深度学习在个性化心电图诊断中的进展:一项针对患者间可变性和泛化约束的系统综述。

IF 10.7 1区 生物学 Q1 BIOPHYSICS
Biosensors and Bioelectronics Pub Date : 2025-03-01 Epub Date: 2024-12-16 DOI:10.1016/j.bios.2024.117073
Cheng Ding, Tianliang Yao, Chenwei Wu, Jianyuan Ni
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引用次数: 0

摘要

心电图(ECG)仍然是心脏诊断的基本工具,但其解释传统上依赖于心脏病专家的专业知识。深度学习已经彻底改变了医疗数据分析,特别是在心电图诊断方面。然而,患者间可变性的挑战限制了在人群数据集上训练的ECG-AI模型的通用性,通常会降低特定患者或群体的准确性。虽然之前的研究已经开发了各种深度学习技术来解决这个问题,但这些进步主要集中在通用模型上,而不是针对个体患者的需求进行定制。采用系统综述方法,综合检索四大数据库(PubMed、IEEE Xplore、Web of Science和b谷歌Scholar),采用严格的两步筛选流程,对2020年至2024年的研究进行了细致筛选和分析,以确保方法质量和相关性,最终获得112项研究进行综合分析。这篇综述提供了一个独特的视角,系统地研究了最近为个性化心电图诊断设计的深度学习方法,强调了解决患者特异性变异性的模型。使用严格的方法来选择和分析相关研究,我们提供了先进技术的深入概述,包括迁移学习,生成对抗网络,元学习和领域适应。该综述还调查了这些方法的局限性,例如平衡泛化与患者特异性和解决数据隐私问题。通过识别这些挑战并概述未来的发展方向,本综述强调了深度学习在临床实践中对心电图诊断的变革潜力。我们的发现强调了一条通向更准确、更高效和以患者为中心的心脏诊断的道路,为未来的个性化护理创新奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advances in deep learning for personalized ECG diagnostics: A systematic review addressing inter-patient variability and generalization constraints.

The Electrocardiogram (ECG) remains a fundamental tool in cardiac diagnostics, yet its interpretation has traditionally relied on cardiologists' expertise. Deep learning has revolutionized medical data analysis, especially within ECG diagnostics. However, the challenge of inter-patient variability limits the generalizability of ECG-AI models trained on population datasets, often reducing accuracy for specific patients or groups. While prior studies have developed various deep-learning techniques to address this issue, these advancements largely focus on universal models without tailoring to individual patient needs. A systematic review methodology was employed, comprehensively searching four major databases (PubMed, IEEE Xplore, Web of Science, and Google Scholar), meticulously screening and analyzing studies from 2020 to 2024 using a rigorous two-step selection process to ensure methodological quality and relevance, ultimately yielding 112 studies for comprehensive analysis. This review offers a unique perspective by systematically examining recent deep-learning approaches designed explicitly for personalized ECG diagnosis, emphasizing models that address patient-specific variability. Using a rigorous methodology for selecting and analyzing relevant studies, we provide an in-depth overview of advanced techniques, including transfer learning, generative adversarial networks, meta-learning, and domain adaptation. The review also investigates the limitations of these methods, such as balancing generalization with patient specificity and addressing data privacy concerns. By identifying these challenges and outlining future directions, this review highlights the transformative potential of deep learning for ECG diag-nostics in clinical practice. Our findings underscore a pathway toward more accurate, efficient, and patient-centered cardiac diagnostics, setting a foundation for future personalized care innovations.

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来源期刊
Biosensors and Bioelectronics
Biosensors and Bioelectronics 工程技术-电化学
CiteScore
20.80
自引率
7.10%
发文量
1006
审稿时长
29 days
期刊介绍: Biosensors & Bioelectronics, along with its open access companion journal Biosensors & Bioelectronics: X, is the leading international publication in the field of biosensors and bioelectronics. It covers research, design, development, and application of biosensors, which are analytical devices incorporating biological materials with physicochemical transducers. These devices, including sensors, DNA chips, electronic noses, and lab-on-a-chip, produce digital signals proportional to specific analytes. Examples include immunosensors and enzyme-based biosensors, applied in various fields such as medicine, environmental monitoring, and food industry. The journal also focuses on molecular and supramolecular structures for enhancing device performance.
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