ECGrecover: a Deep Learning Approach for Electrocardiogram Signal Completion
- URL: http://arxiv.org/abs/2406.16901v3
- Date: Mon, 20 Jan 2025 09:12:29 GMT
- Title: ECGrecover: a Deep Learning Approach for Electrocardiogram Signal Completion
- Authors: Alex Lence, Federica Granese, Ahmad Fall, Blaise Hanczar, Joe-Elie Salem, Jean-Daniel Zucker, Edi Prifti,
- Abstract summary: We focus on two main scenarios: (i) reconstructing missing signal segments within an ECG lead and (ii) recovering entire leads from signal in another unique lead.
We propose ECGrecover, a neural network model trained on a novel composite objective function to address the reconstruction problem.
- Score: 1.727597257312416
- License:
- Abstract: In this work, we address the challenge of reconstructing the complete 12-lead ECG signal from its incomplete parts. We focus on two main scenarios: (i) reconstructing missing signal segments within an ECG lead and (ii) recovering entire leads from signal in another unique lead. Two emerging clinical applications emphasize the relevance of our work. The first is the increasing need to digitize paper-stored ECGs for utilization in AI-based applications, often limited to digital 12 lead 10s ECGs. The second is the widespread use of wearable devices that record ECGs but typically capture only one or a few leads. In both cases, a non-negligible amount of information is lost or not recorded. Our approach aims to recover this missing signal. We propose ECGrecover, a U-Net neural network model trained on a novel composite objective function to address the reconstruction problem. This function incorporates both spatial and temporal features of the ECG by combining the distance in amplitude and sycnhronization through time between the reconstructed and the real digital signals. We used real-life ECG datasets and through comprehensive assessments compared ECGrecover with three state-of-the-art methods based on generative adversarial networks (EKGAN, Pix2Pix) as well as the CopyPaste strategy. The results demonstrated that ECGrecover consistently outperformed state-of-the-art methods in standard distortion metrics as well as in preserving critical ECG characteristics, particularly the P, QRS, and T wave coordinates.
Related papers
- CognitionCapturer: Decoding Visual Stimuli From Human EEG Signal With Multimodal Information [61.1904164368732]
We propose CognitionCapturer, a unified framework that fully leverages multimodal data to represent EEG signals.
Specifically, CognitionCapturer trains Modality Experts for each modality to extract cross-modal information from the EEG modality.
The framework does not require any fine-tuning of the generative models and can be extended to incorporate more modalities.
arXiv Detail & Related papers (2024-12-13T16:27:54Z) - Learning General Representation of 12-Lead Electrocardiogram with a Joint-Embedding Predictive Architecture [0.0]
We introduce ECG-JEPA, a self-supervised learning model for 12-lead ECG analysis.
It learns semantic representations of ECG data by predicting in the hidden latent space.
ECG-JEPA achieves state-of-the-art performance in various downstream tasks including ECG classification and feature prediction.
arXiv Detail & Related papers (2024-10-11T06:30:48Z) - NERULA: A Dual-Pathway Self-Supervised Learning Framework for Electrocardiogram Signal Analysis [5.8961928852930034]
We present NERULA, a self-supervised framework designed for single-lead ECG signals.
NERULA's dual-pathway architecture combines ECG reconstruction and non-contrastive learning to extract detailed cardiac features.
We show that combining generative and discriminative paths into the training spectrum leads to better results by outperforming state-of-the-art self-supervised learning benchmarks in various tasks.
arXiv Detail & Related papers (2024-05-21T14:01:57Z) - CoReEcho: Continuous Representation Learning for 2D+time Echocardiography Analysis [42.810247034149214]
We propose CoReEcho, a novel training framework emphasizing continuous representations tailored for direct EF regression.
CoReEcho: 1) outperforms the current state-of-the-art (SOTA) on the largest echocardiography dataset (EchoNet-Dynamic) with MAE of 3.90 & R2 of 82.44, and 2) provides robust and generalizable features that transfer more effectively in related downstream tasks.
arXiv Detail & Related papers (2024-03-15T10:18:06Z) - TSRNet: Simple Framework for Real-time ECG Anomaly Detection with
Multimodal Time and Spectrogram Restoration Network [9.770923451320938]
We propose an approach that leverages anomaly detection to identify unhealthy conditions using solely normal ECG data for training.
We introduce a specialized network called the Multimodal Time and Spectrogram Restoration Network (TSRNet) designed specifically for detecting anomalies in ECG signals.
arXiv Detail & Related papers (2023-12-15T20:27:38Z) - DGSD: Dynamical Graph Self-Distillation for EEG-Based Auditory Spatial
Attention Detection [49.196182908826565]
Auditory Attention Detection (AAD) aims to detect target speaker from brain signals in a multi-speaker environment.
Current approaches primarily rely on traditional convolutional neural network designed for processing Euclidean data like images.
This paper proposes a dynamical graph self-distillation (DGSD) approach for AAD, which does not require speech stimuli as input.
arXiv Detail & Related papers (2023-09-07T13:43:46Z) - PulseNet: Deep Learning ECG-signal classification using random
augmentation policy and continous wavelet transform for canines [46.09869227806991]
evaluating canine electrocardiograms (ECG) require skilled veterinarians.
Current availability of veterinary cardiologists for ECG interpretation and diagnostic support is limited.
We implement a deep convolutional neural network (CNN) approach for classifying canine electrocardiogram sequences as either normal or abnormal.
arXiv Detail & Related papers (2023-05-17T09:06:39Z) - Blind ECG Restoration by Operational Cycle-GANs [15.264145425539128]
Continuous long-term monitoring of electrocardiography signals is crucial for the early detection of cardiac abnormalities such as arrhythmia.
Non-clinical ECG recordings often suffer from severe artifacts such as baseline wander, signal cuts, motion artifacts, variations on QRS amplitude, noise, and other interferences.
We propose a novel approach for blind ECG restoration using cycle-consistent generative adversarial networks (Cycle-GANs)
arXiv Detail & Related papers (2022-01-29T19:47:17Z) - Generalizing electrocardiogram delineation: training convolutional
neural networks with synthetic data augmentation [63.51064808536065]
Existing databases for ECG delineation are small, being insufficient in size and in the array of pathological conditions they represent.
This article delves has two main contributions. First, a pseudo-synthetic data generation algorithm was developed, based in probabilistically composing ECG traces given "pools" of fundamental segments, as cropped from the original databases, and a set of rules for their arrangement into coherent synthetic traces.
Second, two novel segmentation-based loss functions have been developed, which attempt at enforcing the prediction of an exact number of independent structures and at producing closer segmentation boundaries by focusing on a reduced number of samples.
arXiv Detail & Related papers (2021-11-25T10:11:41Z) - ECG Signal Super-resolution by Considering Reconstruction and Cardiac
Arrhythmias Classification Loss [0.0]
We propose a deep-learning-based ECG signal super-resolution framework (termed ESRNet) to recover compressed ECG signals.
Experimental results show that the proposed ESRNet framework can well reconstruct ECG signals from the 10-times compressed ones.
arXiv Detail & Related papers (2020-12-07T15:43:50Z) - ECG-DelNet: Delineation of Ambulatory Electrocardiograms with Mixed
Quality Labeling Using Neural Networks [69.25956542388653]
Deep learning (DL) algorithms are gaining weight in academic and industrial settings.
We demonstrate DL can be successfully applied to low interpretative tasks by embedding ECG detection and delineation onto a segmentation framework.
The model was trained using PhysioNet's QT database, comprised of 105 ambulatory ECG recordings.
arXiv Detail & Related papers (2020-05-11T16:29:12Z)
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.