Laboratory of Neuro Imaging, USC Mark and Mary Stevens Neuroimaging and Informatics Institute, Keck School of Medicine of USC, University of Southern California, Los Angeles, CA, USA.
Laboratory of Neuro Imaging, USC Mark and Mary Stevens Neuroimaging and Informatics Institute, Keck School of Medicine of USC, University of Southern California, Los Angeles, CA, USA; Neuroscience Graduate Program, University of Southern California, Los Angeles, CA, USA.
Neuroimage. 2018 May 15;172:217-227. doi: 10.1016/j.neuroimage.2018.01.065. Epub 2018 Feb 3.
Exploring neuroanatomical sex differences using a multivariate statistical learning approach can yield insights that cannot be derived with univariate analysis. While gross differences in total brain volume are well-established, uncovering the more subtle, regional sex-related differences in neuroanatomy requires a multivariate approach that can accurately model spatial complexity as well as the interactions between neuroanatomical features. Here, we developed a multivariate statistical learning model using a support vector machine (SVM) classifier to predict sex from MRI-derived regional neuroanatomical features from a single-site study of 967 healthy youth from the Philadelphia Neurodevelopmental Cohort (PNC). Then, we validated the multivariate model on an independent dataset of 682 healthy youth from the multi-site Pediatric Imaging, Neurocognition and Genetics (PING) cohort study. The trained model exhibited an 83% cross-validated prediction accuracy, and correctly predicted the sex of 77% of the subjects from the independent multi-site dataset. Results showed that cortical thickness of the middle occipital lobes and the angular gyri are major predictors of sex. Results also demonstrated the inferential benefits of going beyond classical regression approaches to capture the interactions among brain features in order to better characterize sex differences in male and female youths. We also identified specific cortical morphological measures and parcellation techniques, such as cortical thickness as derived from the Destrieux atlas, that are better able to discriminate between males and females in comparison to other brain atlases (Desikan-Killiany, Brodmann and subcortical atlases).
使用多元统计学习方法探索神经解剖性别差异,可以提供单变量分析无法得出的见解。虽然大脑总体积的明显差异已得到证实,但要揭示神经解剖结构中更微妙的、与性别相关的区域差异,需要采用能够准确模拟空间复杂性以及神经解剖特征之间相互作用的多元方法。在这里,我们使用支持向量机(SVM)分类器开发了一种多元统计学习模型,从费城神经发育队列(PNC)的 967 名健康青年的 MRI 获得的区域神经解剖特征中预测性别。然后,我们在多地点儿科成像、神经认知和遗传学(PING)队列研究的 682 名健康青年的独立数据集上验证了多元模型。经过训练的模型在交叉验证中表现出 83%的预测准确率,并且正确预测了独立多地点数据集的 77%的受试者的性别。结果表明,中枕叶和角回的皮质厚度是性别预测的主要指标。结果还表明,采用超越经典回归方法的推断方法,以捕获大脑特征之间的相互作用,对于更好地描述男性和女性青少年之间的性别差异具有重要意义。我们还确定了特定的皮质形态学测量和分割技术,例如来自 Destrieux 图谱的皮质厚度,与其他脑图谱(Desikan-Killiany、Brodmann 和皮质下图谱)相比,能够更好地区分男性和女性。