Machine Learning-Based Analysis of ECG and PCG Signals for Rheumatic Heart Disease Detection: A Scoping Review (2015-2025)
- URL: http://arxiv.org/abs/2505.18182v2
- Date: Tue, 01 Jul 2025 13:41:51 GMT
- Title: Machine Learning-Based Analysis of ECG and PCG Signals for Rheumatic Heart Disease Detection: A Scoping Review (2015-2025)
- Authors: Damilare Emmanuel Olatunji, Julius Dona Zannu, Carine Pierrette Mukamakuza, Godbright Nixon Uiso, Chol Buol, Mona Mamoun Mubarak Aman, John Bosco Thuo, Nchofon Tagha Ghogomu, Evelyne Umubyeyi,
- Abstract summary: AI-powered stethoscopes offer a promising alternative for screening rheumatic heart disease (RHD)<n>Early detection is vital, yet echocardiography, the gold standard tool, remains largely inaccessible in low-resource settings due to cost and workforce constraints.<n>This review systematically examines machine learning applications that analyze electrocardiogram (ECG) and phonocardiogram (PCG) data to support accessible, scalable screening of all RHD variants.
- Score: 0.0
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: AI-powered stethoscopes offer a promising alternative for screening rheumatic heart disease (RHD), particularly in regions with limited diagnostic infrastructure. Early detection is vital, yet echocardiography, the gold standard tool, remains largely inaccessible in low-resource settings due to cost and workforce constraints. This review systematically examines machine learning (ML) applications from 2015 to 2025 that analyze electrocardiogram (ECG) and phonocardiogram (PCG) data to support accessible, scalable screening of all RHD variants in relation to the World Heart Federation's "25 by 25" goal to reduce RHD mortality. Using PRISMA-ScR guidelines, 37 peer-reviewed studies were selected from PubMed, IEEE Xplore, Scopus, and Embase. Convolutional neural networks (CNNs) dominate recent efforts, achieving a median accuracy of 97.75%, F1-score of 0.95, and AUROC of 0.89. However, challenges remain: 73% of studies used single-center datasets, 81.1% relied on private data, only 10.8% were externally validated, and none assessed cost-effectiveness. Although 45.9% originated from endemic regions, few addressed demographic diversity or implementation feasibility. These gaps underscore the disconnect between model performance and clinical readiness. Bridging this divide requires standardized benchmark datasets, prospective trials in endemic areas, and broader validation. If these issues are addressed, AI-augmented auscultation could transform cardiovascular diagnostics in underserved populations, thereby aiding early detection. This review also offers practical recommendations for building accessible ML-based RHD screening tools, aiming to close the diagnostic gap in low-resource settings where conventional auscultation may miss up to 90% of cases and echocardiography remains out of reach.
Related papers
- An Agentic System for Rare Disease Diagnosis with Traceable Reasoning [58.78045864541539]
We introduce DeepRare, the first rare disease diagnosis agentic system powered by a large language model (LLM)<n>DeepRare generates ranked diagnostic hypotheses for rare diseases, each accompanied by a transparent chain of reasoning.<n>The system demonstrates exceptional diagnostic performance among 2,919 diseases, achieving 100% accuracy for 1013 diseases.
arXiv Detail & Related papers (2025-06-25T13:42:26Z) - A Clinician-Friendly Platform for Ophthalmic Image Analysis Without Technical Barriers [51.45596445363302]
GlobeReady is a clinician-friendly AI platform that enables fundus disease diagnosis without retraining, fine-tuning, or the needs for technical expertise.<n>We demonstrate high accuracy across imaging modalities: 93.9-98.5% for 11 fundus diseases using color fundus photographs (CPFs) and 87.2-92.7% for 15 fundus diseases using optic coherence tomography ( OCT) scans.<n>By leveraging training-free local feature augmentation, GlobeReady platform effectively mitigates domain shifts across centers and populations.
arXiv Detail & Related papers (2025-04-22T14:17:22Z) - Congenital Heart Disease Classification Using Phonocardiograms: A Scalable Screening Tool for Diverse Environments [34.10187730651477]
Congenital heart disease (CHD) is a critical condition that demands early detection.<n>This study presents a deep learning model designed to detect CHD using phonocardiogram (PCG) signals.<n>We evaluated our model on several datasets, including the primary dataset from Bangladesh.
arXiv Detail & Related papers (2025-03-28T05:47:44Z) - Fast-staged CNN Model for Accurate pulmonary diseases and Lung cancer detection [0.0]
This research evaluates a deep learning model designed to detect lung cancer, specifically pulmonary nodules, along with eight other lung pathologies, using chest radiographs.<n>A two-stage classification system, utilizing ensemble methods and transfer learning, is employed to first triage images into Normal or Abnormal.<n>The model achieves notable results in classification, with a top-performing accuracy of 77%, a sensitivity of 0.713, a specificity of 0.776 during external validation, and an AUC score of 0.888.
arXiv Detail & Related papers (2024-12-16T11:47:07Z) - FedCVD: The First Real-World Federated Learning Benchmark on Cardiovascular Disease Data [52.55123685248105]
Cardiovascular diseases (CVDs) are currently the leading cause of death worldwide, highlighting the critical need for early diagnosis and treatment.
Machine learning (ML) methods can help diagnose CVDs early, but their performance relies on access to substantial data with high quality.
This paper presents the first real-world FL benchmark for cardiovascular disease detection, named FedCVD.
arXiv Detail & Related papers (2024-10-28T02:24:01Z) - AXIAL: Attention-based eXplainability for Interpretable Alzheimer's Localized Diagnosis using 2D CNNs on 3D MRI brain scans [43.06293430764841]
This study presents an innovative method for Alzheimer's disease diagnosis using 3D MRI designed to enhance the explainability of model decisions.
Our approach adopts a soft attention mechanism, enabling 2D CNNs to extract volumetric representations.
With voxel-level precision, our method identified which specific areas are being paid attention to, identifying these predominant brain regions.
arXiv Detail & Related papers (2024-07-02T16:44:00Z) - Methodology and Real-World Applications of Dynamic Uncertain Causality Graph for Clinical Diagnosis with Explainability and Invariance [41.373856519548404]
Dynamic Uncertain Causality Graph (DUCG) approach is causality-driven, explainable, and invariant across different application scenarios.
46 DUCG models covering 54 chief complaints were constructed.
Over one million real diagnosis cases have been performed, with only 17 incorrect diagnoses identified.
arXiv Detail & Related papers (2024-06-09T11:37:45Z) - Anomaly Detection in Electrocardiograms: Advancing Clinical Diagnosis Through Self-Supervised Learning [32.37717219026923]
Existing systems often miss rare cardiac anomalies that could be precursors to serious, life-threatening issues or alterations in the cardiac macro/microstructure.
We focus on self-supervised anomaly detection (AD), training exclusively on normal ECGs to recognize deviations indicating anomalies.
We introduce a novel self-supervised learning framework for ECG AD, utilizing a vast dataset of normal ECGs to autonomously detect and localize cardiac anomalies.
arXiv Detail & Related papers (2024-04-07T12:15:53Z) - Deep learning in computed tomography pulmonary angiography imaging: a
dual-pronged approach for pulmonary embolism detection [0.0]
The aim of this study is to leverage deep learning techniques to enhance the Computer Assisted Diagnosis (CAD) of Pulmonary Embolism (PE)
Our classification system includes an Attention-Guided Convolutional Neural Network (AG-CNN) that uses local context by employing an attention mechanism.
AG-CNN achieves robust performance on the FUMPE dataset, achieving an AUROC of 0.927, sensitivity of 0.862, specificity of 0.879, and an F1-score of 0.805 with the Inception-v3 backbone architecture.
arXiv Detail & Related papers (2023-11-09T08:23:44Z) - Deep-Learning Tool for Early Identifying Non-Traumatic Intracranial
Hemorrhage Etiology based on CT Scan [40.51754649947294]
The deep learning model was developed with 1868 eligible NCCT scans with non-traumatic ICH collected between January 2011 and April 2018.
The model's diagnostic performance was compared with clinicians's performance.
The clinicians achieve significant improvements in the sensitivity, specificity, and accuracy of diagnoses of certain hemorrhage etiologies with proposed system augmentation.
arXiv Detail & Related papers (2023-02-02T08:45:17Z) - Analysis of Digitalized ECG Signals Based on Artificial Intelligence and
Spectral Analysis Methods Specialized in ARVC [0.0]
Arrhythmogenic right ventricular cardiomyopathy (ARVC) is an inherited heart muscle disease that appears between the second and forth decade of a patient's life.
The effective and punctual diagnosis of this disease based on Electrocardiograms (ECGs) could have a vital role in reducing premature cardiovascular mortality.
arXiv Detail & Related papers (2022-02-28T13:12:50Z) - MyoPS: A Benchmark of Myocardial Pathology Segmentation Combining
Three-Sequence Cardiac Magnetic Resonance Images [84.02849948202116]
This work defines a new task of medical image analysis, i.e., to perform myocardial pathology segmentation (MyoPS)
MyoPS combines three-sequence cardiac magnetic resonance (CMR) images, which was first proposed in the MyoPS challenge, in conjunction with MICCAI 2020.
The challenge provided 45 paired and pre-aligned CMR images, allowing algorithms to combine the complementary information from the three CMR sequences for pathology segmentation.
arXiv Detail & Related papers (2022-01-10T06:37:23Z) - Identification of Ischemic Heart Disease by using machine learning
technique based on parameters measuring Heart Rate Variability [50.591267188664666]
In this study, 18 non-invasive features (age, gender, left ventricular ejection fraction and 15 obtained from HRV) of 243 subjects were used to train and validate a series of several ANN.
The best result was obtained using 7 input parameters and 7 hidden nodes with an accuracy of 98.9% and 82% for the training and validation dataset.
arXiv Detail & Related papers (2020-10-29T19:14:41Z) - Dual-Sampling Attention Network for Diagnosis of COVID-19 from Community
Acquired Pneumonia [46.521323145636906]
We develop a dual-sampling attention network to automatically diagnose COVID-19 from the community acquired pneumonia (CAP) in chest computed tomography (CT)
In particular, we propose a novel online attention module with a 3D convolutional network (CNN) to focus on the infection regions in lungs when making decisions of diagnoses.
Our algorithm can identify the COVID-19 images with the area under the receiver operating characteristic curve (AUC) value of 0.944, accuracy of 87.5%, sensitivity of 86.9%, specificity of 90.1%, and F1-score of 82.0%.
arXiv Detail & Related papers (2020-05-06T09:56:51Z) - A Global Benchmark of Algorithms for Segmenting Late Gadolinium-Enhanced
Cardiac Magnetic Resonance Imaging [90.29017019187282]
" 2018 Left Atrium Challenge" using 154 3D LGE-MRIs, currently the world's largest cardiac LGE-MRI dataset.
Analyse of the submitted algorithms using technical and biological metrics was performed.
Results show the top method achieved a dice score of 93.2% and a mean surface to a surface distance of 0.7 mm.
arXiv Detail & Related papers (2020-04-26T08:49:17Z) - Opportunities and Challenges of Deep Learning Methods for
Electrocardiogram Data: A Systematic Review [62.490310870300746]
The electrocardiogram (ECG) is one of the most commonly used diagnostic tools in medicine and healthcare.
Deep learning methods have achieved promising results on predictive healthcare tasks using ECG signals.
This paper presents a systematic review of deep learning methods for ECG data from both modeling and application perspectives.
arXiv Detail & Related papers (2019-12-28T02:44:29Z)
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.