Validity of load rate estimation using accelerometers during physical activity on an anti-gravity treadmill.

IF 2 Q3 ENGINEERING, BIOMEDICAL
Susan Nazirizadeh, Maria Stokes, Nigel K Arden, Alexander Ij Forrester
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引用次数: 1

Abstract

Introduction: A simple tool to estimate loading on the lower limb joints outside a laboratory may be useful for people who suffer from degenerative joint disease. Here, the accelerometers on board of wearables (smartwatch, smartphone) were used to estimate the load rate on the lower limbs and were compared to data from a treadmill force plate. The aim was to assess the validity of wearables to estimate load rate transmitted through the joints.

Methods: Twelve healthy participants (female n = 4, male n = 8; aged 26 ± 3 years; height: 175 ± 15 cm; body mass: 71 ± 9 kg) carried wearables, while performing locomotive activities on an anti-gravity treadmill with an integrated force plate. Acceleration data from the wearables and force plate data were used to estimate the load rate. The treadmill enabled 7680 data points to be obtained, allowing a good estimate of uncertainty to be examined. A linear regression model and cross-validation with 1000 bootstrap resamples were used to assess the validation.

Results: Significant correlation was found between load rate from the force plate and wearables (smartphone: R 2 = 0.71 ; smartwatch: R 2 = 0.67 ).

Conclusion: Wearables' accelerometers can estimate load rate, and the good correlation with force plate data supports their use as a surrogate when assessing lower limb joint loading in field environments.

Abstract Image

Abstract Image

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在反重力跑步机上运动时使用加速度计估计负荷率的有效性。
一个简单的工具,估计在实验室外的下肢关节负荷可能是有用的人患有退行性关节疾病。在这里,可穿戴设备(智能手表、智能手机)上的加速度计被用来估计下肢的负荷率,并与跑步机测力板的数据进行比较。目的是评估可穿戴设备在估计通过关节传递的载荷率方面的有效性。方法:健康受试者12例(女性4例,男性8例;年龄26±3岁;高度:175±15cm;体重:71±9公斤)携带可穿戴设备,同时在带有集成力板的反重力跑步机上进行机车活动。使用可穿戴设备的加速度数据和力板数据来估计负载率。跑步机能够获得7680个数据点,从而可以很好地评估不确定性。使用线性回归模型和1000个bootstrap样本的交叉验证来评估验证性。结果:测力板负荷率与可穿戴设备(智能手机:r2 = 0.71;智能手表:r2 = 0.67)。结论:可穿戴设备的加速度计可以估计载荷率,并且与力板数据的良好相关性支持其作为评估野外环境下下肢关节载荷的替代方法。
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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