Department of Biology, Lafayette College, Easton, PA 18042, USA; Department of Computer Science, Lafayette College, Easton, PA 18042, USA.
Department of Biology, Lafayette College, Easton, PA 18042, USA.
Artif Intell Med. 2022 Aug;130:102342. doi: 10.1016/j.artmed.2022.102342. Epub 2022 Jun 30.
Stroke is the second leading cause of death globally after ischemic heart disease, also a risk factor of cardioembolic stroke. Thus, we postulate that heartbeats encapsulate vital signals related to stroke. With the rapid advancement of deep neural networks (DNNs), it emerges as a powerful tool to decipher intriguing heartbeat patterns associated with post-stroke patients. In this study, we propose the use of a one-dimensional convolutional network (1D-CNN) architecture to build a binary classifier that distinguishes electrocardiograms (ECGs) between the post-stroke and the stroke-free. We have built two 1D-CNNs that were used to identify distinct patterns from an openly accessible ECG dataset collected from elderly post-stroke patients. In addition to prediction accuracy, which is the primary focus of existing ECG deep neural network methods, we have utilized Gradient-weighted Class Activation Mapping (GRAD-CAM) to facilitate model interpretation by uncovering subtle ECG patterns captured by our model. Our stroke model has achieved ~90 % accuracy and 0.95 area under the Receiver Operating Characteristic curve. Findings suggest that the core PQRST complex alone is important but not sufficient to differentiate the post-stroke and the stroke-free. In conclusion, we have developed an accurate stroke model using the latest DNN method. Importantly, our work has illustrated an approach to enhance model interpretation, overcoming the black-box issue confronting DNNs, fostering higher user confidence and adoption of DNNs in medicine.
中风是全球第二大致死原因,仅次于缺血性心脏病,也是心源性中风的一个危险因素。因此,我们推测心跳中包含与中风相关的重要信号。随着深度神经网络(DNN)的快速发展,它已成为一种强大的工具,可以揭示与中风后患者相关的有趣心跳模式。在这项研究中,我们提出使用一维卷积网络(1D-CNN)架构来构建一个二进制分类器,以区分中风患者和非中风患者的心电图(ECG)。我们构建了两个 1D-CNN,用于从公开可访问的从老年中风后患者中收集的 ECG 数据集识别不同的模式。除了现有 ECG 深度神经网络方法主要关注的预测准确性之外,我们还利用梯度加权类激活映射(GRAD-CAM)通过揭示我们模型捕捉到的微妙 ECG 模式来促进模型解释。我们的中风模型的准确率约为 90%,接收器操作特征曲线下的面积为 0.95。研究结果表明,核心 PQRST 复合体本身很重要,但不足以区分中风患者和非中风患者。总之,我们使用最新的 DNN 方法开发了一个准确的中风模型。重要的是,我们的工作展示了一种增强模型解释的方法,克服了 DNN 面临的黑盒问题,提高了用户对 DNN 在医学中的信心和采用率。