偏好矩阵引导稀疏典型相关分析在阿尔茨海默病数量性状遗传研究中的应用。

Jiahang Sha, Jingxuan Bao, Kefei Liu, Shu Yang, Zixuan Wen, Yuhan Cui, Junhao Wen, Christos Davatzikos, Jason H Moore, Andrew J Saykin, Qi Long, Li Shen
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引用次数: 0

摘要

研究遗传变异与表型性状之间的关系是数量遗传学研究的关键问题。特别是对于阿尔茨海默病,遗传标记和数量性状之间的关系仍然模糊,而一旦确定,将为研究和开发基于遗传的治疗方法提供有价值的指导。目前,为了分析两个模态之间的关联,通常使用稀疏典型相关分析(SCCA)来计算每个模态的变量特征的一个稀疏线性组合,从而得到一对线性组合向量,使被分析模态之间的相互关联最大化。普通SCCA模型的一个缺点是,现有的发现和知识不能像以前那样集成到模型中,以帮助提取有趣的相关性,以及识别具有生物学意义的遗传和表型标记。为了弥补这一差距,我们引入了偏好矩阵引导的SCCA (PM-SCCA),它不仅将先验编码为偏好矩阵,而且保持了计算的简单性。通过仿真研究和实际数据实验验证了该模型的有效性。两个实验都表明,所提出的PM-SCCA模型不仅可以有效地捕获基因型-表型相关性,而且可以有效地捕获相关特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preference Matrix Guided Sparse Canonical Correlation Analysis for Genetic Study of Quantitative Traits in Alzheimer's Disease.

Investigating the relationship between genetic variation and phenotypic traits is a key issue in quantitative genetics. Specifically for Alzheimer's disease, the association between genetic markers and quantitative traits remains vague while, once identified, will provide valuable guidance for the study and development of genetic-based treatment approaches. Currently, to analyze the association of two modalities, sparse canonical correlation analysis (SCCA) is commonly used to compute one sparse linear combination of the variable features for each modality, giving a pair of linear combination vectors in total that maximizes the cross-correlation between the analyzed modalities. One drawback of the plain SCCA model is that the existing findings and knowledge cannot be integrated into the model as priors to help extract interesting correlation as well as identify biologically meaningful genetic and phenotypic markers. To bridge this gap, we introduce preference matrix guided SCCA (PM-SCCA) that not only takes priors encoded as a preference matrix but also maintains computational simplicity. A simulation study and a real-data experiment are conducted to investigate the effectiveness of the model. Both experiments demonstrate that the proposed PM-SCCA model can capture not only genotype-phenotype correlation but also relevant features effectively.

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