Inference of Gene Regulatory Networks by Topological Prior Information and Data Integration

D. Martins, Fabricio M. Lopes, S. S. Ray
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引用次数: 3

Abstract

The inference of Gene Regulatory Networks (GRNs) is a very challenging problem which has attracted increasing attention since the development of high-throughput sequencing and gene expression measurement technologies. Many models and algorithms have been developed to identify GRNs using mainly gene expression profile as data source. As the gene expression data usually has limited number of samples and inherent noise, the integration of gene expression with several other sources of information can be vital for accurately inferring GRNs. For instance, some prior information about the overall topological structure of the GRN can guide inference techniques toward better results. In addition to gene expression data, recently biological information from heterogeneous data sources have been integrated by GRN inference methods as well. The objective of this chapter is to present an overview of GRN inference models and techniques with focus on incorporation of prior information such as, global and local topological features and integration of several heterogeneous data sources.
基于拓扑先验信息和数据集成的基因调控网络推断
随着高通量测序和基因表达测量技术的发展,基因调控网络的推断是一个非常具有挑战性的问题,越来越受到人们的关注。许多模型和算法主要使用基因表达谱作为数据源来识别grn。由于基因表达数据通常具有有限的样本数量和固有的噪声,因此基因表达与其他几种信息来源的整合对于准确推断grn至关重要。例如,一些关于GRN整体拓扑结构的先验信息可以指导推理技术获得更好的结果。除了基因表达数据,近年来来自异构数据源的生物信息也被GRN推理方法整合。本章的目的是概述GRN推理模型和技术,重点是整合先验信息,如全局和局部拓扑特征以及几个异构数据源的集成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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