Cohen Veterans Bioscience, New York, NY 10018, USA.
The Michael J Fox Foundation for Parkinson's Research, New York, NY 10163, USA.
Sensors (Basel). 2022 Sep 9;22(18):6831. doi: 10.3390/s22186831.
Now that wearable sensors have become more commonplace, it is possible to monitor individual healthcare-related activity outside the clinic, unleashing potential for early detection of events in diseases such as Parkinson's disease (PD). However, the unsupervised and "open world" nature of this type of data collection make such applications difficult to develop. In this proof-of-concept study, we used inertial sensor data from Verily Study Watches worn by individuals for up to 23 h per day over several months to distinguish between seven subjects with PD and four without. Since motor-related PD symptoms such as bradykinesia and gait abnormalities typically present when a PD subject is walking, we initially used human activity recognition (HAR) techniques to identify walk-like activity in the unconstrained, unlabeled data. We then used these "walk-like" events to train one-dimensional convolutional neural networks (1D-CNNs) to determine the presence of PD. We report classification accuracies near 90% on single 5-s walk-like events and 100% accuracy when taking the majority vote over single-event classifications that span a duration of one day. Though based on a small cohort, this study shows the feasibility of leveraging unconstrained wearable sensor data to accurately detect the presence or absence of PD.
现在,可穿戴传感器已经变得越来越普遍,人们可以在诊所之外监测与个人健康相关的活动,这为帕金森病(PD)等疾病的事件早期检测释放了潜力。然而,这种类型的数据收集是在无人监督和“开放世界”的情况下进行的,这使得此类应用的开发变得困难。在这项概念验证研究中,我们使用了 Verily Study Watch 上的惯性传感器数据,这些数据来自每天佩戴长达 23 小时的个人,在数月内对 7 名 PD 患者和 4 名非 PD 患者进行了区分。由于 PD 患者在行走时通常会出现运动相关的 PD 症状,如运动迟缓症和步态异常,因此我们最初使用人类活动识别 (HAR) 技术来识别非约束、未标记数据中的类似行走活动。然后,我们使用这些“类似行走”事件来训练一维卷积神经网络 (1D-CNN),以确定 PD 的存在。我们报告了接近 90%的单 5 秒类似行走事件的分类准确率,当对跨越一天持续时间的单个事件分类进行多数表决时,准确率达到 100%。虽然该研究基于一个小队列,但它表明了利用非约束性可穿戴传感器数据来准确检测 PD 存在与否的可行性。