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Resting-State Functional Network Scale Effects and Statistical Significance-Based Feature Selection in Machine Learning Classification

机译:在机器学习分类中休息状态功能网络缩放效果和基于统计显着性的特征选择

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摘要

In recent years, functional brain network topological features have been widely used as classification features. Previous studies have found that network node scale differences caused by different network parcellation definitions significantly affect the structure of the constructed network and its topological properties. However, we still do not know how network scale differences affect the classification accuracy, performance of classification features, and effectiveness of the feature selection strategy using P values in terms of the machine learning method. This study used five scale parcellations, involving 90, 256, 497, 1003, and 1501 nodes. Three local properties of resting-state functional brain networks were selected (degree, betweenness centrality, and nodal efficiency), and the support vector machine method was used to construct classifiers to identify patients with major depressive disorder. We analyzed the impact of the five scales on classification accuracy. In addition, the effectiveness and redundancy of features obtained by the different scale parcellations were compared. Finally, traditional statistical significance (P value) was verified as a feature selection criterion. The results showed that the feature effectiveness of different scales was similar; in other words, parcellation with more regions did not provide more effective discriminative features. Nevertheless, parcellation with more regions did provide a greater quantity of discriminative features, which led to an improvement in the accuracy of the classification. However, due to the close distance between brain regions, the redundancy of parcellation with more regions was also greater. The traditional P value feature selection strategy is feasible with different scales, but our analysis showed that the traditional P0.05 threshold was too strict for feature selection. This study provides an important reference for the selection of network scales when applying topological properties of brain networks to machine learning methods.
机译:近年来,功能性大脑拓扑功能已被广泛用作分类特征。以前的研究发现,由不同网络局部定义引起的网络节点比例差异显着影响构建网络的结构及其拓扑特性。然而,我们仍然不知道网络规模的差异如何影响分类准确性,分类特征的性能,以及在机器学习方法方面使用P值的特征选择策略的有效性。本研究使用了五个刻度局部,涉及90,256,497,1003和1501个节点。选择了休息状态功能脑网络的三个局部特性(度,中心,中心,节点效率之间),并且支持向量机方法构建分类剂以识别具有重大抑郁症的患者。我们分析了五种尺度对分类准确性的影响。此外,比较了不同刻度局部得到的特征的有效性和冗余。最后,传统的统计显着性(P值)被验证为特征选择标准。结果表明,不同尺度的特征有效性相似;换句话说,具有更多区域的局部没有提供更有效的歧视特征。然而,具有更多区域的局部确实提供了更大数量的辨别特征,这导致了分类的准确性的提高。然而,由于大脑区域之间的近距离,具有更多区域的局部冗余也更大。传统的P值特征选择策略具有不同的尺度,但我们的分析表明,传统的P <0.05阈值太严格,对于特征选择。本研究在将脑网络的拓扑特性应用于机器学习方法时,为网络尺度提供了重要参考。

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