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利用基于加速度计的机器学习算法开发和验证用于对获得性脑损伤后体力活动进行分类的方法。

Developing and validating an accelerometer-based algorithm with machine learning to classify physical activity after acquired brain injury.

机构信息

Hammel Neurorehabilitation Centre & University Research Clinic (HNURC), Hammel, Denmark.

Department of Clinical Medicine, Aarhus University, Aarhus, Denmark.

出版信息

Brain Inj. 2021 Mar 21;35(4):460-467. doi: 10.1080/02699052.2021.1880026. Epub 2021 Feb 18.

DOI:10.1080/02699052.2021.1880026
PMID:33599161
Abstract

: To develop and validate an accelerometer-based algorithm classifying physical activity in people with acquired brain injury (ABI) in a laboratory setting resembling a real home environment.: A development and validation study was performed. Eleven healthy participants and 25 patients with ABI performed a protocol of transfers and ambulating activities. Activity measurements were performed with accelerometers and with thermal video camera as gold standard reference. A machine learning-based algorithm classifying specific physical activities from the accelerometer data was developed and cross-validated in a training sample of 11 healthy participants. Criterion validity of the algorithm was established in 3 models classifying the same protocol of activities in people with ABI.: Modeled on data from 11 healthy and 15 participants with ABI, the algorithm had a good precision for classifying transfers and ambulating activities in data from 10 participants with ABI. The weighted sensitivity for all activities was 89.3% (88.3-90.4%) and the weighted positive predictive value was 89.7% (88.7-90.7%). The algorithm differentiated between lying and sitting activities.: An algorithm to classify physical activities in populations with ABI was developed and its criterion validity established. Further testing of precision in home settings with continuous activity monitoring is warranted.

摘要

开发和验证一种基于加速度计的算法,以在类似于真实家庭环境的实验室环境中对获得性脑损伤 (ABI) 患者的身体活动进行分类:进行了一项开发和验证研究。11 名健康参与者和 25 名 ABI 患者进行了转移和行走活动的方案。使用加速度计和热视频摄像机作为黄金标准参考进行活动测量。开发了一种基于机器学习的算法,可从加速度计数据中分类特定的身体活动,并在 11 名健康参与者的训练样本中进行交叉验证。该算法在 3 个模型中对 ABI 患者相同活动方案的判别有效性进行了建立:基于 11 名健康参与者和 15 名 ABI 参与者的数据建模,该算法在 10 名 ABI 参与者的数据中对转移和行走活动的分类具有较好的精度。所有活动的加权灵敏度为 89.3%(88.3-90.4%),加权阳性预测值为 89.7%(88.7-90.7%)。该算法可区分躺卧和坐立活动。:开发了一种用于 ABI 人群的身体活动分类算法,并对其判别有效性进行了建立。需要进一步在家庭环境中进行持续活动监测以测试精度。

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