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An Efficient Diagnosis System for Parkinsons Disease Using Kernel-Based Extreme Learning Machine with Subtractive Clustering Features Weighting Approach

机译:基于核的极限学习机和减法聚类特征加权方法的帕金森病高效诊断系统

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摘要

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.
机译:引入了一种新的混合方法SCFW-KELM,该方法结合了有效的减法聚类特征权重和基于快速分类器核的极限学习机(KELM),用于诊断PD。在所提出的方法中,SCFW用作数据预处理工具,旨在减少PD数据集特征的方差,以进一步提高KELM分类器的诊断准确性。已经详细研究了内核函数类型对KELM性能的影响。已经针对PD数据集严格评估了所提出方法的效率和有效性,包括分类准确度,灵敏度,特异性,受体工作特征(ROC)曲线下面积(AUC),f量度和kappa统计值。实验结果表明,所提出的SCFW-KELM明显优于文献中基于SVM,基于KNN和ELM的方法和其他方法,并通过10倍交叉验证方案获得了迄今为止分类报告的最高分类结果。准确度为99.49%,灵敏度为100%,特异性为99.39%,AUC为99.69%,f值值为0.9964,卡伯值为0.9867。很有希望的是,所提出的方法可能会成为功能强大,性能优异的PD诊断的新方法。

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