an efficient diagnosis system for parkinson’s disease using kernel-based extreme learning machine with subtractive clustering features weighting approach

an efficient diagnosis system for parkinson’s disease using kernel-based extreme learning machine with subtractive clustering features weighting approach

;Chao Ma;Jihong Ouyang;Hui-Ling Chen;Xue-Hua Zhao
advanced functional materials 2014 Vol. 2014 pp. -
101
ma2014computationalan

Abstract

A novel hybrid method named SCFW-KELM, which integrates effective subtractive clustering features weighting and a fast classifier kernel-based extreme learning machine (KELM), has been introduced for the diagnosis of PD. In the proposed method, SCFW is used as a data preprocessing tool, which aims at decreasing the variance in features of the PD dataset, in order to further improve the diagnostic accuracy of the KELM classifier. The impact of the type of kernel functions on the performance of KELM has been investigated in detail. The efficiency and effectiveness of the proposed method have been rigorously evaluated against the PD dataset in terms of classification accuracy, sensitivity, specificity, area under the receiver operating characteristic (ROC) curve (AUC), f-measure, and kappa statistics value. Experimental results have demonstrated that the proposed SCFW-KELM significantly outperforms SVM-based, KNN-based, and ELM-based approaches and other methods in the literature and achieved highest classification results reported so far via 10-fold cross validation scheme, with the classification accuracy of 99.49%, the sensitivity of 100%, the specificity of 99.39%, AUC of 99.69%, the f-measure value of 0.9964, and kappa value of 0.9867. Promisingly, the proposed method might serve as a new candidate of powerful methods for the diagnosis of PD with excellent performance.

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ID: 219166
Ref Key: ma2014computationalan
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219166
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10.1155/2014/985789
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