Faculty of Engineering, Environment and Computing, Coventry University, Coventry, UK.
School of Life Sciences, Coventry University, Coventry, UK.
Eur J Sport Sci. 2021 Jun;21(6):918-926. doi: 10.1080/17461391.2020.1789749. Epub 2020 Jul 16.
This study examined a series of machine learning models, evaluating their effectiveness in assessing children's energy expenditure, in terms of the metabolic equivalents (MET) of physical activity (PA), from triaxial accelerometery. The study also determined the impact of the sensor placement (waist, ankle or wrist) on the machine learning model's predictive performance. Twenty-eight healthy Caucasian children aged 8-11years (13 girls, 15 boys) undertook a series of activities reflective of different levels of PA (lying supine, seated and playing with Lego, slow walking, medium walking, and a medium paced run, instep passing a football, overarm throwing and catching and stationary cycling). Energy expenditure and physical activity were assessed during all activities using accelerometers (GENEActiv monitor) worn on four locations (i.e. non-dominant wrist, dominant wrist, dominant waist, dominant ankle) and breath-by-breath calorimetry data. MET values ranged from 1.2 ± 0.2 for seated playing with Lego to 4.1 ± 0.8 for running at 6.5 kmph. Machine learning models were used to determine the MET values from the accelerometer data and to determine which placement location performed more effectively in predicting the PA data. The study identified that novel machine learning models can be used to accurately predict METs, with 90% accuracy. The models showed a preference towards the dominant wrist or ankle as the movement in those positions were more consistent during PA. It was evident that machine learning models using these locations can be effectively used to accurately predict METs for PA in children.
本研究通过三轴加速度计评估了一系列机器学习模型在评估儿童身体活动代谢当量(MET)能量消耗方面的有效性。研究还确定了传感器放置位置(腰部、脚踝或手腕)对机器学习模型预测性能的影响。28 名健康的白种人儿童(13 名女孩,15 名男孩)进行了一系列反映不同水平身体活动的活动(仰卧、坐姿和玩乐高、慢走、中速走、中速跑、脚背传球、过顶投掷和接球以及固定自行车)。在所有活动中,使用加速度计(GENEActiv 监测器)在四个位置(即非优势手腕、优势手腕、优势腰部、优势脚踝)和呼吸呼吸热量计数据评估能量消耗和身体活动。MET 值范围从坐姿玩乐高的 1.2±0.2 到以 6.5kmph 跑步的 4.1±0.8。使用机器学习模型从加速度计数据确定 MET 值,并确定哪个放置位置在预测 PA 数据方面更有效。研究表明,新的机器学习模型可以准确预测 MET 值,准确率为 90%。这些模型更倾向于将优势手腕或脚踝作为首选位置,因为在这些位置的运动在 PA 期间更一致。显然,使用这些位置的机器学习模型可以有效地用于准确预测儿童 PA 的 MET 值。