A Smartphone-Based Algorithm for L Test Subtask Segmentation

Alexis L. McCreath Frangakis, Edward D. Lemaire, Natalie Baddour
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引用次数: 0

Abstract

Background: Subtask segmentation can provide useful information from clinical tests, allowing clinicians to better assess a patient’s mobility status. A new smartphone-based algorithm was developed to segment the L Test of functional mobility into stand-up, sit-down, and turn subtasks. Methods: Twenty-one able-bodied participants each completed five L Test trials, with a smartphone attached to their posterior pelvis. The smartphone used a custom-designed application that collected linear acceleration, gyroscope, and magnetometer data, which were then put into a threshold-based algorithm for subtask segmentation. Results: The algorithm produced good results (>97% accuracy, >98% specificity, >74% sensitivity) for all subtasks. Conclusions: These results were a substantial improvement compared with previously published results for the L Test, as well as similar functional mobility tests. This smartphone-based approach is an accessible method for providing useful metrics from the L Test that can lead to better clinical decision-making.
基于智能手机的 L 测试子任务分割算法
背景:子任务分割能从临床测试中提供有用的信息,让临床医生更好地评估患者的活动能力状况。我们开发了一种基于智能手机的新算法,可将功能移动能力 L 测试划分为站立、坐下和转身子任务。测试方法21 名健全的参与者每人完成了五次 L 测试,他们的后骨盆上都安装了一部智能手机。智能手机使用定制设计的应用程序收集线性加速度、陀螺仪和磁力计数据,然后将这些数据输入基于阈值的算法进行子任务分割。结果该算法对所有子任务都产生了良好的结果(准确率大于 97%,特异性大于 98%,灵敏度大于 74%)。结论与之前公布的 L 测试结果以及类似的功能移动性测试结果相比,这些结果有了很大的改进。这种基于智能手机的方法易于使用,能从 L 测试中提供有用的指标,从而改善临床决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.70
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0.00%
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