College of Electrical Engineering, Sichuan University, Chengdu, 610065, China.
School of Information Science and Technology, Xichang University, Xichang, 615000, China.
Med Biol Eng Comput. 2020 Sep;58(9):2071-2082. doi: 10.1007/s11517-020-02215-8. Epub 2020 Jul 9.
Conduct disorder (CD) is an important mental health problem in childhood and adolescence. There is presently a trend of revealing neural mechanisms using measures of brain networks. This study goes further by presenting a classification scheme to distinguish subjects with CD from typically developing healthy subjects based on measures of small-world networks. In this study, small-world networks were constructed, and feature data were generated for both the CD and healthy control (HC) groups. Two methods of feature selection, including the F-score and feature projection with singular value decomposition (SVD), were used to extract the feature data. Furthermore, and importantly, the classification performances were compared between the results from the two methods of feature selection. The selected feature data by SVD were employed to train three classifiers-least squares support vector machine (LS-SVM), naive Bayes and K-nearest neighbour (KNN)-for CD classification. Cross-validation results from 36 subjects showed that CD patients can be separated from HC with a sensitivity, specificity and overall accuracy of 88.89%, 100% and 94.44%, respectively, by using the LS-SVM classifier. These findings suggest that the combination of the LS-SVM classifier with SVD can achieve a higher degree of accuracy for CD diagnosis than the naive Bayes and KNN classifiers. Graphical abstract.
注意障碍(CD)是儿童和青少年期重要的精神健康问题。目前,使用脑网络测量方法来揭示神经机制的趋势日益明显。本研究更进一步,提出了一种分类方案,基于小世界网络的测量方法,将 CD 患者与典型的健康对照组区分开来。在这项研究中,构建了小世界网络,并为 CD 和健康对照组(HC)生成了特征数据。使用两种特征选择方法,包括 F 分数和基于奇异值分解(SVD)的特征投影,来提取特征数据。此外,重要的是,比较了两种特征选择方法的分类性能。使用 SVD 选择的特征数据用于训练三个分类器-最小二乘支持向量机(LS-SVM)、朴素贝叶斯和 K-最近邻(KNN)-用于 CD 分类。来自 36 名受试者的交叉验证结果表明,使用 LS-SVM 分类器,CD 患者可与 HC 以 88.89%、100%和 94.44%的敏感性、特异性和总准确率区分开来。这些发现表明,LS-SVM 分类器与 SVD 的结合可以比朴素贝叶斯和 KNN 分类器实现更高的 CD 诊断准确性。