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Analysis and Classification of Stride Patterns Associated with Children Development Using Gait Signal Dynamics Parameters and Ensemble Learning Algorithms

机译:使用步态信号动力学参数和集成学习算法对与儿童发育相关的步幅模式进行分析和分类

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摘要

Measuring stride variability and dynamics in children is useful for the quantitative study of gait maturation and neuromotor development in childhood and adolescence. In this paper, we computed the sample entropy (SampEn) and average stride interval (ASI) parameters to quantify the stride series of 50 gender-matched children participants in three age groups. We also normalized the SampEn and ASI values by leg length and body mass for each participant, respectively. Results show that the original and normalized SampEn values consistently decrease over the significance level of the Mann-Whitney U test (p < 0.01) in children of 3–14 years old, which indicates the stride irregularity has been significantly ameliorated with the body growth. The original and normalized ASI values are also significantly changing when comparing between any two groups of young (aged 3–5 years), middle (aged 6–8 years), and elder (aged 10–14 years) children. Such results suggest that healthy children may better modulate their gait cadence rhythm with the development of their musculoskeletal and neurological systems. In addition, the AdaBoost.M2 and Bagging algorithms were used to effectively distinguish the children's gait patterns. These ensemble learning algorithms both provided excellent gait classification results in terms of overall accuracy (≥90%), recall (≥0.8), and precision (≥0.8077).
机译:测量儿童的步幅变异性和动态性有助于定量研究儿童和青少年步态成熟和神经运动发育。在本文中,我们计算了样本熵(SampEn)和平均步幅间隔(ASI)参数,以量化三个年龄组中50位性别匹配的儿童参与者的步幅序列。我们还分别通过每个参与者的腿长和体重来标准化SampEn和ASI值。结果表明,在3-14岁的儿童中,原始的SampEn值和标准化的SampEn值在Mann-Whitney U检验的显着性水平上持续下降(p <0.01),这表明步幅的不规则性随着身体的生长而得到明显改善。在比较两组(3至5岁),中级(6至8岁)和老年(10至14岁)儿童时,原始的和标准化的ASI值也有很大变化。这样的结果表明,健康的孩子可能会随着肌肉骨骼和神经系统的发展而更好地调节步态节奏节奏。此外,还使用AdaBoost.M2和Bagging算法来有效地区分儿童的步态模式。这些整体学习算法在整体准确性(≥90%),召回率(≥0.8)和准确性(≥0.8077)方面均提供了出色的步态分类结果。

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