High-Throughput Deep Learning Detection of Mitral Regurgitation.

IF 35.5 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS Circulation Pub Date : 2024-09-17 Epub Date: 2024-08-12 DOI:10.1161/CIRCULATIONAHA.124.069047
Amey Vrudhula, Grant Duffy, Milos Vukadinovic, David Liang, Susan Cheng, David Ouyang
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Abstract

Background: Diagnosis of mitral regurgitation (MR) requires careful evaluation by echocardiography with Doppler imaging. This study presents the development and validation of a fully automated deep learning pipeline for identifying apical 4-chamber view videos with color Doppler echocardiography and detecting clinically significant (moderate or severe) MR from transthoracic echocardiograms.

Methods: A total of 58 614 transthoracic echocardiograms (2 587 538 videos) from Cedars-Sinai Medical Center were used to develop and test an automated pipeline to identify apical 4-chamber view videos with color Doppler across the mitral valve and then assess MR severity. The model was tested internally on a test set of 1800 studies (80 833 videos) from Cedars-Sinai Medical Center and externally evaluated in a geographically distinct cohort of 915 studies (46 890 videos) from Stanford Healthcare.

Results: In the held-out Cedars-Sinai Medical Center test set, the view classifier demonstrated an area under the curve (AUC) of 0.998 (0.998-0.999) and correctly identified 3452 of 3539 echocardiography videos as having color Doppler information across the mitral valve (sensitivity of 0.975 [0.968-0.982] and specificity of 0.999 [0.999-0.999] compared with manually curated videos). In the external test cohort from Stanford Healthcare, the view classifier correctly identified 1051 of 1055 manually curated videos with color Doppler information across the mitral valve (sensitivity of 0.996 [0.990-1.000] and specificity of 0.999 [0.999-0.999]). In the Cedars-Sinai Medical Center test cohort, MR moderate or greater in severity was detected with an AUC of 0.916 (0.899-0.932) and severe MR was detected with an AUC of 0.934 (0.913-0.953). In the Stanford Healthcare test cohort, the model detected MR moderate or greater in severity with an AUC of 0.951 (0.924-0.973) and severe MR with an AUC of 0.969 (0.946-0.987).

Conclusions: In this study, a novel automated pipeline for identifying clinically significant MR from full transthoracic echocardiography studies demonstrated excellent performance across large numbers of studies and across multiple institutions. Such an approach has the potential for automated screening and surveillance of MR.

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二尖瓣反流的高通量深度学习检测。
背景:二尖瓣反流(MR)的诊断需要通过超声心动图和多普勒成像进行仔细评估。本研究介绍了一种全自动深度学习管道的开发和验证情况,该管道可通过彩色多普勒超声心动图识别心尖四腔切面视频,并从经胸超声心动图中检测出具有临床意义(中度或重度)的二尖瓣反流:雪松-西奈医疗中心共采集了 58 614 张经胸超声心动图(2 587 538 个视频),用于开发和测试一个自动流水线,该流水线可通过二尖瓣彩色多普勒识别心尖四腔切面视频,然后评估 MR 的严重程度。该模型在雪松-西奈医疗中心的 1800 项研究(80 833 个视频)测试集上进行了内部测试,并在斯坦福医疗保健公司的 915 项研究(46 890 个视频)地理位置不同的队列中进行了外部评估:在Cedars-Sinai医疗中心的测试集中,视图分类器的曲线下面积(AUC)为0.998(0.998-0.999),并正确识别了3539个超声心动图视频中的3452个视频中的二尖瓣彩色多普勒信息(与人工编辑的视频相比,灵敏度为0.975 [0.968-0.982],特异性为0.999 [0.999-0.999])。在斯坦福医疗集团的外部测试队列中,视图分类器正确识别了 1055 个手动策划视频中的 1051 个二尖瓣彩色多普勒信息(灵敏度为 0.996 [0.990-1.000],特异性为 0.999 [0.999-0.999])。在雪松西奈医疗中心的测试队列中,检测出中度或更严重的 MR 的 AUC 为 0.916(0.899-0.932),检测出重度 MR 的 AUC 为 0.934(0.913-0.953)。在斯坦福医疗测试队列中,该模型检测出中度或更严重的MR的AUC为0.951(0.924-0.973),检测出重度MR的AUC为0.969(0.946-0.987):在这项研究中,一种新型自动流水线可从全经胸超声心动图研究中识别出具有临床意义的 MR,该流水线在大量研究和多个机构中表现出了卓越的性能。这种方法具有自动筛查和监测 MR 的潜力。
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来源期刊
Circulation
Circulation 医学-外周血管病
CiteScore
45.70
自引率
2.10%
发文量
1473
审稿时长
2 months
期刊介绍: Circulation is a platform that publishes a diverse range of content related to cardiovascular health and disease. This includes original research manuscripts, review articles, and other contributions spanning observational studies, clinical trials, epidemiology, health services, outcomes studies, and advancements in basic and translational research. The journal serves as a vital resource for professionals and researchers in the field of cardiovascular health, providing a comprehensive platform for disseminating knowledge and fostering advancements in the understanding and management of cardiovascular issues.
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