Wu Zijian, Ge Zhenyi, Ge Zhengdan, Xing Yumeng, Zhao Weipeng, Dong Lili, Wang Yongshi, Kong Dehong, Hu Chunqiang, Liang Yixiu, Chen Haiyan, Xue Wufeng, Pan Cuizhen, Ni Dong, Shu Xianhong
National-Regional Key Technology Engineering Laboratory for Medical Ultrasound, Guangdong Key Laboratory of Biomedical Measurements and Ultrasound Imaging, School of Biomedical Engineering, Shenzhen University Medical School, Shenzhen University, 1066 Xueyuan Road, Shenzhen 518060, China.
Medical Ultrasound Image Computing (MUSIC) Laboratory, Shenzhen University, 1066 Xueyuan Road, Shenzhen 518037, China.
Eur Heart J Imaging Methods Pract. 2024 Oct 28;2(4):qyae086. doi: 10.1093/ehjimp/qyae086. eCollection 2024 Oct.
To address the limitations of traditional diagnostic methods for mitral valve prolapse (MVP), specifically fibroelastic deficiency (FED) and Barlow's disease (BD), by introducing an automated diagnostic approach utilizing multi-view echocardiographic sequences and deep learning.
An echocardiographic data set, collected from Zhongshan Hospital, Fudan University, containing apical 2 chambers (A2C), apical 3 chambers (A3C), and apical 4 chambers (A4C) views, was employed to train the deep learning models. We separately trained view-specific and view-agnostic deep neural network models, which were denoted as MVP-VS and MVP view-agonistic (VA), for MVP diagnosis. Diagnostic accuracy, precision, sensitivity, F1-score, and specificity were evaluated for both BD and FED phenotypes. MVP-VS demonstrated an overall diagnostic accuracy of 0.94 for MVP. In the context of BD diagnosis, precision, sensitivity, F1-score, and specificity were 0.83, 1.00, 0.90, and 0.92, respectively. For FED diagnosis, the metrics were 1.00, 0.83, 0.91, and 1.00. MVP-VA exhibited an overall accuracy of 0.95, with BD-specific metrics of 0.85, 1.00, 0.92, and 0.94 and FED-specific metrics of 1.00, 0.83, 0.91, and 1.00. In particular, the MVP-VA model using mixed views for training demonstrated efficient diagnostic performance, eliminating the need for repeated development of MVP-VS models and improving the efficiency of the clinical pipeline by using arbitrary views in the deep learning model.
This study pioneers the integration of artificial intelligence into MVP diagnosis and demonstrates the effectiveness of deep neural networks in overcoming the challenges of traditional diagnostic methods. The efficiency and accuracy of the proposed automated approach suggest its potential for clinical applications in the diagnosis of valvular heart disease.
通过引入利用多视图超声心动图序列和深度学习的自动诊断方法,解决二尖瓣脱垂(MVP)传统诊断方法的局限性,特别是纤维弹性组织缺乏(FED)和巴洛病(BD)的诊断局限性。
使用从复旦大学附属中山医院收集的包含心尖二腔(A2C)、心尖三腔(A3C)和心尖四腔(A4C)视图的超声心动图数据集来训练深度学习模型。我们分别训练了用于MVP诊断的视图特定和视图无关的深度神经网络模型,分别表示为MVP-VS和MVP视图无关(VA)。对BD和FED表型评估了诊断准确性、精确性、敏感性、F1分数和特异性。MVP-VS对MVP的总体诊断准确性为0.94。在BD诊断中,精确性、敏感性、F1分数和特异性分别为0.83、1.00、0.90和0.92。对于FED诊断,这些指标分别为1.00、0.83、0.91和1.00。MVP-VA的总体准确性为0.95,BD特异性指标为0.85、1.00、0.92和0.94,FED特异性指标为1.00、0.83、0.91和1.00。特别是,使用混合视图进行训练的MVP-VA模型表现出高效的诊断性能,无需重复开发MVP-VS模型,并通过在深度学习模型中使用任意视图提高了临床流程的效率。
本研究率先将人工智能整合到MVP诊断中,并证明了深度神经网络在克服传统诊断方法挑战方面的有效性。所提出的自动方法的效率和准确性表明其在瓣膜性心脏病诊断临床应用中的潜力。