首页> 外文期刊>Spinal cord: the official journal of the International Medical Society of Paraplegia >Comparative validity of energy expenditure prediction algorithms using wearable devices for people with spinal cord injury
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Comparative validity of energy expenditure prediction algorithms using wearable devices for people with spinal cord injury

机译:用于脊髓损伤的人的可穿戴设备的能量支出预测算法的比较有效性

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Study design Cross-sectional validation study. Objectives To conduct a literature search for existing energy expenditure (EE) predictive algorithms using ActiGraph activity monitors for manual wheelchairs users (MWUs) with spinal cord injury (SCI), and evaluate their validity using an out-of-sample dataset. Setting Research institution in Pittsburgh, USA. Methods A literature search resulted in five articles containing five sets of predictive equations using an ActiGraph activity monitor for MWUs with SCI. Out-of-sample data were collected from 29 MWUs with chronic SCI who were asked to follow an activity protocol while wearing an ActiGraph GT9X Link on the dominant wrist. They also wore a portable metabolic cart which provided the criterion measure for EE. The out-of-sample dataset was used to evaluate the validity of the five sets of EE predictive equations. Results None of the five sets of predictive equations demonstrated equivalence within 20% of the criterion measure based on an equivalence test. The mean absolute error for the five sets of predictive equations ranged from 0.87 to 6.41 kilocalories per minute (kcal min(-1)) when compared with the criterion measure, and the intraclass correlation estimates ranged from 0.06 to 0.59. The range between the Bland-Altman upper and lower limits of agreement was from 4.70 kcal min(-1) to 25.09 kcal min(-1). Conclusions The existing EE predictive equations based on ActiGraph monitors for MWUs with SCI showed varied performance when compared with the criterion measure. Their accuracies may not be sufficient to support future clinical and research use. More work is needed to develop more accurate EE predictive equations for this population.
机译:研究设计横断面验证研究。目的是对使用脊髓损伤(SCI)的手动轮椅使用者(MWU)的手动轮椅使用者(MWU)进行现有能源支出(EE)预测算法的文献搜索,并使用示例外数据集来评估其有效性。在美国匹兹堡设定研究机构。方法对文献搜索导致五种文章,其中包含了五组预测方程,用于使用SCI的MWU。从29个MWU收集了样本数据,其中慢性SCI被要求遵循活动协议,同时戴上主导手腕上的Actigraph Gt9x链接。它们还戴着便携式代谢推车,为ee提供了标准测量。采用样品外数据集来评估五组EE预测方程的有效性。结果,五组预测方程都不是在基于等价测试的标准测量的20%内展示等效。与标准测量相比,五组预测方程的平均绝对误差范围为0.87至6.41千视力(KCAL MIN(-1)),腹部相关估计范围为0.06至0.59。 Bland-Altman的上下限制和下限的协议之间的范围为4.70千卡分钟(-1)至25.09千卡分钟(-1)。结论与标准措施相比,基于SCI的基于SCI的Actigraph MWU的现有EE预测方程显示出不同的性能。它们的准确性可能不足以支持未来的临床和研究使用。需要更多的工作来为这群进行更准确的EE预测方程式。

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