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心脏音信号的自动化分析在儿童结构性心脏病筛查中的应用。

Automated analysis of heart sound signals in screening for structural heart disease in children.

机构信息

Tampere Center for Child, Adolescent and Maternal Health Research, Faculty of Medicine and Health Technology, Tampere University, Tampere, Finland.

Department of Pediatrics, Tampere University Hospital, Wellbeing Services County of Pirkanmaa, Tampere, Finland.

出版信息

Eur J Pediatr. 2024 Nov;183(11):4951-4958. doi: 10.1007/s00431-024-05773-3. Epub 2024 Sep 21.

Abstract

UNLABELLED

Our aim was to investigate the ability of an artificial intelligence (AI)-based algorithm to differentiate innocent murmurs from pathologic ones. An AI-based algorithm was developed using heart sound recordings collected from 1413 patients at the five university hospitals in Finland. The corresponding heart condition was verified using echocardiography. In the second phase of the study, patients referred to Helsinki New Children's Hospital due to a heart murmur were prospectively assessed with the algorithm, and then the results were compared with echocardiography findings. Ninety-eight children were included in this prospective study. The algorithm classified 72 (73%) of the heart sounds as normal and 26 (27%) as abnormal. Echocardiography was normal in 63 (64%) children and abnormal in 35 (36%). The algorithm recognized abnormal heart sounds in 24 of 35 children with abnormal echocardiography and normal heart sounds with normal echocardiography in 61 of 63 children. When the murmur was audible, the sensitivity and specificity of the algorithm were 83% (24/29) (confidence interval (CI) 64-94%) and 97% (59/61) (CI 89-100%), respectively.

CONCLUSION

The algorithm was able to distinguish murmurs associated with structural cardiac anomalies from innocent murmurs with good sensitivity and specificity. The algorithm was unable to identify heart defects that did not cause a murmur. Further research is needed on the use of the algorithm in screening for heart murmurs in primary health care.

WHAT IS KNOWN

• Innocent murmurs are common in children, while the incidence of moderate or severe congenital heart defects is low. Auscultation plays a significant role in assessing the need for further examinations of the murmur. The ability to differentiate innocent murmurs from those related to congenital heart defects requires clinical experience on the part of general practitioners. No AI-based auscultation algorithms have been systematically implemented in primary health care.

WHAT IS NEW

• We developed an AI-based algorithm using a large dataset of sound samples validated by echocardiography. The algorithm performed well in recognizing pathological and innocent murmurs in children from different age groups.

摘要

目的

探究人工智能(AI)算法区分生理性与病理性心脏杂音的能力。

方法

采用 AI 算法对芬兰五所大学附属医院的 1413 例患者的心音记录进行分析。通过超声心动图验证相应的心脏状况。在研究的第二阶段,对因心脏杂音而转至赫尔辛基新儿童医院的患者前瞻性应用该算法,并将结果与超声心动图结果进行比较。

结果

本前瞻性研究共纳入 98 例患儿。该算法将 72 例(73%)心音分类为正常,26 例(27%)为异常。63 例(64%)患儿超声心动图正常,35 例(36%)异常。该算法在 35 例超声心动图异常的患儿中识别出 24 例异常心音,在 63 例超声心动图正常的患儿中识别出 61 例正常心音。当可闻及杂音时,算法的灵敏度和特异度分别为 83%(24/29)(置信区间[CI]:64-94%)和 97%(59/61)(CI:89-100%)。

结论

该算法能够区分与结构性心脏异常相关的杂音与生理性杂音,具有良好的灵敏度和特异度。该算法无法识别不引起杂音的心脏缺陷。需要进一步研究该算法在初级保健中心筛查心脏杂音中的应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/730a/11473634/a9c88e28a5d3/431_2024_5773_Fig1_HTML.jpg

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