PPGFlowECG: Latent Rectified Flow with Cross-Modal Encoding for PPG-Guided ECG Generation and Cardiovascular Disease Detection
- URL: http://arxiv.org/abs/2509.19774v1
- Date: Wed, 24 Sep 2025 05:54:33 GMT
- Title: PPGFlowECG: Latent Rectified Flow with Cross-Modal Encoding for PPG-Guided ECG Generation and Cardiovascular Disease Detection
- Authors: Xiaocheng Fang, Jiarui Jin, Haoyu Wang, Che Liu, Jieyi Cai, Guangkun Nie, Jun Li, Hongyan Li, Shenda Hong,
- Abstract summary: In clinical practice, electrocardiography (ECG) remains the gold standard for cardiac monitoring.<n>Current methods face substantial challenges, including the complexity of modeling in high-dimensional signals.<n>We propose PPGECG, a two-stage framework that aligns PPG and ECG in a shared space via CardioAlign.<n>Results demonstrate the effectiveness of our method for PPG-to-ECG translation and cardiovascular disease detection.
- Score: 30.418337408193125
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In clinical practice, electrocardiography (ECG) remains the gold standard for cardiac monitoring, providing crucial insights for diagnosing a wide range of cardiovascular diseases (CVDs). However, its reliance on specialized equipment and trained personnel limits feasibility for continuous routine monitoring. Photoplethysmography (PPG) offers accessible, continuous monitoring but lacks definitive electrophysiological information, preventing conclusive diagnosis. Generative models present a promising approach to translate PPG into clinically valuable ECG signals, yet current methods face substantial challenges, including the misalignment of physiological semantics in generative models and the complexity of modeling in high-dimensional signals. To this end, we propose PPGFlowECG, a two-stage framework that aligns PPG and ECG in a shared latent space via the CardioAlign Encoder and employs latent rectified flow to generate ECGs with high fidelity and interpretability. To the best of our knowledge, this is the first study to experiment on MCMED, a newly released clinical-grade dataset comprising over 10 million paired PPG-ECG samples from more than 118,000 emergency department visits with expert-labeled cardiovascular disease annotations. Results demonstrate the effectiveness of our method for PPG-to-ECG translation and cardiovascular disease detection. Moreover, cardiologist-led evaluations confirm that the synthesized ECGs achieve high fidelity and improve diagnostic reliability, underscoring our method's potential for real-world cardiovascular screening.
Related papers
- Simulator and Experience Enhanced Diffusion Model for Comprehensive ECG Generation [52.19347532840774]
We propose SE-Diff, a novel physiological simulator and experience enhanced diffusion model for ECG generation.<n> SE-Diff integrates a lightweight ordinary differential equation (ODE)-based ECG simulator into the diffusion process via a beat decoder.<n>Extensive experiments on real-world ECG datasets demonstrate that SE-Diff improves both signal fidelity and text-ECG semantic alignment.
arXiv Detail & Related papers (2025-11-13T02:57:10Z) - Reconstructing 12-Lead ECG from 3-Lead ECG using Variational Autoencoder to Improve Cardiac Disease Detection of Wearable ECG Devices [22.76333494370181]
We propose WearECG, a Variational Autoencoder (VAE) method that reconstructs twelve-lead ECGs from three leads: II, V1, and V5.<n>Our model includes architectural improvements to better capture temporal and spatial dependencies in ECG signals.<n>We fine-tune ECGFounder, a large-scale pretrained ECG model, on a multi-label classification task involving over 40 cardiac conditions.
arXiv Detail & Related papers (2025-10-13T14:14:37Z) - Global and Local Contrastive Learning for Joint Representations from Cardiac MRI and ECG [40.407824759778784]
PTACL (Patient and Temporal Alignment Contrastive Learning) is a multimodal contrastive learning framework that enhances ECG representations by integrating-temporal information from CMR.<n>We evaluate PTACL on paired ECG-CMR data from 27,951 subjects in the UK Biobank.<n>Our results highlight the potential of PTACL to enhance non-invasive cardiac diagnostics using ECG.
arXiv Detail & Related papers (2025-06-24T17:19:39Z) - Heartcare Suite: Multi-dimensional Understanding of ECG with Raw Multi-lead Signal Modeling [50.58126509704037]
Heartcare Suite is a framework for fine-grained electrocardiogram (ECG) understanding.<n>Heartcare-220K is a high-quality, structured, and comprehensive multimodal ECG dataset.<n>Heartcare-Bench is a benchmark to guide the optimization of Medical Multimodal Large Language Models (Med-MLLMs) in ECG scenarios.
arXiv Detail & Related papers (2025-06-06T07:56:41Z) - Self-supervised inter-intra period-aware ECG representation learning for detecting atrial fibrillation [41.82319894067087]
We propose an inter-intra period-aware ECG representation learning approach.
Considering ECGs of atrial fibrillation patients exhibit the irregularity in RR intervals and the absence of P-waves, we develop specific pre-training tasks for interperiod and intraperiod representations.
Our approach demonstrates remarkable AUC performances on the BTCH dataset, textiti.e., 0.953/0.996 for paroxysmal/persistent atrial fibrillation detection.
arXiv Detail & Related papers (2024-10-08T10:03:52Z) - Uncertainty-Aware PPG-2-ECG for Enhanced Cardiovascular Diagnosis using Diffusion Models [16.03166435894744]
Photoplethysmography ( PPG) is an optically-based signal that measures blood volume fluctuations.<n>ECG provides more comprehensive information, allowing for a more precise detection of heart conditions.<n>We introduce a novel methodology for addressing the PPG-2-ECG conversion, and offer an enhanced classification of cardiovascular conditions using the given PPG.
arXiv Detail & Related papers (2024-05-19T14:30:57Z) - MEIT: Multimodal Electrocardiogram Instruction Tuning on Large Language Models for Report Generation [28.35107188450758]
Electrocardiogram (ECG) is the primary non-invasive diagnostic tool for monitoring cardiac conditions.<n>Recent studies have concentrated on classifying cardiac conditions using ECG data but have overlooked ECG report generation.<n>We propose the Multimodal ECG Instruction Tuning (MEIT) framework, the first attempt to tackle ECG report generation with LLMs and multimodal instructions.
arXiv Detail & Related papers (2024-03-07T23:20:56Z) - PPG-to-ECG Signal Translation for Continuous Atrial Fibrillation Detection via Attention-based Deep State-Space Modeling [11.617950008187366]
Photoplethysmography ( PPG) is a cost-effective and non-invasive technique that utilizes optical methods to measure cardiac physiology.
Here, we propose a subject-independent attention-based deep state-space model (ADSSM) to translate PPG signals to corresponding ECG waveforms.
arXiv Detail & Related papers (2023-09-27T03:07:46Z) - Digital twinning of cardiac electrophysiology models from the surface
ECG: a geodesic backpropagation approach [39.36827689390718]
We introduce a novel method, Geodesic-BP, to solve the inverse eikonal problem.
We show that Geodesic-BP can reconstruct a simulated cardiac activation with high accuracy in a synthetic test case.
Given the future shift towards personalized medicine, Geodesic-BP has the potential to help in future functionalizations of cardiac models.
arXiv Detail & Related papers (2023-08-16T14:57:12Z) - Performer: A Novel PPG to ECG Reconstruction Transformer For a Digital
Biomarker of Cardiovascular Disease Detection [0.0]
Cardiovascular diseases (CVDs) have become the top one cause of death; three-quarters of these deaths occur in lower-income communities.
Electrocardiography (ECG) is infeasible for continuous cardiac monitoring due to its requirement for user participation.
Photoplethysmography is easy to collect, but the limited accuracy constrains its clinical usage.
arXiv Detail & Related papers (2022-04-25T17:10:13Z) - A Novel Transfer Learning-Based Approach for Screening Pre-existing
Heart Diseases Using Synchronized ECG Signals and Heart Sounds [0.5621251909851629]
Diagnosing pre-existing heart diseases early in life is important to prevent complications such as pulmonary hypertension, heart rhythm problems, blood clots, heart failure and sudden cardiac arrest.
To identify such diseases, phonocardiogram (PCG) and electrocardiogram (ECG) waveforms convey important information.
Here, we evaluate this hypothesis on a subset of the PhysioNet Challenge 2016 dataset which contains simultaneously acquired PCG and ECG recordings.
Our novel Dual-Convolutional Neural Network based approach uses transfer learning to tackle the problem of having limited amounts of simultaneous PCG and ECG data that is publicly available.
arXiv Detail & Related papers (2021-02-02T19:51:12Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.