The electrocardiogram (ECG) records electrical signals in a non-invasive way to observe the condition of the heart, typically looking at the heart from 12 different directions. Several types of the cardiac disease are diagnosed by using 12-lead ECGs Recently, various wearable devices have enabled immediate access to the ECG without the use of wieldy equipment. However, they only provide ECGs with a couple of leads. This results in an inaccurate diagnosis of cardiac disease due to lacking of required leads. We propose a deep generative model for ECG synthesis from two asynchronous leads to ten leads. It first represents a heart condition referring to two leads, and then generates ten leads based on the represented heart condition. Both the rhythm and amplitude of leads generated resemble those of the original ones, while the technique removes noise and the baseline wander appearing in the original leads. As a data augmentation method, our model improves the classification performance of models compared with models using ECGs with only one or two leads.
翻译:心电图(ECG)以非侵入的方式记录了观察心脏状况的电信号,通常从12个不同方向看心脏。几种类型的心脏疾病通过使用12个领先的ECG进行诊断。最近,各种可磨损装置使得能够直接进入ECG,而不用挥发设备。不过,它们只向ECG提供几条线索。由于缺少所需的线索,这导致对心脏病的诊断不准确。我们提议了一个ECG合成的深度基因模型,从两个不同步的导线到10个导线。它首先代表两个导线的心脏状况,然后根据代表的心脏状况产生10个导线。所产生的导线的节奏和振动性与最初导线相似,而技术则消除了噪音和原始导线中出现的基线游动。作为一种数据增强方法,我们的模型改进了模型的分类性能,与使用只有一两个导线的ECG模型的模型相比。