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不同分类算法在帕金森病检测中使用不同特征选择方法的性能分析。

Performance analysis of different classification algorithms using different feature selection methods on Parkinson's disease detection.

机构信息

Department of Electrical and Electronics Engineering, Eastern Mediterranean University, Gazimagusa, Mersin 10, Turkey.

Department of Electrical and Electronics Engineering, Eastern Mediterranean University, Gazimagusa, Mersin 10, Turkey.

出版信息

J Neurosci Methods. 2018 Nov 1;309:81-90. doi: 10.1016/j.jneumeth.2018.08.017. Epub 2018 Sep 1.

Abstract

BACKGROUND

In diagnosis of neurodegenerative diseases, the three-dimensional magnetic resonance imaging (3D-MRI) has been heavily researched. Parkinson's disease (PD) is one of the most common neurodegenerative disorders.

NEW METHOD

The performances of five different classification approaches using five different attribute rankings each followed with an adaptive Fisher stopping criteria feature selection (FS) method are evaluated. To improve the performance of PD detection, a source fusion technique which combines the gray matter (GM) and white (WM) tissue maps and a decision fusion technique which combines the outputs of all classifiers using the correlation-based feature selection (CFS) method by majority voting are used.

RESULTS

Among the five FS methods, the CFS provides the highest results for all five classification algorithms and the SVM provides the best classification performances for all five different FS methods. The classification accuracy of 77.50% and 81.25% are obtained for the GM and WM tissues, respectively. However, the fusion of GM and WM datasets improves the classification accuracy of the proposed methodology up to 95.00%.

COMPARISON WITH EXISTING METHODS

An f-contrast is used to generate 3D masks for GM and WM datasets and a fusion technique, combining the GM and WM datasets is used. Several classification algorithms using several FS methods are performed and a decision fusion technique is used.

CONCLUSIONS

Using the combination of the 3D masked GM and WM tissue maps and the fusion of the outputs of multiple classifiers with CFS method gives the classification accuracy of 95.00%.

摘要

背景

在神经退行性疾病的诊断中,三维磁共振成像(3D-MRI)已经得到了广泛的研究。帕金森病(PD)是最常见的神经退行性疾病之一。

新方法

评估了五种不同分类方法的性能,每种方法都使用五种不同的属性排序,然后使用自适应 Fisher 停止准则特征选择(FS)方法进行特征选择。为了提高 PD 检测的性能,使用了一种源融合技术,该技术结合了灰质(GM)和白质(WM)组织图,以及一种决策融合技术,该技术使用基于相关性的特征选择(CFS)方法通过多数表决来结合所有分类器的输出。

结果

在五种 FS 方法中,CFS 为所有五种分类算法提供了最高的结果,SVM 为所有五种不同的 FS 方法提供了最佳的分类性能。GM 和 WM 组织的分类准确率分别达到 77.50%和 81.25%。然而,GM 和 WM 数据集的融合将所提出方法的分类准确率提高到 95.00%。

与现有方法的比较

使用 f-contrast 为 GM 和 WM 数据集生成 3D 掩模,并使用融合技术融合 GM 和 WM 数据集。使用几种 FS 方法进行了几种分类算法,并使用决策融合技术。

结论

使用组合的 3D 掩蔽 GM 和 WM 组织图和使用 CFS 方法融合多个分类器的输出可以达到 95.00%的分类准确率。

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