Abstract
Parkinson’s disease (PD) is one of the most widespread diseases that, primarily, affects the motor system of the neural central system. In fact, PD is characterized by tremors, stiffness of the muscles, imprecise gait movements, and vocal impairment. An accurate diagnosis of Parkinson’s disease is usually based on many neurological, psychological, and physical investigations despite the fact that its main symptoms cannot be easily decorrelated from other diseases. As such, many automatic diagnostic support systems based on Machine Learning approaches have been recently employed to assist the PD patients' assessment. In the current paper, a comparative analysis was performed on machine learning (ML) techniques for PD identification based on voice disorders analysis. These ML methods included the Support Vector Machine (SVM), K-Nearest-Neighbors (KNN), and Decision Tree (DT) algorithms. In addition, two feature selection techniques; mRMR and ReliefF; are used to further improve the performance of the proposed classifiers. The efficiency of the developed model has been evaluated based on accuracy, sensitivity, specificity and AUC metrics, and it is higher than existing approaches. The simulation results show that the KNN algorithm yielded the best classifier performance in term of accuracy and reached an AUC of 98.26%.
Highlights
Parkinson’s disease is a neurodegenerative disease that affects the motor system of the human’s body central nervous system, preventing the brain from controlling the movements
Research works have shown that the Parkinson’s disease (PD) gets started before the motor symptom onset and the voice disorder affects roughly 90% of PD patients [1]
This study was based on the analysis of three different Machine Learning Algorithms’ performance to assist the PD patients' prediction. Those algorithms are applied to the acoustic dataset, using features based on voice signals for both healthy patients and PD patients
Summary
Parkinson’s disease is a neurodegenerative disease that affects the motor system of the human’s body central nervous system, preventing the brain from controlling the movements. The symptoms of Parkinson’s disease can be classified into motor symptoms and non-motor symptoms. The motor symptoms cover tremors and slowing of movement (hands/legs) and constipation, difficulties in performing daily activities and shuffling of footsteps while walking. Loss or decrease of smell sense, speech problems, constipation, fatigue, insomnia and difficulty memorizing. Research works have shown that the PD gets started before the motor symptom onset and the voice disorder affects roughly 90% of PD patients [1]. Researchers are looking for improved methods to recognize the non-motor symptoms that appear early and could slow down the course of the disease
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