儿童和青少年体力活动水平的比较,从开源与活动图计数

Kimberly A. Clevenger, K. Mackintosh, M. McNarry, K. Pfeiffer, Alexander Montoye, J. Brønd
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引用次数: 2

摘要

ActiGraph计数通常用于表征身体活动强度和能量消耗,是研究最充分的加速度计指标之一。研究人员最近使用机械装置复制了计数处理方法,现在允许用户从原始加速度数据中生成计数。目的:本研究的目的是比较actigraph生成的计数和开源计数,并评估由切点、机器学习和双回归模型得出的对自由生活体力活动水平的影响。方法:儿童(n = 488,年龄13.0±1.1岁)在醒着的时间内在右臀部佩戴ActiGraph wgt3g - bt 7天。ActiGraph计数和原始加速度数据生成的计数在时代水平上进行比较,并作为总体均值。采用7种方法对整体活动强度和分期活动强度进行分类。采用加权kappa、相关性、平均绝对偏差和双单侧等价检验对结果进行比较。结果:ActiGraph和开源计数之间的所有结果在统计学上是相等的;加权kappa≥。971和时代水平相关性≥。992,表示非常同意。Bland-Altman图显示,差异随着活动强度的增加而增加,但ActiGraph和开源计数之间的总体差异很小(例如,时代水平的平均绝对差异为每分钟23.9个矢量量级计数)。无论何种分类模型,中等至高强度体力活动的平均差异为1.4-2.6分钟/天。结论:开源计数可用于增强未来研究的可比性,简化数据分析,并使研究人员能够将现有开发的模型与替代加速度计品牌一起使用。未来的研究应该验证开源计数在其他结果上的表现,比如睡眠。
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Comparison of Child and Adolescent Physical Activity Levels From Open-Source Versus ActiGraph Counts
ActiGraph counts are commonly used for characterizing physical activity intensity and energy expenditure and are among the most well-studied accelerometer metrics. Researchers have recently replicated the counts processing method using a mechanical setup, now allowing users to generate counts from raw acceleration data. Purpose: The purpose of this study was to compare ActiGraph-generated counts to open-source counts and assess the impact on free-living physical activity levels derived from cut points, machine learning, and two-regression models. Methods: Children (n = 488, 13.0 ± 1.1 years of age) wore an ActiGraph wGT3X-BT on their right hip for 7 days during waking hours. ActiGraph counts and counts generated from raw acceleration data were compared at the epoch-level and as overall means. Seven methods were used to classify overall and epoch-level activity intensity. Outcomes were compared using weighted kappa, correlations, mean absolute deviation, and two one-sided equivalence testing. Results: All outcomes were statistically equivalent between ActiGraph and open-source counts; weighted kappa was ≥.971 and epoch-level correlations were ≥.992, indicating very high agreement. Bland–Altman plots indicated differences increased with activity intensity, but overall differences between ActiGraph and open-source counts were minimal (e.g., epoch-level mean absolute difference of 23.9 vector magnitude counts per minute). Regardless of classification model, average differences translated to 1.4–2.6 min/day for moderate- to vigorous-intensity physical activity. Conclusion: Open-source counts may be used to enhance comparability of future studies, streamline data analysis, and enable researchers to use existing developed models with alternative accelerometer brands. Future studies should verify the performance of open-source counts for other outcomes, like sleep.
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