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Combining Graph and Machine Learning Methods to Analyze Differences in Functional Connectivity Across Sex

机译:结合图和机器学习方法来分析跨性别的功能连接的差异

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摘要

In this work we combine machine learning methods and graph theoretical analysis to investigate gender associated differences in resting state brain network connectivity. The set of all correlations computed from the fMRI resting state data is used as input features for classification. Two ensemble learning methods are used to perform the detection of the set of discriminative edges between groups (males vs. females) of brain networks: 1) Random Forest and 2) an ensemble method based on least angle shrinkage and selection operator (lasso) regressors. Permutation testing is used not only to assess significance of classification accuracy but also to evaluate significance of feature selection. Finally, these methods are applied to data downloaded from the Connectome Project website. Our results suggest that gender differences in brain function may be related to sexually dimorphic regional connectivity between specific critical nodes via gender-discriminative edges.
机译:在这项工作中,我们将机器学习方法与图形理论分析相结合,以研究与性别相关的静止状态大脑网络连接方面的差异。从fMRI静止状态数据计算出的所有相关性的集合都用作分类的输入特征。两种集成学习方法用于检测大脑网络的各组(男性与女性)之间的判别边缘集:1)随机森林; 2)基于最小角度收缩和选择算子(套索)回归的集成方法。置换测试不仅用于评估分类准确性的重要性,而且还用于评估特征选择的重要性。最后,将这些方法应用于从Connectome Project网站下载的数据。我们的结果表明,大脑功能的性别差异可能与特定关键节点之间通过性别区分性边缘的性二形性区域连通性有关。

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