首页> 外文会议>International Workshop on Pattern Recognition in Neuroimaging >Studying the brain from adolescence to adulthood through sparse multi-view matrix factorisations
【24h】

Studying the brain from adolescence to adulthood through sparse multi-view matrix factorisations

机译:通过稀疏多视图矩阵分子研究来自青春期至成年的大脑

获取原文

摘要

Men and women differ in specific cognitive abilities and in the expression of several neuropsychiatric conditions. Such findings could be attributed to sex hormones, brain differences, as well as a number of environmental variables. Existing research on identifying sex-related differences in brain structure have predominantly used cross-sectional studies to investigate, for instance, differences in average gray matter volumes (GMVs). In this article we explore the potential of a recently proposed multi-view matrix factorisation (MVMF) methodology to study structural brain changes in men and women that occur from adolescence to adulthood. MVMF is a multivariate variance decomposition technique that extends principal component analysis to "multi-view" datasets, i.e. where multiple and related groups of observations are available. In this application, each view represents a different age group. MVMF identifies latent factors explaining shared and age-specific contributions to the observed overall variability in GMVs over time. These latent factors can be used to produce low-dimensional visualisations of the data that emphasise age-specific effects once the shared effects have been accounted for. The analysis of two datasets consisting of individuals born prematurely as well as healthy controls provides evidence to suggest that the separation between males and females becomes increasingly larger as the brain transitions from adolescence to adulthood. We report on specific brain regions associated to these variance effects.
机译:男女在特异性认知能力和若干神经精神病症的表达中不同。这些发现可能归因于性激素,脑差异,以及许多环境变量。关于识别性脑结构的性关系差异的现有研究主要是使用横截面研究来调查,例如,平均灰度体积(GMVS)的差异。在本文中,我们探讨了最近提出的多视图矩阵分子(MVMF)方法的潜力,以研究从青春期到成年期发生的男性和女性的结构脑变化。 MVMF是一种多元差异分解技术,其将主成分分析扩展到“多视图”数据集,即,其中有多个和相关的观察组可用。在此应用中,每个视图代表一个不同的年龄组。 MVMF识别潜在的因素,向观察到的GMVS的总体变异性解释了分享和年龄特定贡献。一旦考虑了共享效果,这些潜在因子可用于产生强调年龄特异性效应的数据的低维性能。分析了由过早存在的个体和健康对照组成的数据集提供了证据表明,随着从青春期到成年的脑过渡,雄性和女性之间的分离变得越来越大。我们报告与这些方差效应相关的特定大脑区域。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号