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Smartphone App–Based Assessment of Gait During Normal and Dual-Task Walking: Demonstration of Validity and Reliability

机译:基于智能手机应用程序的正常和双任务步行过程中的步态评估:有效性和可靠性的证明

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Background Walking is a complex cognitive motor task that is commonly completed while performing another task such as talking or making decisions. Gait assessments performed under normal and “dual-task” walking conditions thus provide important insights into health. Such assessments, however, are limited primarily to laboratory-based settings. Objective The objective of our study was to create and test a smartphone-based assessment of normal and dual-task walking for use in nonlaboratory settings. Methods We created an iPhone app that used the phone’s motion sensors to record movements during walking under normal conditions and while performing a serial-subtraction dual task, with the phone placed in the user’s pants pocket. The app provided the user with multimedia instructions before and during the assessment. Acquired data were automatically uploaded to a cloud-based server for offline analyses. A total of 14 healthy adults completed 2 laboratory visits separated by 1 week. On each visit, they used the app to complete three 45-second trials each of normal and dual-task walking. Kinematic data were collected with the app and a gold-standard–instrumented GAITRite mat. Participants also used the app to complete normal and dual-task walking trials within their homes on 3 separate days. Within laboratory-based trials, GAITRite-derived heel strikes and toe-offs of the phone-side leg aligned with smartphone acceleration extrema, following filtering and rotation to the earth coordinate system. We derived stride times—a clinically meaningful metric of locomotor control—from GAITRite and app data, for all strides occurring over the GAITRite mat. We calculated stride times and the dual-task cost to the average stride time (ie, percentage change from normal to dual-task conditions) from both measurement devices. We calculated similar metrics from home-based app data. For these trials, periods of potential turning were identified via custom-developed algorithms and omitted from stride-time analyses. Results Across all detected strides in the laboratory, stride times derived from the app and GAITRite mat were highly correlated ( P 2=.98). These correlations were independent of walking condition and pocket tightness. App- and GAITRite-derived stride-time dual-task costs were also highly correlated ( P 2=.95). The error of app-derived stride times (mean 16.9, SD 9.0 ms) was unaffected by the magnitude of stride time, walking condition, or pocket tightness. For both normal and dual-task trials, average stride times derived from app walking trials demonstrated excellent test-retest reliability within and between both laboratory and home-based assessments (intraclass correlation coefficient range .82-.94). Conclusions The iPhone app we created enabled valid and reliable assessment of stride timing—with the smartphone in the pocket—during both normal and dual-task walking and within both laboratory and nonlaboratory environments. Additional work is warranted to expand the functionality of this tool to older adults and other patient populations.
机译:背景技术步行是一种复杂的认知运动任务,通常在执行另一项任务(例如说话或做决定)时完成。因此,在正常和“双重任务”步行条件下进行的步态评估可为健康提供重要的见解。但是,此类评估主要限于基于实验室的设置。目的我们研究的目的是创建和测试基于智能手机的正常和双任务步行评估,以用于非实验室环境。方法我们创建了一个iPhone应用程序,该应用程序将手机放在用户的裤子口袋中,使用该手机的运动传感器记录正常情况下行走过程中以及执行串行减法双重任务时的运动。该应用在评估之前和评估期间向用户提供了多媒体说明。采集的数据会自动上传到基于云的服务器以进行离线分析。共有14位健康的成年人完成了2次实验室检查,相隔1周。每次访问时,他们都使用该应用程序完成了三个45秒的正常行走和双任务行走试验。运动数据是使用该应用程序和金标准仪表化的GAITRite垫收集的。参与者还使用该应用程序在3天内完成了他们家中的正常和双任务步行试验。在基于实验室的试验中,在过滤并旋转到地球坐标系之后,GAITRite派生的脚后跟触碰和手机侧腿的脚趾与智能手机的加速度极值对齐。我们从GAITRite和应用程序数据中得出了发生在GAITRite垫上的所有步幅的步幅时间(一种具有临床意义的运动控制指标)。我们计算了两个测量设备的步幅时间和双任务成本与平均步幅时间(即,从正常到双任务条件的百分比变化)。我们从基于家庭的应用程序数据计算了类似的指标。对于这些试验,通过定制开发的算法确定了潜在的转向时期,并在步幅时间分析中将其省略。结果在实验室中检测到的所有步幅中,从app和GAITRite mat得出的步幅时间高度相关(P 2 =。98)。这些相关性与步行条件和口袋紧度无关。应用程序和GAITRite派生的跨步双工成本也高度相关(P 2 =。95)。应用程序衍生的步幅时间(平均值16.9,SD 9.0毫秒)的误差不受步幅时间,步行条件或口袋紧度的影响。对于正常任务和双重任务试验,从应用步行试验得出的平均步幅时间证明了在实验室评估和家庭评估之间和之间的出色的重测信度(类内相关系数范围为0.82-0.94)。结论我们创建的iPhone应用程序可以在智能手机放在口袋里的情况下,在正常和双任务行走以及实验室和非实验室环境中,对步幅定时进行有效且可靠的评估。为了使该工具的功能扩展到老年人和其他患者人群,还需要进行其他工作。

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