首页> 外文期刊>Stroke: A Journal of Cerebral Circulation >Reliability and validity of bilateral ankle accelerometer algorithms for activity recognition and walking speed after stroke.
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Reliability and validity of bilateral ankle accelerometer algorithms for activity recognition and walking speed after stroke.

机译:双边脚踝加速度计算法在活动识别和中风后行走速度方面的可靠性和有效性。

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BACKGROUND AND PURPOSE: Outcome measures of mobility for large stroke trials are limited to timed walks for short distances in a laboratory, step counters and ordinal scales of disability and quality of life. Continuous monitoring and outcome measurements of the type and quantity of activity in the community would provide direct data about daily performance, including compliance with exercise and skills practice during routine care and clinical trials. METHODS: Twelve adults with impaired ambulation from hemiparetic stroke and 6 healthy controls wore triaxial accelerometers on their ankles. Walking speed for repeated outdoor walks was determined by machine-learning algorithms and compared to a stopwatch calculation of speed for distances not known to the algorithm. The reliability of recognizing walking, exercise, and cycling by the algorithms was compared to activity logs. RESULTS: A high correlation was found between stopwatch-measured outdoor walking speed and algorithm-calculated speed (Pearson coefficient, 0.98; P=0.001) and for repeated measures of algorithm-derived walking speed (P=0.01). Bouts of walking >5 steps, variations in walking speed, cycling, stair climbing, and leg exercises were correctly identified during a day in the community. Compared to healthy subjects, those with stroke were, as expected, more sedentary and slower, and their gait revealed high paretic-to-unaffected leg swing ratios. CONCLUSIONS: Test-retest reliability and concurrent and construct validity are high for activity pattern-recognition Bayesian algorithms developed from inertial sensors. This ratio scale data can provide real-world monitoring and outcome measurements of lower extremity activities and walking speed for stroke and rehabilitation studies.
机译:背景和目的:大卒中试验的活动性结果指标仅限于实验室中短距离的定时步行,步数计数器和残障和生活质量的有序刻度。对社区活动类型和数量的持续监测和结果测量将提供有关日常绩效的直接数据,包括在常规护理和临床试验期间对运动和技能实践的依从性。方法:十二名中风偏瘫的成年人和6名健康对照者的踝部佩戴了三轴加速度计。重复的户外行走的步行速度是通过机器学习算法确定的,并与该算法未知的距离的秒表速度进行了比较。将通过算法识别步行,锻炼和骑自行车的可靠性与活动日志进行了比较。结果:秒表测量的户外行走速度与算法计算的速度(皮尔森系数,0.98; P = 0.001)和算法衍生的行走速度的重复测量(P = 0.01)之间存在高度相关性。在社区中的一天中,可以正确识别出步行> 5步的反弹,步行速度的变化,骑自行车,爬楼梯和腿部锻炼。与健康受试者相比,患有中风的人久坐不动且较慢,步态显示出较高的腿部摆动率至未受影响的腿部摆动率。结论:惯性传感器开发的活动模式识别贝叶斯算法具有较高的重测信度,并发性和构造效度。该比例尺数据可以为卒中和康复研究提供下肢活动和步行速度的真实监测和结果测量。

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