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Incorporating prior information into differential network analysis using non-paranormal graphical models

机译:使用非Paranormal图形模型将先前信息纳入差分网络分析

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摘要

Motivation: Understanding how gene regulatory networks change under different cellular states is important for revealing insights into network dynamics. Gaussian graphical models, which assume that the data follow a joint normal distribution, have been used recently to infer differential networks. However, the distributions of the omics data are non-normal in general. Furthermore, although much biological knowledge (or prior information) has been accumulated, most existing methods ignore the valuable prior information. Therefore, new statistical methods are needed to relax the normality assumption and make full use of prior information.
机译:动机:了解如何在不同的蜂窝状态下改变基因监管网络如何变化对于揭示对网络动态的见解非常重要。 高斯图形模型,假设数据遵循联合正常分布,已被使用用于推断差动网络。 但是,OMICS数据的分布通常是非正常的。 此外,虽然已经积累了很多生物知识(或先前的信息),但大多数现有方法都忽略了有价值的先前信息。 因此,需要新的统计方法来放宽正常性假设并充分利用先前的信息。

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    Cent China Normal Univ Sch Math &

    Stat Dept Stat Wuhan 430079 Hubei Peoples R China;

    Shenzhen Univ Dept Elect Engn Coll Informat Engn Shenzhen 518060 Peoples R China;

    City Univ Hong Kong Dept Elect Engn Hong Kong 999077 Hong Kong Peoples R China;

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  • 正文语种 eng
  • 中图分类 微生物学;
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