Atrial fibrillation(termed as AF/Afib henceforth) is a discrete and often rapid heart rhythm that can lead to clots near the heart. We can detect Afib by ECG signal by the absence of p and inconsistent intervals between R waves as shown in fig(1). Existing methods revolve around CNN that are used to detect afib but most of them work with 12 point lead ECG data where in our case the health gauge watch deals with single-point ECG data. Twelve-point lead ECG data is more accurate than a single point. Furthermore, the health gauge watch data is much noisier. Implementing a model to detect Afib for the watch is a test of how the CNN is changed/modified to work with real life data
翻译:空心纤维纤维化(今后称为AF/Afib)是一种离散的、经常是快速的心脏节律,可能导致心脏附近出现凝块。我们可以通过ECG信号通过ECG信号检测出Afib,因为没有p和R波之间间隔的间隔不一致(如图(1)所示)。 现有方法围绕CNN,用于检测afib的CNN方法,但大部分使用12点铅ECG数据,在我们的情况中,健康计表观察处理单点ECG数据。12点铅ECG数据比一个点更准确。此外,健康计表表观察数据也更值得注意。实施用于检测Afib的模型是测试CNN如何改变/修改真实生活数据的工作方式。