A Systematic Review of ECG Arrhythmia Classification: Adherence to Standards, Fair Evaluation, and Embedded Feasibility
- URL: http://arxiv.org/abs/2503.07276v1
- Date: Mon, 10 Mar 2025 12:57:43 GMT
- Title: A Systematic Review of ECG Arrhythmia Classification: Adherence to Standards, Fair Evaluation, and Embedded Feasibility
- Authors: Guilherme Silva, Pedro Silva, Gladston Moreira, Vander Freitas, Jadson Gertrudes, Eduardo Luz,
- Abstract summary: This review systematically analyzes ECG classification studies published between 2017 and 2024.<n>We identify state-of-the-art methods meeting E3C criteria and conduct a comparative analysis of accuracy, inference time, energy consumption, and memory usage.<n>By addressing these gaps, this study aims to guide future research toward more robust and clinically viable ECG classification systems.
- Score: 0.1932975952237668
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The classification of electrocardiogram (ECG) signals is crucial for early detection of arrhythmias and other cardiac conditions. However, despite advances in machine learning, many studies fail to follow standardization protocols, leading to inconsistencies in performance evaluation and real-world applicability. Additionally, hardware constraints essential for practical deployment, such as in pacemakers, Holter monitors, and wearable ECG patches, are often overlooked. Since real-world impact depends on feasibility in resource-constrained devices, ensuring efficient deployment is critical for continuous monitoring. This review systematically analyzes ECG classification studies published between 2017 and 2024, focusing on those adhering to the E3C (Embedded, Clinical, and Comparative Criteria), which include inter-patient paradigm implementation, compliance with Association for the Advancement of Medical Instrumentation (AAMI) recommendations, and model feasibility for embedded systems. While many studies report high accuracy, few properly consider patient-independent partitioning and hardware limitations. We identify state-of-the-art methods meeting E3C criteria and conduct a comparative analysis of accuracy, inference time, energy consumption, and memory usage. Finally, we propose standardized reporting practices to ensure fair comparisons and practical applicability of ECG classification models. By addressing these gaps, this study aims to guide future research toward more robust and clinically viable ECG classification systems.
Related papers
- A Comprehensive Benchmark for Electrocardiogram Time-Series [31.656774120734358]
Electrocardiogram is crucial for assessing cardiac health and diagnosing various diseases.<n>ECG data is often incorporated into pre-training datasets for large-scale time-series model training.
arXiv Detail & Related papers (2025-07-15T02:54:24Z) - TolerantECG: A Foundation Model for Imperfect Electrocardiogram [6.8878798499351]
TolerantECG is a foundation model for ECG signals that is robust to noise and capable of functioning with arbitrary subsets of the standard 12-lead ECG.<n>TolerantECG training combines contrastive and self-supervised learning frameworks to jointly learn ECG signal representations.<n> benchmarking results demonstrate that TolerantECG consistently ranks as the best or second-best performer across various ECG signal conditions.
arXiv Detail & Related papers (2025-07-14T03:48:35Z) - 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) - GEM: Empowering MLLM for Grounded ECG Understanding with Time Series and Images [43.65650710265957]
We introduce GEM, the first MLLM unifying ECG time series, 12-lead ECG images and text for grounded and clinician-aligned ECG interpretation.<n> GEM enables feature-grounded analysis, evidence-driven reasoning, and a clinician-like diagnostic process through three core innovations.<n>We propose the Grounded ECG task, a clinically motivated benchmark designed to assess the MLLM's capability in grounded ECG understanding.
arXiv Detail & Related papers (2025-03-08T05:48:53Z) - DiffuSETS: 12-lead ECG Generation Conditioned on Clinical Text Reports and Patient-Specific Information [13.680337221159506]
Heart disease remains a significant threat to human health.
Scarcity of high-quality ECG data, driven by privacy concerns and limited medical resources, creates a pressing need for effective ECG signal generation.
We propose DiffuSETS, a novel framework capable of generating ECG signals with high semantic alignment and fidelity.
arXiv Detail & Related papers (2025-01-10T12:55:34Z) - 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) - ECG Arrhythmia Detection Using Disease-specific Attention-based Deep Learning Model [0.0]
We propose a disease-specific attention-based deep learning model (DANet) for arrhythmia detection from short ECG recordings.
The novel idea is to introduce a soft-coding or hard-coding waveform enhanced module into existing deep neural networks.
For the soft-coding DANet, we also develop a learning framework combining self-supervised pre-training with two-stage supervised training.
arXiv Detail & Related papers (2024-07-25T13:27:10Z) - MEIT: Multi-Modal Electrocardiogram Instruction Tuning on Large Language Models for Report Generation [41.324530807795256]
Electrocardiogram (ECG) is the primary non-invasive diagnostic tool for monitoring cardiac conditions.
Recent studies have concentrated on classifying cardiac conditions using ECG data but have overlooked ECG report generation.
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) - EKGNet: A 10.96{\mu}W Fully Analog Neural Network for Intra-Patient
Arrhythmia Classification [79.7946379395238]
We present an integrated approach by combining analog computing and deep learning for electrocardiogram (ECG) arrhythmia classification.
We propose EKGNet, a hardware-efficient and fully analog arrhythmia classification architecture that archives high accuracy with low power consumption.
arXiv Detail & Related papers (2023-10-24T02:37:49Z) - ECG-SL: Electrocardiogram(ECG) Segment Learning, a deep learning method
for ECG signal [19.885905393439014]
We propose a novel ECG-Segment based Learning (ECG-SL) framework to explicitly model the periodic nature of ECG signals.
Based on the structural features, a temporal model is designed to learn the temporal information for various clinical tasks.
The proposed method outperforms the baseline model and shows competitive performances compared with task-specific methods in three clinical applications.
arXiv Detail & Related papers (2023-10-01T23:17:55Z) - 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) - Hierarchical Deep Learning with Generative Adversarial Network for
Automatic Cardiac Diagnosis from ECG Signals [2.5008947886814186]
We propose a two-level hierarchical deep learning framework with Generative Adversarial Network (GAN) for automatic diagnosis of ECG signals.
The first-level model is composed of a Memory-Augmented Deep auto-Encoder with GAN, which aims to differentiate abnormal signals from normal ECGs for anomaly detection.
The second-level learning aims at robust multi-class classification for different arrhythmias identification.
arXiv Detail & Related papers (2022-10-19T12:29:05Z) - 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.