Smartwatches or fitness trackers have garnered a lot of popularity as potential health tracking devices due to their affordable and longitudinal monitoring capabilities. To further widen their health tracking capabilities, in recent years researchers have started to look into the possibility of Atrial Fibrillation (AF) detection in real-time leveraging photoplethysmography (PPG) data, an inexpensive sensor widely available in almost all smartwatches. A significant challenge in AF detection from PPG signals comes from the inherent noise in the smartwatch PPG signals. In this paper, we propose a novel deep learning based approach, BayesBeat that leverages the power of Bayesian deep learning to accurately infer AF risks from noisy PPG signals, and at the same time provides an uncertainty estimate of the prediction. Extensive experiments on two publicly available dataset reveal that our proposed method BayesBeat outperforms the existing state-of-the-art methods. Moreover, BayesBeat is substantially more efficient having 40-200X fewer parameters than state-of-the-art baseline approaches making it suitable for deployment in resource constrained wearable devices.
翻译:智能观察者或健身跟踪者由于其负担得起的纵向监测能力,作为潜在的健康跟踪装置,已获得大量受人欢迎的潜在健康跟踪装置。为了进一步扩大他们的健康跟踪能力,近年来研究人员开始研究利用光谱成像仪(PPG)数据实时检测人工纤维化(AF)的可能性,这是一个廉价的传感器,几乎所有智能观察者都可以广泛获得。从PPPG信号中检测FF的重大挑战来自智能观察PPPG信号中固有的噪音。在本文中,我们提议采用新的深层次学习方法,BayesBeat,利用BayesBeat,利用BayesBeat的深层学习能力,精确地推断PPG信号给AF带来的风险,同时提供预测的不确定性估计。关于两种公开可得的数据集的广泛实验显示,我们提议的BayesBeat方法比现有最先进的方法要差得多。此外,BayesBeat的参数比最先进的基准方法少40-200x,比最先进的基准方法要少40-200x,因此它更适合用于在资源受限制的装置中部署。