A theoretical approach to gene network identification

J. Birget, D. Lun, Anthony Wirth, Dawei Hong
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引用次数: 2

Abstract

We take a theoretical approach to the problem of identification, or “reverse engineering”, of gene regulatory networks. Through a mathematical model of a gene regulatory network, we examine fundamental questions on the limits and achievability of network identification. We apply simplifying assumptions to construct an acyclic binary model, and we assume that the identification strategy is restricted to perturbing the network by gene expression assignments, followed by expression profile measurements at steady-state. Further, we assume the presence of side information, which we call sensitivity, that is likely to be present in actual gene networks. We show that with sensitivity side information and realistic topology assumptions we can identify the topology of acyclic binary networks using O(n) assignments and measurements, n being the number of genes in the network. Our work establishes a theoretical framework for examining an important technological problem where a number of significant questions remain open.
基因网络识别的理论方法
我们采取理论方法来识别问题,或“逆向工程”,基因调控网络。通过基因调控网络的数学模型,我们研究了网络识别的限制和可实现性的基本问题。我们应用简化假设来构建一个无环二元模型,并假设识别策略仅限于通过基因表达赋值来干扰网络,然后在稳态下进行表达谱测量。此外,我们假设存在侧信息,我们称之为敏感性,这可能存在于实际的基因网络中。我们表明,在敏感侧信息和现实的拓扑假设下,我们可以使用O(n)分配和测量来识别无环二元网络的拓扑,n是网络中基因的数量。我们的工作建立了一个理论框架,用于检查一个重要的技术问题,其中许多重要的问题仍然开放。
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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