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Artificial neural networks to predict activity type and energy expenditure in youth

机译:人工神经网络预测年轻人的活动类型和能量消耗

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Previous studies have demonstrated that pattern recognition approaches to accelerometer data reduction are feasible and moderately accurate in classifying activity type in children. Whether pattern recognition techniques can be used to provide valid estimates of physical activity (PA) energy expenditure in youth remains unexplored in the research literature. Purpose: The objective of this study is to develop and test artificial neural networks (ANNs) to predict PA type and energy expenditure (PAEE) from processed accelerometer data collected in children and adolescents. Methods: One hundred participants between the ages of 5 and 15 yr completed 12 activity trials that were categorized into five PA types: sedentary, walking, running, light-intensity household activities or games, and moderate-to-vigorous-intensity games or sports. During each trial, participants wore an ActiGraph GT1M on the right hip, and V?O 2 was measured using the Oxycon Mobile (Viasys Healthcare, Yorba Linda, CA) portable metabolic system. ANNs to predict PA type and PAEE (METs) were developed using the following features: 10th, 25th, 50th, 75th, and 90th percentiles and the lag one autocorrelation. To determine the highest time resolution achievable, we extracted features from 10-, 15-, 20-, 30-, and 60-s windows. Accuracy was assessed by calculating the percentage of windows correctly classified and root mean square error (RMSE). Results: As window size increased from 10 to 60 s, accuracy for the PA-type ANN increased from 81.3% to 88.4%. RMSE for the MET prediction ANN decreased from 1.1 METs to 0.9 METs. At any given window size, RMSE values for the MET prediction ANN were 30-40% lower than the conventional regression-based approaches. Conclusions: ANNs can be used to predict both PA type and PAEE in children and adolescents using count data from a single waist mounted accelerometer.
机译:以前的研究表明,模式识别方法可用于减少加速度计数据,在对儿童活动类型进行分类时是可行的,并且具有中等准确性。模式识别技术是否可用于提供青少年身体活动(PA)能量消耗的有效估计,在研究文献中尚待探讨。目的:本研究的目的是开发和测试人工神经网络(ANN),以从收集的儿童和青少年加速度计数据中预测PA类型和能量消耗(PAEE)。方法:五岁至十五岁的一百名参与者完成了12项活动试验,分为五种PA类型:久坐,步行,跑步,轻度家庭活动或游戏,中度至剧烈运动或运动。在每次试验期间,参与者在右髋上佩戴ActiGraph GT1M,并使用Oxycon Mobile(Viasys Healthcare,Yorba Linda,CA)便携式代谢系统测量V?O 2。使用以下特征开发了用于预测PA类型和PAEE(METs)的ANN:第10、25、50、75和90%百分位数和一个自相关滞后。为了确定可达到的最高时间分辨率,我们从10、15、20、30和60秒窗口中提取了特征。通过计算正确分类的窗口的百分比和均方根误差(RMSE)来评估准确性。结果:随着窗口大小从10 s增加到60 s,PA型ANN的准确性从81.3%增加到88.4%。 MET预测ANN的RMSE从1.1 MET降低到0.9 MET。在任何给定的窗口大小下,MET预测ANN的RMSE值都比传统的基于回归的方法低30-40%。结论:人工神经网络可以使用单腰安装式加速度计的计数数据来预测儿童和青少年的PA类型和PAEE。

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