监测康复中的身体行为:基于机器学习的大腿加速度计算法的开发和验证研究(预印本)

Frederik Skovbjerg, Helene Honoré, Inger Mechlenburg, Matthijs Lipperts, Rikke Gade, Erhard Trillingsgaard Næss-Schmidt
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引用次数: 0

摘要

背景:体力活动正逐渐成为一种衡量结果的指标。加速度计已成为监测身体行为的重要工具,较新的识别分析方法增加了细节程度。许多研究通过使用多个可穿戴传感器实现了高性能的身体行为分类;然而,多个可穿戴设备可能并不实用,而且会降低依从性:本研究旨在开发并验证一种算法,利用单个大腿安装的加速度计和有监督的机器学习方案对几种日常身体行为进行分类:我们收集了训练数据,将跑步、骑自行车、爬楼梯、坐轮椅和驾驶汽车等行为类别添加到现有的坐姿、躺姿、站姿、行走和转换类别算法中。合并训练数据后,我们使用随机森林学习方案进行模型开发。我们通过模拟自由生活过程,使用胸前安装的摄像头建立地面实况,对算法进行了验证。此外,我们还调整了算法,并将其性能与基于向量阈值的现有算法进行了比较:我们开发了一种算法,用于对与康复相关的 11 种身体行为进行分类。在模拟自由生活验证中,该算法的性能在 11 个类别中平均下降了 57%(F-measure)。在将类别合并为久坐行为、站立、行走、跑步和骑自行车后,结果显示,与地面实况和现有算法相比,该算法具有很高的性能:结论:使用单个安装在大腿上的加速度计,我们在特定行为中获得了较高的分类水平。性能高的分类行为大多出现在功能水平较高的人群中。进一步发展的目标应该是描述功能水平较低人群的行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monitoring Physical Behavior in Rehabilitation Using a Machine Learning-Based Algorithm for Thigh-Mounted Accelerometers: Development and Validation Study.

Background: Physical activity is emerging as an outcome measure. Accelerometers have become an important tool in monitoring physical behavior, and newer analytical approaches of recognition methods increase the degree of details. Many studies have achieved high performance in the classification of physical behaviors through the use of multiple wearable sensors; however, multiple wearables can be impractical and lower compliance.

Objective: The aim of this study was to develop and validate an algorithm for classifying several daily physical behaviors using a single thigh-mounted accelerometer and a supervised machine-learning scheme.

Methods: We collected training data by adding the behavior classes-running, cycling, stair climbing, wheelchair ambulation, and vehicle driving-to an existing algorithm with the classes of sitting, lying, standing, walking, and transitioning. After combining the training data, we used a random forest learning scheme for model development. We validated the algorithm through a simulated free-living procedure using chest-mounted cameras for establishing the ground truth. Furthermore, we adjusted our algorithm and compared the performance with an existing algorithm based on vector thresholds.

Results: We developed an algorithm to classify 11 physical behaviors relevant for rehabilitation. In the simulated free-living validation, the performance of the algorithm decreased to 57% as an average for the 11 classes (F-measure). After merging classes into sedentary behavior, standing, walking, running, and cycling, the result revealed high performance in comparison to both the ground truth and the existing algorithm.

Conclusions: Using a single thigh-mounted accelerometer, we obtained high classification levels within specific behaviors. The behaviors classified with high levels of performance mostly occur in populations with higher levels of functioning. Further development should aim at describing behaviors within populations with lower levels of functioning.

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