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Linear and non-linear predictive models in predicting motor assessment scale of stroke patients using non-motorized rehabilitation device.

Mazlan, Sulaiman and Abdul Rahman, Hisyam and Emhemed, Abdul Rahman A. A. and Ahmmad, Siti Nor Zawani and Noordin, Muhammad Khair and Mohd. Rostam Alhusni, Nurul Aisyah and Abdullah, Muhammad Najib (2023) Linear and non-linear predictive models in predicting motor assessment scale of stroke patients using non-motorized rehabilitation device. International Journal of Integrated Engineering, 15 (4). pp. 237-247. ISSN 2229-838X

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Official URL: http://dx.doi.org/10.30880/ijie.2023.15.04.020

Abstract

Various predictive models, both linear and non-linear, such as Multiple Linear Regression (MLR), Partial Least Squares (PLS), and Artificial Neural Network (ANN), were frequently employed for predicting the clinical scores of stroke patients. Nonetheless, the effectiveness of these predictive models is somewhat impacted by how features are selected from the data to serve as inputs for the model. Hence, it's crucial to explore an ideal feature selection method to attain the most accurate prediction performance. This study primarily aims to evaluate the performance of two non-motorized three-degree-of-freedom devices, namely iRest and ReHAD using MLR, PLS and ANN predictive models and to examine the usefulness of including a hand grip function with the assessment device. The results reveal that ReHAD coupled with non-linear model (i.e. ANN) has a better prediction performance compared to iRest and at once proving that by including the hand grip function into the assessment device may increase the prediction accuracy in predicting Motor Assessment Scale (MAS) score of stroke subjects. Furthermore, these findings imply that there is a substantial association between kinematic variables and MAS scores, and as such the ANN model with a feature selection of twelve kinematic variables can predict stroke patients' MAS scores.

Item Type:Article
Uncontrolled Keywords:Artificial neural network; grip strength; multiple linear regression; partial least square; upper limb.
Subjects:Q Science > Q Science (General)
Divisions:School of Professional and Continuing Education
ID Code:105733
Deposited By: Muhamad Idham Sulong
Deposited On:13 May 2024 07:26
Last Modified:13 May 2024 07:26

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