Department of Electrical and Computer Engineering, Abu Dhabi University, Abu Dhabi, UAE.
Jordan University of Science and Technology, Department of Biomedical Engineering, Irbid, Jordan.
Comput Methods Programs Biomed. 2021 Mar;200:105940. doi: 10.1016/j.cmpb.2021.105940. Epub 2021 Jan 17.
Valvular heart diseases (VHD) are one of the major causes of cardiovascular diseases that are having high mortality rates worldwide. The early diagnosis of VHD prevents the development of cardiac diseases and allows for optimum medication. Despite of the ability of current gold standards in identifying VHD, they still lack the required accuracy and thus, several cases go misdiagnosed. In this vein, a study is conducted herein to investigate the efficiency of deep learning models in identifying VHD through phonocardiography (PCG) recordings. PCG heart sounds were obtained from an open-access data-set representing normal heart sounds along with four major VHD; namely aortic stenosis (AS), mitral stenosis (MS), mitral regurgitation (MR), and mitral valve prolapse (MVP). A total of 1,000 patients were involved in the study with 200 recordings for each class. All recordings were initially trimmed to have 9,600 samples ensuring their coverage of at least 1 cardiac cycle. In addition, they were pre-processed by applying maximal overlap discrete wavelet transform (MODWT) smoothing algorithm and z-score normalization. The neural network architecture was designed to reduce the complexity often found in literature and consisted of a combination of convolutional neural networks (CNN) and recurrent neural networks (RNN) based on Bi-directional long short-term memory (BiLSTM). The model was trained and tested following a k-fold cross-validation scheme of 10-folds utilizing the CNN-BiLSTM network as well as the CNN and BiLSTM, individually. The highest performance was achieved using the CNN-BiLSTM network with an overall Cohen's kappa, accuracy, sensitivity, and specificity of 97.87%, 99.32%, 98.30%, and 99.58%, respectively. In addition, the model had an average area under the curve (AUC) of 0.998. Furthermore, the performance of the model was assessed on the PhysioNet/Computing in Cardiology 2016 challenge data-set and reached an overall accuracy of 87.31% with an AUC of 0.900. This study paves the way towards implementing deep learning models in VHD identification under clinical settings to assist clinicians in decision making and prevent many cases from cardiac abnormalities development.
瓣膜性心脏病(VHD)是全球心血管疾病高死亡率的主要原因之一。VHD 的早期诊断可预防心脏疾病的发展,并实现最佳药物治疗。尽管当前的黄金标准在识别 VHD 方面具有能力,但它们仍然缺乏所需的准确性,因此,有许多病例被误诊。有鉴于此,本文开展了一项研究,旨在通过心音图(PCG)记录探讨深度学习模型在识别 VHD 中的效率。PCG 心音取自一个开放获取的数据集中,代表正常心音以及四种主要的 VHD:主动脉瓣狭窄(AS)、二尖瓣狭窄(MS)、二尖瓣反流(MR)和二尖瓣脱垂(MVP)。共有 1000 名患者参与了研究,每个类别有 200 个记录。所有记录最初都被修剪到 9600 个样本,以确保至少覆盖一个心动周期。此外,还通过应用最大重叠离散小波变换(MODWT)平滑算法和 z 分数归一化对其进行预处理。所设计的神经网络架构旨在降低文献中经常出现的复杂性,它由卷积神经网络(CNN)和基于双向长短期记忆(BiLSTM)的递归神经网络(RNN)的组合组成。该模型通过使用 CNN-BiLSTM 网络以及 CNN 和 BiLSTM 分别进行的 10 折交叉验证方案进行训练和测试。使用 CNN-BiLSTM 网络获得了最高的性能,总体 Cohen's kappa、准确性、敏感性和特异性分别为 97.87%、99.32%、98.30%和 99.58%。此外,该模型的平均曲线下面积(AUC)为 0.998。此外,还在 PhysioNet/Computing in Cardiology 2016 挑战赛数据集上评估了模型的性能,达到了 87.31%的总体准确性和 0.900 的 AUC。这项研究为在临床环境中实施 VHD 识别的深度学习模型铺平了道路,以帮助临床医生做出决策,并防止许多病例出现心脏异常。