Trost Stewart G, Brookes Denise S K, Ahmadi Matthew N
School of Human Movement and Nutrition Sciences, University of Queensland, Brisbane, QLD, Australia.
School of Exercise and Nutrition Sciences, Queensland University of Technology, Brisbane, QLD, Australia.
Front Digit Health. 2022 May 2;4:884307. doi: 10.3389/fdgth.2022.884307. eCollection 2022.
Wrist worn accelerometers are convenient to wear and provide greater compliance. However, methods to transform the resultant output into predictions of physical activity (PA) intensity have been slow to evolve, with most investigators continuing the practice of applying intensity-based thresholds or cut-points. The current study evaluated the classification accuracy of seven sets of previously published youth-specific cut-points for wrist worn ActiGraph accelerometer data.
Eighteen children and adolescents [mean age (± SD) 14.6 ± 2.4 years, 10 boys, 8 girls] completed 12 standardized activity trials. During each trial, participants wore an ActiGraph GT3X+ tri-axial accelerometer on the wrist and energy expenditure (Youth METs) was measured directly using the Oxycon Mobile portable calorimetry system. Seven previously published sets of ActiGraph cut-points were evaluated: Crouter regression vertical axis, Crouter regression vector magnitude, Crouter ROC curve vertical axis, Crouter ROC curve vector magnitude, Chandler ROC curve vertical axis, Chandler ROC curve vector magnitude, and Hildebrand ENMO. Classification accuracy was evaluated via weighted Kappa. Confusion matrices were generated to summarize classification accuracy and identify patterns of misclassification.
The cut-points exhibited only moderate agreement with directly measured PA intensity, with Kappa ranging from 0.45 to 0.58. Although the cut-points classified sedentary behavior accurately (> 95%), classification accuracy for the light (3-51%), moderate (12-45%), and vigorous-intensity trials (30-88%) was generally poor. All cut-points underestimated the true intensity of the walking trials, with error rates ranging from 35 to 100%, while the intensity of activity trials requiring significant upper body and/or arm movements was consistently overestimated. The Hildebrand cut-points which serve as the default option in the popular GGIR software package misclassified 30% of the light intensity trials as sedentary and underestimated the intensity of moderate and vigorous intensity trials 75% of the time.
Published ActiGraph cut-points for the wrist, developed specifically for school-aged youth, do not provide acceptable classification accuracy for estimating daily time spent in light, moderate, and vigorous intensity physical activity. The development and deployment of more robust accelerometer data reduction methods such as functional data analysis and machine learning approaches continues to be a research priority.
腕部佩戴的加速度计佩戴方便,依从性更高。然而,将所得输出转换为身体活动(PA)强度预测的方法发展缓慢,大多数研究人员仍继续采用基于强度的阈值或切点的做法。本研究评估了七组先前发表的针对腕部佩戴的ActiGraph加速度计数据的特定于青少年的切点的分类准确性。
18名儿童和青少年[平均年龄(±标准差)14.6±2.4岁,10名男孩,8名女孩]完成了12项标准化活动试验。在每次试验期间,参与者在腕部佩戴ActiGraph GT3X+三轴加速度计,并使用Oxycon Mobile便携式量热系统直接测量能量消耗(青少年代谢当量)。评估了七组先前发表的ActiGraph切点:Crouter回归垂直轴、Crouter回归向量大小、Crouter ROC曲线垂直轴、Crouter ROC曲线向量大小、Chandler ROC曲线垂直轴、Chandler ROC曲线向量大小和Hildebrand ENMO。通过加权Kappa评估分类准确性。生成混淆矩阵以总结分类准确性并识别错误分类模式。
这些切点与直接测量的PA强度仅表现出中等一致性,Kappa值范围为0.45至0.58。尽管这些切点对久坐行为的分类准确(>95%),但对轻度(3-51%)、中度(12-45%)和剧烈强度试验(30-88%)的分类准确性普遍较差。所有切点都低估了步行试验的真实强度,错误率范围为35%至100%,而需要大量上身和/或手臂运动的活动试验强度则一直被高估。在流行的GGIR软件包中作为默认选项的Hildebrand切点将30%的轻度强度试验错误分类为久坐,并在75%的时间内低估了中度和剧烈强度试验的强度。
专门为学龄青少年开发的已发表的腕部ActiGraph切点,在估计轻度、中度和剧烈强度身体活动的每日时间方面,不能提供可接受的分类准确性。开发和应用更强大的加速度计数据简化方法,如功能数据分析和机器学习方法,仍然是研究的重点。