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Enhancing Parkinson’s Disease Prediction Using Machine Learning and Feature Selection Methods

作     者:Faisal Saeed Mohammad Al-Sarem Muhannad Al-Mohaimeed Abdelhamid Emara Wadii Boulila Mohammed Alasli Fahad Ghabban 

作者机构:College of Computer Science and EngineeringTaibah UniversityMedina41477Saudi Arabia School of Computing and Digital TechnologyBirmingham City UniversityBirminghamB47XGUnited Kingdom Information System DepartmentSaba’a Region UniversityMareebYemen Computers and Systems Engineering DepartmentAl-Azhar UniversityCairo11884Egypt RIADI LaboratoryNational School of Computer SciencesUniversity of ManoubaManouba2010Tunisia 

出 版 物:《Computers, Materials & Continua》 (计算机、材料和连续体(英文))

年 卷 期:2022年第71卷第6期

页      面:5639-5657页

核心收录:

学科分类:1002[医学-临床医学] 10[医学] 

基  金:This research was funded by the Deputyship for Research&Innovation Ministry of Education in Saudi Arabia under the Project Number(77/442) 

主  题:Filter-based feature selection methods machine learning parkinson’s disease wrapper-based feature selection methods 

摘      要:Several millions of people suffer from Parkinson’s disease ***’s affects about 1%of people over 60 and its symptoms increase with *** voice may be affected and patients experience abnormalities in speech that might not be noticed by listeners,but which could be analyzed using recorded speech *** the huge advancements of technology,the medical data has increased dramatically,and therefore,there is a need to apply data mining and machine learning methods to extract new knowledge from this *** classification methods were used to analyze medical data sets and diagnostic problems,such as Parkinson’s Disease(PD).In addition,to improve the performance of classification,feature selection methods have been extensively used in many *** paper aims to propose a comprehensive approach to enhance the prediction of PD using several machine learning methods with different feature selection methods such as filter-based and *** dataset includes 240 recodes with 46 acoustic features extracted from3 voice recording replications for 80 *** experimental results showed improvements when wrapper-based features selection method was used with K-NN classifier with accuracy of 88.33%.The best obtained results were compared with other studies and it was found that this study provides comparable and superior results.

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