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首页> 外文期刊>Bioinformatics >Structured sparse canonical correlation analysis for brain imaging genetics: an improved GraphNet method
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Structured sparse canonical correlation analysis for brain imaging genetics: an improved GraphNet method

机译:用于脑成像遗传学的结构化稀疏典范相关分析:一种改进的GraphNet方法

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Motivation: Structured sparse canonical correlation analysis (SCCA) models have been used to identify imaging genetic associations. These models either use group lasso or graph-guided fused lasso to conduct feature selection and feature grouping simultaneously. The group lasso based methods require prior knowledge to define the groups, which limits the capability when prior knowledge is incomplete or unavailable. The graph-guided methods overcome this drawback by using the sample correlation to define the constraint. However, they are sensitive to the sign of the sample correlation, which could introduce undesirable bias if the sign is wrongly estimated.
机译:动机:结构化的稀疏规范相关分析(SCCA)模型已用于识别成像遗传关联。这些模型使用组套索或图形引导的融合套索来同时进行特征选择和特征分组。基于组套索的方法需要先验知识来定义组,这会限制先验知识不完整或不可用时的功能。图指导的方法通过使用样本相关性来定义约束来克服此缺点。但是,它们对样本相关的符号很敏感,如果符号被错误地估计,可能会引入不希望的偏差。

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