Multiple Linear Regression in Predicting Motor Assessment Scale of Stroke Patients

S. Mazlan, Hisyam Abdul Rahman, Babul Salam Ksm Kader Ibrahim, Yeong Che Fai, Nurul Aisyah Mohd Rostam Alhusni
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Abstract

The Multiple Linear Regression (MLR) is a predictive model that was commonly used to predict the clinical score of stroke patients. However, the performance of the predictive model slightly depends on the method of feature selection on the data as input predictor to the model. Therefore, appropriate feature selection method needs to be investigated in order to give an optimum performance of the prediction. This paper aims (i) to develop predictive model for Motor Assessment Scale (MAS) prediction of stroke patients, (ii) to establish relationship between kinematic variables and MAS score using a predictive model, (iii) to evaluate the prediction performance of a predictive model based on root mean squared error (RMSE) and coefficient of determination R2. Three types of feature selection methods involve in this study which are the combination of all kinematic variables, the combination of the best four or less kinematic variables, and the combination of kinematic variables based on p < 0.05. The prediction performance of MLR model between two assessment devices (iRest and ReHAD) has been compared. As the result, MLR model for ReHAD with the combination of kinematic variables that has p < 0.05 as input predictor has the best performance with Draw I (RMSEte = 1.9228, R2 = 0.8623), Draw Diamond (RMSEte = 2.6136, R2 = 0.7477), and Draw Circle (RMSEte = 2.1756, R2 = 0.8268). These finding suggest that the relationship between kinematic variables and MAS score of stoke patients is strong, and the MLR model with feature selection of kinematic variables that has p < 0.05 is able to predict the MAS score of stroke patients using the kinematic variables extracted from the assessment device.
多元线性回归预测脑卒中患者运动评定量表
多元线性回归(MLR)是一种常用的预测脑卒中患者临床评分的预测模型。然而,预测模型的性能稍微依赖于作为模型输入预测器的数据的特征选择方法。因此,需要研究合适的特征选择方法,以获得最佳的预测性能。本文旨在(1)建立脑卒中患者运动评估量表(Motor Assessment Scale, MAS)预测模型;(2)利用预测模型建立运动变量与MAS评分之间的关系;(3)评价基于均方根误差(root mean squared error, RMSE)和决定系数R2的预测模型的预测性能。本研究涉及三种类型的特征选择方法,即所有运动学变量的组合、最优的四个或更少的运动学变量的组合以及基于p < 0.05的运动学变量的组合。比较了两种评估装置(iRest和ReHAD)的MLR模型的预测性能。结果表明,以p < 0.05的运动变量组合作为输入预测因子的ReHAD MLR模型在Draw I (RMSEte = 1.9228, R2 = 0.8623)、Draw Diamond (RMSEte = 2.6136, R2 = 0.7477)和Draw Circle (RMSEte = 2.1756, R2 = 0.8268)中表现最佳。这些发现表明,运动变量与脑卒中患者的MAS评分之间存在较强的相关性,具有p < 0.05的运动变量特征选择的MLR模型能够利用评估装置提取的运动变量预测脑卒中患者的MAS评分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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