Institute of Health and Biomedical Innovation at QLD Centre for Children's Health Research, School of Exercise and Nutrition Sciences, Queensland University of Technology, 62 Graham St, South Brisbane, QLD, 4101, Australia.
Department of Physical Therapy and Rehabilitation Sciences, Drexel University, 1601 Cherry St., Philadelphia, PA, USA.
J Neuroeng Rehabil. 2018 Nov 15;15(1):105. doi: 10.1186/s12984-018-0456-x.
Cerebral palsy (CP) is the most common physical disability among children (2.5 to 3.6 cases per 1000 live births). Inadequate physical activity (PA) is a major problem effecting the health and well-being of children with CP. Practical, yet accurate measures of PA are needed to evaluate the effectiveness of surgical and therapy-based interventions to increase PA. Accelerometer-based motion sensors have become the standard for objectively measuring PA in children and adolescents; however, current methods for estimating physical activity intensity in children with CP are associated with significant error and may dramatically underestimate HPA in children with more severe mobility limitations. Machine learning (ML) models that first classify the PA type and then predict PA intensity or energy expenditure using activity specific regression equations may be more accurate than standalone regression models. However, the feasibility and validity of ML methods has not been explored in youth with CP. Therefore, the purpose of this study was to develop and test ML models for the automatic identification of PA type in ambulant children with CP.
Twenty two children and adolescents (mean age: 12.8 ± 2.9 y) with CP classified at GMFCS Levels I to III completed 7 activity trials while wearing an ActiGraph GT3X+ accelerometer on the hip and wrist. Trials were categorised as sedentary (SED), standing utilitarian movements (SUM), comfortable walking (CW), and brisk walking (BW). Random forest (RF), support vector machine (SVM), and binary decision tree (BDT) classifiers were trained with features extracted from the vector magnitude (VM) of the raw acceleration signal using 10 s non-overlapping windows. Performance was evaluated using leave-one-subject out cross validation.
SVM (82.0-89.0%) and RF (82.6-88.8%) provided significantly better classification accuracy than BDT (76.1-86.2%). Hip (82.7-85.5%) and wrist (76.1-82.6%) classifiers exhibited comparable prediction accuracy, while the combined hip and wrist (86.2-89.0%) classifiers achieved the best overall performance. For all classifiers, recognition accuracy was excellent for SED (94.1-97.9%), good to excellent for SUM (74.0-96.6%) and brisk walking (71.5-86.0%), and modest for comfortable walking (47.6-70.4%). When comfortable and brisk walking were combined into a single walking class, recognition accuracy ranged from 90.3 to 96.5%.
ML methods provided acceptable classification accuracy for detection of a range of activities commonly performed by ambulatory children with CP. The resultant models can help clinicians more effectively monitor bouts of brisk walking in the community. The results indicate that 2-step models that first classify PA type and then predict energy expenditure using activity specific regression equations are worthy of exploration in this patient group.
脑瘫(CP)是儿童中最常见的身体残疾(每 1000 例活产中就有 2.5 到 3.6 例)。身体活动不足是影响脑瘫儿童健康和福祉的主要问题。需要实用且准确的身体活动测量方法来评估手术和基于治疗的干预措施增加身体活动的效果。基于加速度计的运动传感器已成为客观测量儿童和青少年身体活动的标准;然而,目前用于估计脑瘫儿童身体活动强度的方法存在很大误差,并且可能会大大低估更严重运动障碍儿童的高强度身体活动。首先对身体活动类型进行分类,然后使用特定于活动的回归方程预测身体活动强度或能量消耗的机器学习(ML)模型可能比独立的回归模型更准确。然而,ML 方法的可行性和有效性尚未在脑瘫青少年中得到探索。因此,本研究的目的是开发和测试用于自动识别脑瘫可步行儿童身体活动类型的 ML 模型。
22 名 GMFCS 分级 I 至 III 级的脑瘫儿童和青少年(平均年龄:12.8±2.9 岁)在髋部和腕部佩戴 ActiGraph GT3X+加速度计完成 7 项活动试验。试验分为久坐(SED)、站立实用运动(SUM)、舒适步行(CW)和快速步行(BW)。随机森林(RF)、支持向量机(SVM)和二叉决策树(BDT)分类器使用原始加速度信号的矢量幅度(VM)提取的特征进行训练,使用 10 秒非重叠窗口。使用留一受试者外交叉验证评估性能。
SVM(82.0-89.0%)和 RF(82.6-88.8%)提供的分类准确性明显优于 BDT(76.1-86.2%)。髋部(82.7-85.5%)和腕部(76.1-82.6%)分类器表现出相当的预测准确性,而髋部和腕部联合分类器(86.2-89.0%)则达到了最佳的整体性能。对于所有分类器,SED(94.1-97.9%)的识别准确率非常高,SUM(74.0-96.6%)和快速步行(71.5-86.0%)的识别准确率较好,舒适步行(47.6-70.4%)的识别准确率适中。当舒适步行和快速步行合并为一个步行类别时,识别准确率在 90.3%到 96.5%之间。
ML 方法对检测脑瘫可步行儿童常见的一系列活动具有可接受的分类准确性。由此产生的模型可以帮助临床医生更有效地监测社区中快速步行的发作。结果表明,对于首先对身体活动类型进行分类,然后使用特定于活动的回归方程预测能量消耗的两步模型,在该患者群体中值得进一步探索。