Department of Electrical and Electronic Engineering, University of Dhaka, Dhaka, 1000, Bangladesh.
Department of Mechanical and Industrial Engineering, College of Engineering, Qatar University, Doha, 2713, Qatar.
Comput Biol Med. 2022 Aug;147:105682. doi: 10.1016/j.compbiomed.2022.105682. Epub 2022 Jun 7.
While the advanced diagnostic tools and healthcare management protocols have been struggling to contain the COVID-19 pandemic, the spread of the contagious viral pathogen before the symptom onset acted as the Achilles' heel. Although reverse transcription-polymerase chain reaction (RT-PCR) has been widely used for COVID-19 diagnosis, they are hardly administered before any visible symptom, which provokes rapid transmission. This study proposes PCovNet, a Long Short-term Memory Variational Autoencoder (LSTM-VAE)-based anomaly detection framework, to detect COVID-19 infection in the presymptomatic stage from the Resting Heart Rate (RHR) derived from the wearable devices, i.e., smartwatch or fitness tracker. The framework was trained and evaluated in two configurations on a publicly available wearable device dataset consisting of 25 COVID-positive individuals in the span of four months including their COVID-19 infection phase. The first configuration of the framework detected RHR abnormality with average Precision, Recall, and F-beta scores of 0.946, 0.234, and 0.918, respectively. However, the second configuration detected aberrant RHR in 100% of the subjects (25 out of 25) during the infectious period. Moreover, 80% of the subjects (20 out of 25) were detected during the presymptomatic stage. These findings prove the feasibility of using wearable devices with such a deep learning framework as a secondary diagnosis tool to circumvent the presymptomatic COVID-19 detection problem.
虽然先进的诊断工具和医疗保健管理方案一直在努力控制 COVID-19 大流行,但传染性病毒病原体在出现症状之前的传播却成为了一个弱点。虽然逆转录-聚合酶链反应(RT-PCR)已广泛用于 COVID-19 的诊断,但在任何可见症状之前几乎无法进行检测,这引发了病毒的快速传播。本研究提出了 PCovNet,这是一种基于长短期记忆变分自编码器(LSTM-VAE)的异常检测框架,用于从可穿戴设备(如智能手表或健身追踪器)中获取的静息心率(RHR)来检测无症状期的 COVID-19 感染。该框架在两个配置下在一个公开的可穿戴设备数据集上进行了训练和评估,该数据集包含 25 名 COVID-19 阳性个体在四个月内的 COVID-19 感染阶段。该框架的第一个配置检测到 RHR 异常的平均精度、召回率和 F-beta 分数分别为 0.946、0.234 和 0.918。然而,第二个配置在感染期内检测到了 100%的受试者(25 名)的 RHR 异常。此外,80%的受试者(20 名)在无症状期被检测到。这些发现证明了使用可穿戴设备和这种深度学习框架作为辅助诊断工具来规避无症状期 COVID-19 检测问题的可行性。