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首页> 外文期刊>NeuroImage >Discovering genetic associations with high-dimensional neuroimaging phenotypes: A sparse reduced-rank regression approach.
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Discovering genetic associations with high-dimensional neuroimaging phenotypes: A sparse reduced-rank regression approach.

机译:发现与高维神经影像学表现型的遗传关联:一种稀疏的降秩回归方法。

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摘要

There is growing interest in performing genome-wide searches for associations between genetic variants and brain imaging phenotypes. While much work has focused on single scalar valued summaries of brain phenotype, accounting for the richness of imaging data requires a brain-wide, genome-wide search. In particular, the standard approach based on mass-univariate linear modelling (MULM) does not account for the structured patterns of correlations present in each domain. In this work, we propose sparse reduced rank regression (sRRR), a strategy for multivariate modelling of high-dimensional imaging responses (measurements taken over regions of interest or individual voxels) and genetic covariates (single nucleotide polymorphisms or copy number variations), which enforces sparsity in the regression coefficients. Such sparsity constraints ensure that the model performs simultaneous genotype and phenotype selection. Using simulation procedures that accurately reflect realistic human genetic variation and imaging correlations, we present detailed evaluations of the sRRR method in comparison with the more traditional MULM approach. In all settings considered, sRRR has better power to detect deleterious genetic variants compared to MULM. Important issues concerning model selection and connections to existing latent variable models are also discussed. This work shows that sRRR offers a promising alternative for detecting brain-wide, genome-wide associations.
机译:人们对进行全基因组搜索以寻找遗传变异与大脑成像表型之间的联系越来越感兴趣。尽管许多工作集中在大脑表型的单标量值摘要上,但要想获得丰富的成像数据,就需要在大脑范围内进行全基因组搜索。尤其是,基于质量单变量线性建模(MULM)的标准方法并未考虑每个域中存在的相关性的结构化模式。在这项工作中,我们提出了稀疏降低秩次回归(sRRR),一种用于高维成像响应(对感兴趣区域或单个体素进行的测量)和遗传协变量(单核苷酸多态性或拷贝数变异)的多变量建模策略。增强回归系数的稀疏性。这样的稀疏性约束确保模型同时执行基因型和表型选择。使用能够准确反映现实人类遗传变异和成像相关性的模拟程序,我们将与更传统的MULM方法相比,对sRRR方法进行详细评估。在所有考虑的情况下,与MULM相比,sRRR具有更好的检测有害遗传变异的能力。还讨论了有关模型选择和与现有潜在变量模型的连接的重要问题。这项工作表明,sRRR为检测大脑范围内,基因组范围内的关联提供了一种有希望的替代方法。

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