深度学习在心音分析中的应用:从技术到临床应用

Health data science Pub Date : 2024-10-09 eCollection Date: 2024-01-01 DOI:10.34133/hds.0182
Qinghao Zhao, Shijia Geng, Boya Wang, Yutong Sun, Wenchang Nie, Baochen Bai, Chao Yu, Feng Zhang, Gongzheng Tang, Deyun Zhang, Yuxi Zhou, Jian Liu, Shenda Hong
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引用次数: 0

摘要

重要性:心音听诊是临床上常规使用的体格检查方法,用于识别潜在的心脏异常。然而,准确判读心音需要专门的培训和经验,这限制了其通用性。深度学习是机器学习的一个子集,包括训练人工神经网络从大型数据集中学习,并执行具有复杂模式的复杂任务。在过去十年中,深度学习已成功应用于心音分析,取得了显著成果,并积累了大量心音数据用于模型训练。虽然有多篇综述总结了用于心音分析的深度学习算法,但缺乏对可用心音数据和临床应用的全面总结。亮点:本综述将梳理常用的心音数据集,介绍心音分析和深度学习的基本原理和最新技术,总结深度学习在心音分析中的当前应用及其局限性和未来改进领域。结论:将深度学习融入心音分析是临床实践的一大进步。心音数据集的不断增加和深度学习技术的不断发展有助于这些模型的改进和更广泛的临床应用。然而,要解决现有的挑战并完善这些技术以更广泛地应用于临床,还需要持续不断的研究。
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Deep Learning in Heart Sound Analysis: From Techniques to Clinical Applications.

Importance: Heart sound auscultation is a routinely used physical examination in clinical practice to identify potential cardiac abnormalities. However, accurate interpretation of heart sounds requires specialized training and experience, which limits its generalizability. Deep learning, a subset of machine learning, involves training artificial neural networks to learn from large datasets and perform complex tasks with intricate patterns. Over the past decade, deep learning has been successfully applied to heart sound analysis, achieving remarkable results and accumulating substantial heart sound data for model training. Although several reviews have summarized deep learning algorithms for heart sound analysis, there is a lack of comprehensive summaries regarding the available heart sound data and the clinical applications. Highlights: This review will compile the commonly used heart sound datasets, introduce the fundamentals and state-of-the-art techniques in heart sound analysis and deep learning, and summarize the current applications of deep learning for heart sound analysis, along with their limitations and areas for future improvement. Conclusions: The integration of deep learning into heart sound analysis represents a significant advancement in clinical practice. The growing availability of heart sound datasets and the continuous development of deep learning techniques contribute to the improvement and broader clinical adoption of these models. However, ongoing research is needed to address existing challenges and refine these technologies for broader clinical use.

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