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Sex Differences in the Human Connectome

机译:人类连接的性别差异

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The human brain and the neuronal networks comprising it are of immense interest to the scientific community. In this work, we focus on the structural connectivity of human brains, investigating sex differences across male and female connectomes (brain-graphs) for the knowledge discovery problem “Which brain regions exert differences in connectivity across the two sexes?”. One of our main findings discloses the statistical difference at the pars orbitalis of the connectome between sexes, which has been shown to function in language production. Moreover, we use these discriminative regions for the related learning problem "Can we classify a given human connectome to belong to one of the sexes just by analyzing its connectivity structure?”.We showthatwe can learn decision tree as well as support vector machine classification models for this task. We show that our models achieve up to 79% prediction accuracy with only a handful of brain regions as discriminating factors. Importantly, our results are consistent across two data sets, collected at two different centers, with two different scanning sequences, and two different age groups (children and elderly). This is highly suggestive that we have discovered scientifically meaningful sex differences.
机译:人体大脑和包括它的神经元网络对科学界具有巨大兴趣。在这项工作中,我们专注于人类大脑的结构性连通性,调查男性和女性Connectomes(脑图)的性别差异,了解知识发现问题“哪个脑区在两种性别施加连通性差异?”。我们的主要研究结果之一披露了性别之间的联系人的靶标或者在性别之间的统计学差异,这已被证明在语言生产中起作用。此外,我们使用这些歧视性地区的相关学习问题“我们可以通过分析其连接结构来分类给定的人类连接物,属于其中一个性别吗?”。我们展示可以学习决策树以及支持向量机分类模型为此任务。我们表明我们的模型可实现高达79%的预测准确性,只有少数大脑地区作为辨别因素。重要的是,我们的结果在两个不同中心收集的两个数据集中一致,具有两种不同的扫描序列,和两个不同的年龄组(儿童和老年人)。这是我们发现科学上有意义的性别差异的暗示。

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