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首页> 外文期刊>NeuroImage >Variance decomposition of MRI-based covariance maps using genetically informative samples and structural equation modeling.
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Variance decomposition of MRI-based covariance maps using genetically informative samples and structural equation modeling.

机译:基于MRI的协方差图的方差分解,使用遗传信息样本和结构方程模型。

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The role of genetics in driving intracortical relationships is an important question that has rarely been studied in humans. In particular, there are no extant high-resolution imaging studies on genetic covariance. In this article, we describe a novel method that combines classical quantitative genetic methodologies for variance decomposition with recently developed semi-multivariate algorithms for high-resolution measurement of phenotypic covariance. Using these tools, we produced correlational maps of genetic and environmental (i.e. nongenetic) relationships between several regions of interest and the cortical surface in a large pediatric sample of 600 twins, siblings, and singletons. These analyses demonstrated high, fairly uniform, statistically significant genetic correlations between the entire cortex and global mean cortical thickness. In agreement with prior reports on phenotypic covariance using similar methods, we found that mean cortical thickness was most strongly correlated with association cortices. However, the present study suggests that genetics plays a large role in global brain patterning of cortical thickness in this manner. Further, using specific gyri with known high heritabilities as seed regions, we found a consistent pattern of high bilateral genetic correlations between structural homologues, with environmental correlations more restricted to the same hemisphere as the seed region, suggesting that interhemispheric covariance is largely genetically mediated. These findings are consistent with the limited existing knowledge on the genetics of cortical variability as well as our prior multivariate studies on cortical gyri.
机译:遗传学在驱动皮层内关系中的作用是一个重要的问题,在人类中鲜有研究。尤其是,目前没有关于遗传协方差的高分辨率成像研究。在本文中,我们描述了一种新颖的方法,该方法将用于方差分解的经典定量遗传方法与最近开发的用于表型协方差高分辨率测量的半多变量算法相结合。使用这些工具,我们在600个双胞胎,同胞兄弟和单身子的大儿科样本中,在几个感兴趣区域与皮质表面之间建立了遗传和环境(即非遗传)关系的相关图。这些分析表明,整个皮层与整体平均皮层厚度之间存在高度,相当均匀,统计学上显着的遗传相关性。与以前使用类似方法对表型协方差的报道相一致,我们发现平均皮层厚度与缔合皮层关系最密切。但是,本研究表明,遗传学以这种方式在全局大脑皮层厚度模式中起着重要作用。此外,使用具有高遗传力的特定陀螺作为种子区域,我们发现了结构同源物之间高双边遗传相关性的一致模式,环境相关性更限于与种子区域相同的半球,这表明半球间协方差很大程度上是遗传介导的。这些发现与对皮质变异性遗传学的有限现有知识以及我们先前对皮质回旋的多变量研究一致。

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