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Sparse Inverse Covariance Estimation with L0 Penalty for Network Construction with Omics Data

机译:具有Omics数据的网络构造的L0惩罚的稀疏逆协方差估计

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Abstract Constructing coexpression and association networks with omics data is crucial for studying gene–gene interactions and underlying biological mechanisms. In recent years, learning the structure of a Gaussian graphical model from high-dimensional data using L1 penalty has been well-studied and many applications in bioinformatics and computational biology have been found. However, besides the problem of biased estimators with LASSO, L1 does not always choose the true model consistently. Based on our previous work with L0 regularized regression (Liu and Li, 2014), we propose an L0 regularized sparse inverse covariance estimation (L0RICE) for structure learning with the efficient alternating direction (AD) method. The proposed method is robust and has the oracle property. The proposed method is applied to omics data including data, from next-generation sequencing technologies. Novel procedures for network construction and high-order gene–gene interaction detection with omics data are developed. Results..." /> rel="meta" type="application/atom+xml" href="http://dx.doi.org/10.1089%2Fcmb.2015.0102" /> rel="meta" type="application/rdf+json" href="http://dx.doi.org/10.1089%2Fcmb.2015.0102" /> rel="meta" type="application/unixref+xml" href="http://dx.doi.org/10.1089%2Fcmb.2015.0102" /> 展开▼
机译:摘要利用组学数据构建共表达和关联网络对于研究基因-基因相互作用和潜在的生物学机制至关重要。近年来,已经对使用L1惩罚从高维数据中学习高斯图形模型的结构进行了深入研究,并发现了在生物信息学和计算生物学中的许多应用。但是,除了LASSO的估计量有偏差之外,L1并不总是选择一致的真实模型。基于我们以前的L0正则化回归研究(Liu和Li,2014),我们提出了L0正则化稀疏逆协方差估计(L0RICE),用于采用有效交替方向(AD)方法进行结构学习。所提出的方法是鲁棒的并且具有预言性。所提出的方法被应用于包括来自下一代测序技术的数据的组学数据。开发了用于网络构建和具有组学数据的高阶基因-基因相互作用检测的新程序。结果...“ /> <元名称=” dc.Publisher“ content =”玛丽·安·利伯特公司(Mary Ann Liebert,Inc.)140 Huguenot Street,3rd Floor New Rochelle,NY 10801 USA“ /> <元名称=” dc.Date“方案=“ WTN8601” content =“ 2016-03-08” /> <元名称=” dc.Source“ content =” http://www.liebertpub.com/cmb“ /> <元名称=” dc.Language“ content =” zh-cn“ /> <元名称=” dc.Coverage“ content =” 140 Huguenot Street,3rd Floor New Rochelle,NY 10801 USA“ /> rel =“ meta” type =“ application / atom + xml” href =“ http://dx.doi.org/10.1089%2Fcmb.2015.0102” /> rel =“ meta” type =“ application / rdf + json“ href =” http://dx.doi.org/10.1089%2Fcmb.2015.0102“ /> rel =” meta“ type =” ap plication / unixref + xml“ href =” http://dx.doi.org/10.1089%2Fcmb.2015.0102“ /> <元名称=” MSSmartTagsPreventParsing“ content =” true

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