使用智能手机中嵌入的单个惯性测量单元改进步速估算的新方法:有效性和可靠性研究

IF 5.4 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Pei-An Lee, Wanting Yu, Junhong Zhou, Timothy Tsai, Brad Manor, On-Yee Lo
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引用次数: 0

摘要

背景:步速是移动性和整体健康评估的重要生物标志物。现有的步速测量方法需要昂贵的设备或人员协助,这限制了它们在无人监督的日常生活条件下的应用。配备单个惯性测量单元(IMU)的智能手机的出现,为在实验室和临床环境之外测量步速提供了一种可行且方便的方法。以前的研究曾使用倒立摆模型来估算步速,使用的是连接在躯干上的非智能手机惯性测量单元。然而,目前还不清楚这种方法能否以及如何在行走过程中,尤其是在各种行走条件下,使用嵌入在裤袋中的智能手机 IMU 估算步速:本研究旨在验证和测试基于智能手机IMU的步速测量方法的可靠性,该测量方法被放置在用户前裤兜中,测量对象为健康的年轻人和老年人,测量条件分别为安静行走(即正常行走)和执行认知任务时行走(即双任务行走):方法:使用定制开发的智能手机应用程序(App)记录12名年轻人和12名老年人在正常行走和双任务行走时的步态数据。将智能手机估算步速和步长的有效性和可靠性与黄金标准 GAITRite mat 进行了比较。为了提高步速估算的准确性,采用了一种基于系数的调整方法,该方法基于相对于原始步长估算的系数。智能手机步态数据和 GAITRite mat 步态数据之间的误差幅度(即偏差和一致性限制)被计算为每个步幅。使用 Passing-Bablok 正交回归模型提供智能手机和 GAITRite mat 之间的一致性(即斜率和截距):结果:与 GAITRite mat 相比,智能手机测量的步速是有效的。最初的一致性界限为 0.50 米/秒(理想值为 0 米/秒),正交回归分析表明斜率为 1.68(理想值为 1),截距为 -0.70(理想值为 0)。经过调整后,智能手机得出的步速估计值的准确性有所提高,一致性降低到 0.34 米/秒。调整后的斜率提高到 1.00,截距为 0.03。在有监督的实验室环境和无监督的家庭条件下,智能手机衍生步速的测试-再测可靠性为良好至优秀。调整系数适用于各种步长和步速:倒立摆法是一种有效、可靠的方法,可通过放置在年轻人和老年人口袋中的智能手机 IMU 估算步速。根据步长的原始估计值得出的系数调整步长,成功消除了偏差,提高了步速估计的准确性。这种新方法有可能应用于各种环境和人群,但可能需要针对特定数据集进行微调。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Approach for Improving Gait Speed Estimation Using a Single Inertial Measurement Unit Embedded in a Smartphone: Validity and Reliability Study.

Background: Gait speed is a valuable biomarker for mobility and overall health assessment. Existing methods to measure gait speed require expensive equipment or personnel assistance, limiting their use in unsupervised, daily-life conditions. The availability of smartphones equipped with a single inertial measurement unit (IMU) presents a viable and convenient method for measuring gait speed outside of laboratory and clinical settings. Previous works have used the inverted pendulum model to estimate gait speed using a non-smartphone-based IMU attached to the trunk. However, it is unclear whether and how this approach can estimate gait speed using the IMU embedded in a smartphone while being carried in a pants pocket during walking, especially under various walking conditions.

Objective: This study aimed to validate and test the reliability of a smartphone IMU-based gait speed measurement placed in the user's front pants pocket in both healthy young and older adults while walking quietly (ie, normal walking) and walking while conducting a cognitive task (ie, dual-task walking).

Methods: A custom-developed smartphone application (app) was used to record gait data from 12 young adults and 12 older adults during normal and dual-task walking. The validity and reliability of gait speed and step length estimations from the smartphone were compared with the gold standard GAITRite mat. A coefficient-based adjustment based upon a coefficient relative to the original estimation of step length was applied to improve the accuracy of gait speed estimation. The magnitude of error (ie, bias and limits of agreement) between the gait data from the smartphone and the GAITRite mat was calculated for each stride. The Passing-Bablok orthogonal regression model was used to provide agreement (ie, slopes and intercepts) between the smartphone and the GAITRite mat.

Results: The gait speed measured by the smartphone was valid when compared to the GAITRite mat. The original limits of agreement were 0.50 m/s (an ideal value of 0 m/s), and the orthogonal regression analysis indicated a slope of 1.68 (an ideal value of 1) and an intercept of -0.70 (an ideal value of 0). After adjustment, the accuracy of the smartphone-derived gait speed estimation improved, with limits of agreement reduced to 0.34 m/s. The adjusted slope improved to 1.00, with an intercept of 0.03. The test-retest reliability of smartphone-derived gait speed was good to excellent within supervised laboratory settings and unsupervised home conditions. The adjustment coefficients were applicable to a wide range of step lengths and gait speeds.

Conclusions: The inverted pendulum approach is a valid and reliable method for estimating gait speed from a smartphone IMU placed in the pockets of younger and older adults. Adjusting step length by a coefficient derived from the original estimation of step length successfully removed bias and improved the accuracy of gait speed estimation. This novel method has potential applications in various settings and populations, though fine-tuning may be necessary for specific data sets.

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来源期刊
JMIR mHealth and uHealth
JMIR mHealth and uHealth Medicine-Health Informatics
CiteScore
12.60
自引率
4.00%
发文量
159
审稿时长
10 weeks
期刊介绍: JMIR mHealth and uHealth (JMU, ISSN 2291-5222) is a spin-off journal of JMIR, the leading eHealth journal (Impact Factor 2016: 5.175). JMIR mHealth and uHealth is indexed in PubMed, PubMed Central, and Science Citation Index Expanded (SCIE), and in June 2017 received a stunning inaugural Impact Factor of 4.636. The journal focusses on health and biomedical applications in mobile and tablet computing, pervasive and ubiquitous computing, wearable computing and domotics. JMIR mHealth and uHealth publishes since 2013 and was the first mhealth journal in Pubmed. It publishes even faster and has a broader scope with including papers which are more technical or more formative/developmental than what would be published in the Journal of Medical Internet Research.
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