Title of article :
An Intelligent Parkinson’s Disease Diagnostic System Based on a Chaotic Bacterial Foraging Optimization Enhanced Fuzzy KNN Approach
Author/Authors :
Cai, Zhennao School of Computer Science and Engineering - Northwestern Polytechnical University - Xi’an, China , Gu, Jianhua School of Computer Science and Engineering - Northwestern Polytechnical University - Xi’an, China , Wen, Caiyun Department of Radiology - The First Afliated Hospital of Wenzhou Medical University - Wenzhou - Zhejiang, China , Zhao, Dong Changchun Normal University - Changchun, China , Huang, Chunyu Changchun University of Science Technology - Changchun, China , Huang, Hui Wenzhou University - Wenzhou - Zhejiang, China , Tong, Changfei Wenzhou University - Wenzhou - Zhejiang, China , Li, Jun Wenzhou University - Wenzhou - Zhejiang, China , Chen, Huiling Wenzhou University - Wenzhou - Zhejiang, China
Pages :
24
From page :
1
To page :
24
Abstract :
Parkinson's disease (PD) is a common neurodegenerative disease, which has attracted more and more attention. Many artifcial intelligence methods have been used for the diagnosis of PD. In this study, an enhanced fuzzy k-nearest neighbor (FKNN) method for the early detection of PD based upon vocal measurements was developed. Te proposed method, an evolutionary instancebased learning approach termed CBFO-FKNN, was developed by coupling the chaotic bacterial foraging optimization with Gauss mutation (CBFO) approach with FKNN. Te integration of the CBFO technique efciently resolved the parameter tuning issues of the FKNN. Te efectiveness of the proposed CBFO-FKNN was rigorously compared to those of the PD datasets in terms of classifcation accuracy, sensitivity, specifcity, and AUC (area under the receiver operating characteristic curve). Te simulation results indicated the proposed approach outperformed the other fve FKNN models based on BFO, particle swarm optimization, Genetic algorithms, fruit fy optimization, and frefy algorithm, as well as three advanced machine learning methods including support vector machine (SVM), SVM with local learning-based feature selection, and kernel extreme learning machine in a 10-fold cross-validation scheme. Te method presented in this paper has a very good prospect, which will bring great convenience to the clinicians to make a better decision in the clinical diagnosis.
Keywords :
KNN , Fuzzy , Optimization , System
Journal title :
Computational and Mathematical Methods in Medicine
Serial Year :
2018
Full Text URL :
Record number :
2610588
Link To Document :
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