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Comparison Between Decision Tree and Genetic Programming to Distinguish Healthy from Stroke Postural Sway Patterns

机译:决策树与遗传编程的比较,以区分中风姿势摇摆模式

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Maintaining balance is a motor task of crucial importance for humans to perform their daily activities safely and independently. Studies in the field of Artificial Intelligence have considered different classification methods in order to distinguish healthy subjects from patients with certain motor disorders based on their postural strategies during the balance control. The main purpose of this paper is to compare the performance between Decision Tree (DT) and Genetic Programming (GP) -both classification methods of easy interpretation by health professionals - to distinguish postural sway patterns produced by healthy and stroke individuals based on 16 widely used posturographic variables. For this purpose, we used a posturographic dataset of time-series of center-of-pressure displacements derived from 19 stroke patients and 19 healthy matched subjects in three quiet standing tasks of balance control. Then, DT and GP models were trained and tested under two different experiments where accuracy, sensitivity and specificity were adopted as performance metrics. The DT method has performed statistically significant (P < 0.05) better in both cases, showing for example an accuracy of 72.8% against 69.2% from GP in the second experiment of this paper.
机译:保持平衡是对人类至关重要的运动任务,以安全独立地进行日常活动。人工智能领域的研究已经考虑了不同的分类方法,以便根据平衡控制期间的姿势策略来区分某些电机障碍患者的健康受试者。本文的主要目的是比较决策树(DT)和遗传编程(GP) - 卫生专业人士轻松解释的分类方法的性能 - 以基于16次广泛使用的16种,区分健康和中风个体产生的姿势摇摆模式后拍变量。为此目的,我们使用了从19次中风患者的压力中心系列的时间系列的后测地数据集,并在三个安静的平衡控制方面的19个健康匹配主题。然后,在两种不同的实验下训练和测试DT和GP模型,其中采用精确度,敏感性和特异性作为性能指标。在这两种情况下,DT方法在两种情况下更好地进行了统计学意义(P <0.05),例如,在本文的第二个实验中,例如在GP中的72.8%的精度为72.8%。

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