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Rapid detection and interpretation of heart murmurs using phonocardiograms, transfer learning and explainable artificial intelligence.利用心音图、迁移学习和可解释人工智能快速检测和解读心脏杂音。
Health Inf Sci Syst. 2024 Aug 24;12(1):43. doi: 10.1007/s13755-024-00302-w. eCollection 2024 Dec.
3
Murmur identification and outcome prediction in phonocardiograms using deep features based on Stockwell transform.基于 Stockwell 变换的深度特征在心音图中杂音识别和预后预测。
Sci Rep. 2024 Mar 31;14(1):7592. doi: 10.1038/s41598-024-58274-6.
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Cardiac murmur grading and risk analysis of cardiac diseases based on adaptable heterogeneous-modality multi-task learning.基于自适应异构模态多任务学习的心脏杂音分级与心脏病风险分析。
Health Inf Sci Syst. 2023 Dec 1;12(1):2. doi: 10.1007/s13755-023-00249-4. eCollection 2024 Dec.

本文引用的文献

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An open-access simultaneous electrocardiogram and phonocardiogram database.一个开放获取的同时心电图和心音图数据库。
Physiol Meas. 2024 May 15;45(5). doi: 10.1088/1361-6579/ad43af.
2
Heart murmur detection from phonocardiogram recordings: The George B. Moody PhysioNet Challenge 2022.从心音图记录中检测心脏杂音:2022年乔治·B·穆迪生理信号挑战赛
PLOS Digit Health. 2023 Sep 11;2(9):e0000324. doi: 10.1371/journal.pdig.0000324. eCollection 2023 Sep.
3
The CirCor DigiScope Dataset: From Murmur Detection to Murmur Classification.CirCor DigiScope 数据集:从杂音检测到杂音分类。
IEEE J Biomed Health Inform. 2022 Jun;26(6):2524-2535. doi: 10.1109/JBHI.2021.3137048. Epub 2022 Jun 3.
4
Deep Learning Methods for Heart Sounds Classification: A Systematic Review.用于心音分类的深度学习方法:一项系统综述。
Entropy (Basel). 2021 May 26;23(6):667. doi: 10.3390/e23060667.
5
Deep Learning Algorithm for Automated Cardiac Murmur Detection via a Digital Stethoscope Platform.基于数字听诊器平台的心脏杂音自动检测深度学习算法
J Am Heart Assoc. 2021 May 4;10(9):e019905. doi: 10.1161/JAHA.120.019905. Epub 2021 Apr 26.
6
Machine Listening for Heart Status Monitoring: Introducing and Benchmarking HSS - the Heart Sounds Shenzhen Corpus.用于心脏状态监测的机器听觉:介绍并评估HSS——深圳心音语料库
IEEE J Biomed Health Inform. 2019 Nov 22. doi: 10.1109/JBHI.2019.2955281.
7
Heartbeat Sound Signal Classification Using Deep Learning.基于深度学习的心跳声信号分类。
Sensors (Basel). 2019 Nov 5;19(21):4819. doi: 10.3390/s19214819.
8
Murmur grading in humans and animals: past and present.人类和动物的杂音分级:过去与现在。
J Vet Cardiol. 2018 Aug;20(4):223-233. doi: 10.1016/j.jvc.2018.06.001. Epub 2018 Jul 13.
9
Murmur intensity in adult dogs with pulmonic and subaortic stenosis reflects disease severity.患有肺动脉瓣狭窄和主动脉瓣下狭窄的成年犬的杂音强度反映了疾病的严重程度。
J Small Anim Pract. 2018 Mar;59(3):161-166. doi: 10.1111/jsap.12760. Epub 2017 Oct 11.
10
Recent advances in heart sound analysis.心音分析的最新进展。
Physiol Meas. 2017 Aug 1;38(8):E10-E25. doi: 10.1088/1361-6579/aa7ec8.

超越心脏杂音检测:心音图自动杂音分级。

Beyond Heart Murmur Detection: Automatic Murmur Grading From Phonocardiogram.

出版信息

IEEE J Biomed Health Inform. 2023 Aug;27(8):3856-3866. doi: 10.1109/JBHI.2023.3275039. Epub 2023 Aug 8.

DOI:10.1109/JBHI.2023.3275039
PMID:37163396
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10482086/
Abstract

OBJECTIVE

Murmurs are abnormal heart sounds, identified by experts through cardiac auscultation. The murmur grade, a quantitative measure of the murmur intensity, is strongly correlated with the patient's clinical condition. This work aims to estimate each patient's murmur grade (i.e., absent, soft, loud) from multiple auscultation location phonocardiograms (PCGs) of a large population of pediatric patients from a low-resource rural area.

METHODS

The Mel spectrogram representation of each PCG recording is given to an ensemble of 15 convolutional residual neural networks with channel-wise attention mechanisms to classify each PCG recording. The final murmur grade for each patient is derived based on the proposed decision rule and considering all estimated labels for available recordings. The proposed method is cross-validated on a dataset consisting of 3456 PCG recordings from 1007 patients using a stratified ten-fold cross-validation. Additionally, the method was tested on a hidden test set comprised of 1538 PCG recordings from 442 patients.

RESULTS

The overall cross-validation performances for patient-level murmur gradings are 86.3% and 81.6% in terms of the unweighted average of sensitivities and F1-scores, respectively. The sensitivities (and F1-scores) for absent, soft, and loud murmurs are 90.7% (93.6%), 75.8% (66.8%), and 92.3% (84.2%), respectively. On the test set, the algorithm achieves an unweighted average of sensitivities of 80.4% and an F1-score of 75.8%.

CONCLUSIONS

This study provides a potential approach for algorithmic pre-screening in low-resource settings with relatively high expert screening costs.

SIGNIFICANCE

The proposed method represents a significant step beyond detection of murmurs, providing characterization of intensity, which may provide an enhanced classification of clinical outcomes.

摘要

目的

杂音是一种异常的心脏声音,通过心脏听诊由专家识别。杂音等级是衡量杂音强度的定量指标,与患者的临床状况密切相关。本研究旨在从低资源农村地区大量儿科患者的多个听诊部位心音图(PCG)中估计每位患者的杂音等级(即无、柔和、响亮)。

方法

每个 PCG 记录的梅尔频谱图表示都提供给 15 个具有通道注意机制的卷积残差神经网络的集合,以对每个 PCG 记录进行分类。根据提出的决策规则,考虑所有可用记录的估计标签,得出每个患者的最终杂音等级。该方法在一个由 1007 名患者的 3456 个 PCG 记录组成的数据集上使用分层十折交叉验证进行交叉验证。此外,该方法还在由 442 名患者的 1538 个 PCG 记录组成的隐藏测试集上进行了测试。

结果

在患者水平的杂音分级方面,总体交叉验证性能分别为敏感性和 F1 评分的无加权平均的 86.3%和 81.6%。无杂音、柔和杂音和响亮杂音的敏感性(和 F1 评分)分别为 90.7%(93.6%)、75.8%(66.8%)和 92.3%(84.2%)。在测试集上,该算法的无加权平均敏感性为 80.4%,F1 得分为 75.8%。

结论

本研究为高专家筛查成本的低资源环境中的算法预筛查提供了一种潜在方法。

意义

该方法代表了一种超越杂音检测的重大步骤,提供了强度特征描述,这可能为临床结果的分类提供增强。