Institute of Health and Biomedical Innovation at Queensland Centre for Children's Health Research, Queensland University of Technology, South Brisbane 4101, Australia.
Faculty of Health, School of Exercise and Nutrition Sciences, Queensland University of Technology, Kelvin Grove 4059, Australia.
Sensors (Basel). 2020 Jul 17;20(14):3976. doi: 10.3390/s20143976.
Pattern recognition methodologies, such as those utilizing machine learning (ML) approaches, have the potential to improve the accuracy and versatility of accelerometer-based assessments of physical activity (PA). Children with cerebral palsy (CP) exhibit significant heterogeneity in relation to impairment and activity limitations; however, studies conducted to date have implemented "one-size fits all" group (G) models. Group-personalized (GP) models specific to the Gross Motor Function Classification (GMFCS) level and fully-personalized (FP) models trained on individual data may provide more accurate assessments of PA; however, these approaches have not been investigated in children with CP. In this study, 38 children classified at GMFCS I to III completed laboratory trials and a simulated free-living protocol while wearing an ActiGraph GT3X+ on the wrist, hip, and ankle. Activities were classified as sedentary, standing utilitarian movements, or walking. In the cross-validation, FP random forest classifiers (99.0-99.3%) exhibited a significantly higher accuracy than G (80.9-94.7%) and GP classifiers (78.7-94.1%), with the largest differential observed in children at GMFCS III. When evaluated under free-living conditions, all model types exhibited significant declines in accuracy, with FP models outperforming G and GP models in GMFCS levels I and II, but not III. Future studies should evaluate the comparative accuracy of personalized models trained on free-living accelerometer data.
模式识别方法,如利用机器学习(ML)方法,有可能提高基于加速度计的体力活动(PA)评估的准确性和通用性。脑瘫(CP)儿童在损伤和活动受限方面表现出显著的异质性;然而,迄今为止进行的研究都采用了“一刀切”的组(G)模型。针对总体运动功能分类系统(GMFCS)水平的组个性化(GP)模型和基于个体数据训练的全个性化(FP)模型可能提供更准确的 PA 评估;然而,这些方法尚未在 CP 儿童中进行研究。在这项研究中,38 名 GMFCS I 至 III 级的儿童在手腕、臀部和脚踝佩戴 ActiGraph GT3X+进行实验室试验和模拟自由生活协议。活动被分类为久坐、站立实用运动或行走。在交叉验证中,FP 随机森林分类器(99.0-99.3%)的准确性明显高于 G(80.9-94.7%)和 GP 分类器(78.7-94.1%),在 GMFCS III 级儿童中观察到的差异最大。在自由生活条件下进行评估时,所有模型类型的准确性都显著下降,FP 模型在 GMFCS 水平 I 和 II 中的表现优于 G 和 GP 模型,但在 GMFCS 水平 III 中表现不佳。未来的研究应该评估基于自由生活加速度计数据训练的个性化模型的比较准确性。