Miller Allison E, Lohse Keith R, Bland Marghuretta D, Konrad Jeffrey D, Hoyt Catherine R, Lenze Eric J, Lang Catherine E
Program in Physical Therapy, Washington University School of Medicine, St. Louis, MO 63108.
Department of Neurology, Washington University School of Medicine, St. Louis, MO 63108.
medRxiv. 2024 Aug 16:2024.08.15.24312066. doi: 10.1101/2024.08.15.24312066.
Wearable sensors can measure movement in daily life, an outcome that is salient to patients, and have been critical to accelerating progress in rehabilitation research and practice. However, collecting and processing sensor data is burdensome, leaving many scientists with limited access to such data. To address these challenges, we present a harmonized, wearable sensor dataset that combines 2,885 recording days of sensor data from the upper and lower limbs from eight studies. The dataset includes 790 individuals ages 0 - 90, nearly equal sex proportions (53% male, 47% female), and representation from a range of demographic backgrounds (69.4% White, 24.9% Black, 1.8% Asian) and clinical conditions (46% neurotypical, 31% stroke, 7% Parkinson's disease, 6% orthopedic conditions, and others). The dataset is publicly available and accompanied by open source code and an app that allows for interaction with the data. This dataset will facilitate the use of sensor data to advance rehabilitation research and practice, improve the reproducibility and replicability of wearable sensor studies, and minimize costs and duplicated scientific efforts.
可穿戴传感器能够测量日常生活中的运动,这一结果对患者来说很重要,并且对加速康复研究与实践的进展至关重要。然而,收集和处理传感器数据很繁琐,导致许多科学家获取此类数据的机会有限。为应对这些挑战,我们提供了一个统一的可穿戴传感器数据集,该数据集整合了八项研究中来自上肢和下肢的2885个传感器数据记录日。该数据集涵盖790名年龄在0至90岁之间的个体,性别比例近乎相等(男性占53%,女性占47%),并涵盖了一系列人口背景(69.4%为白人,24.9%为黑人,1.8%为亚洲人)和临床状况(46%为神经正常,31%为中风,7%为帕金森病,6%为骨科疾病等)的代表。该数据集可公开获取,并附有开源代码以及一个允许与数据进行交互的应用程序。这个数据集将有助于利用传感器数据推动康复研究与实践,提高可穿戴传感器研究的可重复性和再现性,并将成本和重复的科研工作降至最低。