Nowadays, an increasing number of people are being diagnosed with cardiovascular diseases (CVDs), the leading cause of death globally. The gold standard for identifying these heart problems is via electrocardiogram (ECG). The standard 12-lead ECG is widely used in clinical practice and the majority of current research. However, using a lower number of leads can make ECG more pervasive as it can be integrated with portable or wearable devices. This article introduces two novel techniques to improve the performance of the current deep learning system for 3-lead ECG classification, making it comparable with models that are trained using standard 12-lead ECG. Specifically, we propose a multi-task learning scheme in the form of the number of heartbeats regression and an effective mechanism to integrate patient demographic data into the system. With these two advancements, we got classification performance in terms of F1 scores of 0.9796 and 0.8140 on two large-scale ECG datasets, i.e., Chapman and CPSC-2018, respectively, which surpassed current state-of-the-art ECG classification methods, even those trained on 12-lead data. To encourage further development, our source code is publicly available at https://github.com/lhkhiem28/LightX3ECG.
翻译:目前,越来越多的人被诊断患有心血管疾病(CVDs),这是全球主要的死因。确定这些心脏问题的金标准是通过心电图(ECG)确定的。标准的12级领导ECG在临床实践和当前研究中广泛使用。但是,使用较少的线索可以使ECG更加普及,因为它可以与便携式或穿戴装置相结合。这一条引入了两种新的技术来改进目前3级领导ECG的深层次学习系统的性能,使之与使用标准的12级领导ECG培训的模式相提并论。具体地说,我们提出了一个多任务学习计划,其形式是心跳回归次数,以及将病人人口数据纳入系统的有效机制。随着这两项进展,我们获得了分类表现,即与2个大型ECG数据集的F1分数分别为0.9796和0.8140,即查普曼和CPSC-2018,这两类数据集已超过目前水平的ECG分类方法,甚至那些经过12级领导数据培训的ECG。为了鼓励进一步的发展,我们的源代码可在 http://ightLkh3Gs.