基于超拉普拉斯正则化的深度自表征学习用于脑成像遗传关联分析。

IF 4.2 3区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS
Jin-Xing Liu , Shuang-Qing Wang , Cui-Na Jiao , Tian-Ru Wu , Xin-Chun Cui , Chun-Hou Zheng
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引用次数: 0

摘要

脑成像遗传学旨在探索遗传因素如单核苷酸多态性(SNPs)与脑成像定量性状(QTs)之间的关系。然而,大多数现有的方法并没有考虑基因型和表型数据之间的非线性相关性,以及在确定双多变量关联时受试者之间潜在的高阶关系。本文提出了一种基于深度超拉普拉斯正则化自我表征学习的结构化关联分析方法(DHRSAA),该方法可以学习基因型与表型之间的关联,并获得相关的生物标志物。具体来说,首先使用深度神经网络来探索样本之间的非线性关系。其次,利用基于超拉普拉斯正则化的自表示学习重构原始数据;特别是,超拉普拉斯正则化的引入保证了高维空间嵌入的局部结构,并探索了样本之间的高阶关系。此外,关联分析中的结构正则化项揭示了snp之间的链关系和成像qt之间的图形关系,从而使获得的标记更具可解释性,增强了该方法的生物学意义。在真实的神经成像遗传学数据上验证了该方法的性能。实验结果表明,与几种最先进的方法相比,DHRSAA具有更好的典型相关系数和更清晰的典型权重模式,这表明所提出的DHRSAA在识别疾病相关生物标志物方面取得了更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Deep self-representation learning with hyper-laplacian regularization for brain imaging genetics association analysis

Deep self-representation learning with hyper-laplacian regularization for brain imaging genetics association analysis
Brain imaging genetics aims to explore the association between genetic factors such as single nucleotide polymorphisms (SNPs) and brain imaging quantitative traits (QTs). However, most existing methods do not consider the nonlinear correlations between genotypic and phenotypic data, as well as potential higher-order relationships among subjects when identifying bi-multivariate associations. In this paper, a novel method called deep hyper-Laplacian regularized self-representation learning based structured association analysis (DHRSAA) is proposed which can learn genotype-phenotype associations and obtain relevant biomarkers. Specifically, a deep neural network is used first to explore the nonlinear relationships among samples. Secondly, self-representation learning based on hyper-Laplacian regularization is utilized to reconstruct the original data. In particular, the introduction of hyper-Laplacian regularization ensures the local structure of the high-dimensional spatial embedding and explores the higher-order relationships among the samples. Moreover, the structural regularization term in the association analysis uncovers chain relationships among SNPs and graphical relationships among imaging QTs, thus making the obtained markers more interpretable and enhancing the biological significance of the method. The performance of the proposed method is validated on real neuroimaging genetics data. Experimental results show that DHRSAA displays better canonical correlation coefficients and recognizes clearer canonical weight patterns compared to several state-of-the-art methods, which suggests that the proposed DHRSAA achieves better performance and identifies disease-related biomarkers.
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来源期刊
Methods
Methods 生物-生化研究方法
CiteScore
9.80
自引率
2.10%
发文量
222
审稿时长
11.3 weeks
期刊介绍: Methods focuses on rapidly developing techniques in the experimental biological and medical sciences. Each topical issue, organized by a guest editor who is an expert in the area covered, consists solely of invited quality articles by specialist authors, many of them reviews. Issues are devoted to specific technical approaches with emphasis on clear detailed descriptions of protocols that allow them to be reproduced easily. The background information provided enables researchers to understand the principles underlying the methods; other helpful sections include comparisons of alternative methods giving the advantages and disadvantages of particular methods, guidance on avoiding potential pitfalls, and suggestions for troubleshooting.
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