak-oriented diffusion model successfully reconstructed high-fidelity ECG signals from photoplethysmogram inputs, achieving an overall root-mean-square-error of 0.220.
synapsesocial.com/papers/69d894526c1944d70ce054d5 — DOI: https://doi.org/10.1186/s13040-026-00544-2
Hyun-Myung Cho
Korea University
Sang Wook Han
Soonchunhyang University
Joon‐Kyung Seong
Korea University
BioData Mining
Korea University
Korea Institute of Science and Technology
Advanced Analysis Center
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