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Hauptverfasser: Palumbo, Emanuele, Saengkyongam, Sorawit, Cervera, Maria R., Behrmann, Jens, Miller, Andrew C., Sapiro, Guillermo, Heinze-Deml, Christina, Wehenkel, Antoine
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2511.14452
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author Palumbo, Emanuele
Saengkyongam, Sorawit
Cervera, Maria R.
Behrmann, Jens
Miller, Andrew C.
Sapiro, Guillermo
Heinze-Deml, Christina
Wehenkel, Antoine
author_facet Palumbo, Emanuele
Saengkyongam, Sorawit
Cervera, Maria R.
Behrmann, Jens
Miller, Andrew C.
Sapiro, Guillermo
Heinze-Deml, Christina
Wehenkel, Antoine
contents Continuous cardiovascular monitoring can play a key role in precision health. However, some fundamental cardiac biomarkers of interest, including stroke volume and cardiac output, require invasive measurements, e.g., arterial pressure waveforms (APW). As a non-invasive alternative, photoplethysmography (PPG) measurements are routinely collected in hospital settings. Unfortunately, the prediction of key cardiac biomarkers from PPG instead of APW remains an open challenge, further complicated by the scarcity of annotated PPG measurements. As a solution, we propose a hybrid approach that uses hemodynamic simulations and unlabeled clinical data to estimate cardiovascular biomarkers directly from PPG signals. Our hybrid model combines a conditional variational autoencoder trained on paired PPG-APW data with a conditional density estimator of cardiac biomarkers trained on labeled simulated APW segments. As a key result, our experiments demonstrate that the proposed approach can detect fluctuations of cardiac output and stroke volume and outperform a supervised baseline in monitoring temporal changes in these biomarkers.
format Preprint
id arxiv_https___arxiv_org_abs_2511_14452
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Hybrid Modeling of Photoplethysmography for Non-invasive Monitoring of Cardiovascular Parameters
Palumbo, Emanuele
Saengkyongam, Sorawit
Cervera, Maria R.
Behrmann, Jens
Miller, Andrew C.
Sapiro, Guillermo
Heinze-Deml, Christina
Wehenkel, Antoine
Machine Learning
Artificial Intelligence
Continuous cardiovascular monitoring can play a key role in precision health. However, some fundamental cardiac biomarkers of interest, including stroke volume and cardiac output, require invasive measurements, e.g., arterial pressure waveforms (APW). As a non-invasive alternative, photoplethysmography (PPG) measurements are routinely collected in hospital settings. Unfortunately, the prediction of key cardiac biomarkers from PPG instead of APW remains an open challenge, further complicated by the scarcity of annotated PPG measurements. As a solution, we propose a hybrid approach that uses hemodynamic simulations and unlabeled clinical data to estimate cardiovascular biomarkers directly from PPG signals. Our hybrid model combines a conditional variational autoencoder trained on paired PPG-APW data with a conditional density estimator of cardiac biomarkers trained on labeled simulated APW segments. As a key result, our experiments demonstrate that the proposed approach can detect fluctuations of cardiac output and stroke volume and outperform a supervised baseline in monitoring temporal changes in these biomarkers.
title Hybrid Modeling of Photoplethysmography for Non-invasive Monitoring of Cardiovascular Parameters
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2511.14452