Comparative Analysis and Conversion Between Actiwatch and ActiGraph Open-Source Counts

Paul H. Lee, Ali Neishabouri, Andy C. Y. Tse, Christine C. Guo
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Abstract

Body-worn sensors have contributed to a rich and growing body of literature in public health and clinical research in the last decades. A major challenge in sensor research is the lack of consistency and standardization of the collection and reporting of the sensor data. The algorithms used to derive these activity counts can be vastly different between manufactures and not always transparent to the researchers. With Philips, one of the major research-grade wearable device manufacturers, discontinuing this product line, many researchers are left in need of alternative solutions and at the risk of not being able to relate their historical data using the Philips Actiwatch 2 devices to future findings with other devices. We herein provide a comparison analysis and conversion method that can be used to convert activity counts from Philips to those from ActiGraph, another major manufacturer who provide both raw acceleration data and count data based on their open-source algorithm to the research community. This work provides an approach to maximize the scientific value of historical actigraphy data collected by the Actiwatch devices to support research continuity in this community. The conversion, however, is not perfect and only offers an approximation, due to the intrinsic difference in the count algorithms between the two accelerometers, and the permanent information loss during data reduction. We encourage future research using body-worn sensors to retain the raw sensor data to ensure data consistency, comparability, and the ability to leverage future algorithm improvement.
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Actiwatch与ActiGraph开源计数的比较分析与转换
在过去的几十年里,穿戴式传感器在公共卫生和临床研究方面的文献丰富且不断增长。传感器研究的一个主要挑战是传感器数据的收集和报告缺乏一致性和标准化。用于计算这些活动计数的算法在不同的制造商之间可能差别很大,而且对研究人员来说并不总是透明的。飞利浦是主要的研究级可穿戴设备制造商之一,随着该产品线的停产,许多研究人员需要替代解决方案,并冒着无法将他们使用飞利浦Actiwatch 2设备的历史数据与其他设备的未来发现联系起来的风险。我们在此提供了一种比较分析和转换方法,可用于将飞利浦的活动计数转换为ActiGraph的活动计数,ActiGraph是另一家主要制造商,他们根据其开源算法向研究社区提供原始加速度数据和计数数据。这项工作提供了一种最大化Actiwatch设备收集的历史活动数据的科学价值的方法,以支持该社区的研究连续性。然而,由于两种加速度计之间计数算法的内在差异以及数据缩减过程中的永久信息丢失,转换并不完美,仅提供近似值。我们鼓励未来的研究使用穿戴式传感器来保留原始传感器数据,以确保数据的一致性、可比性和利用未来算法改进的能力。
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