Makimoto Hisaki, Shiraga Takeru, Kohlmann Benita, Magnisali Christofori Eleni, Gerguri Shqipe, Motoyama Nobuaki, Clasen Lukas, Bejinariu Alexandru, Klein Kathrin, Makimoto Asuka, Jung Christian, Westenfeld Ralf, Zeus Tobias, Kelm Malte
Division of Cardiology, Pulmonology and Vascular Medicine, Medical Faculty, Heinrich-Heine-University Düsseldorf, Düsseldorf, Germany.
Mitsubishi Electric Inc., Kamakura, Japan.
Eur Heart J Digit Health. 2022 May 16;3(2):141-152. doi: 10.1093/ehjdh/ztac029. eCollection 2022 Jun.
The medical need for screening of aortic valve stenosis (AS), which leads to timely and appropriate medical intervention, is rapidly increasing because of the high prevalence of AS in elderly population. This study aimed to establish a screening method using understandable artificial intelligence (AI) to detect severe AS based on heart sounds and to package the built AI into a smartphone application.
In this diagnostic accuracy study, we developed multiple convolutional neural networks (CNNs) using a modified stratified five-fold cross-validation to detect severe AS in electronic heart sound data recorded at three auscultation locations. Clinical validation was performed with the developed smartphone application in an independent cohort (model establishment: = 556, clinical validation: = 132). Our ensemble technique integrating the heart sounds from multiple auscultation locations increased the detection accuracy of CNN model by compensating detection errors. The established smartphone application achieved a sensitivity, specificity, accuracy, and F1 value of 97.6% (41/42), 94.4% (85/90), 95.7% (126/132), and 0.93, respectively, which were higher compared with the consensus of cardiologists (81.0%, 93.3%, 89.4%, and 0.829, respectively), implying a good utility for severe AS screening. The Gradient-based Class Activation Map demonstrated that the built AIs could focus on specific heart sounds to differentiate the severity of AS.
Our CNN model combining multiple auscultation locations and exported on smartphone application could efficiently identify severe AS based on heart sounds. The visual explanation of AI decisions for heart sounds was interpretable. These technologies may support medical training and remote consultations.
由于老年人群中主动脉瓣狭窄(AS)的高患病率,对AS进行筛查以实现及时、恰当的医学干预的医疗需求正在迅速增加。本研究旨在建立一种使用易懂的人工智能(AI)基于心音检测重度AS的筛查方法,并将构建好的AI打包到智能手机应用程序中。
在这项诊断准确性研究中,我们使用改良的分层五折交叉验证开发了多个卷积神经网络(CNN),以检测在三个听诊位置记录的电子心音数据中的重度AS。在一个独立队列中使用开发的智能手机应用程序进行了临床验证(模型建立:n = 556,临床验证:n = 132)。我们整合多个听诊位置心音的集成技术通过补偿检测误差提高了CNN模型的检测准确性。所建立的智能手机应用程序的灵敏度、特异度、准确率和F1值分别为97.6%(41/42)、94.4%(85/90)、95.7%(126/132)和0.93,与心脏病专家的共识(分别为81.0%、93.3%、89.4%和0.829)相比更高,这意味着对重度AS筛查具有良好的实用性。基于梯度的类激活映射表明,构建的AI可以专注于特定的心音以区分AS的严重程度。
我们结合多个听诊位置并在智能手机应用程序上导出的CNN模型可以基于心音有效地识别重度AS。AI对心音决策的可视化解释是可解释的。这些技术可能支持医学培训和远程会诊。