Gene regulatory network inference using out of equilibrium statistical mechanics.

Hfsp Journal Pub Date : 2008-08-01 Epub Date: 2008-07-23 DOI:10.2976/1.2957743
Arndt Benecke
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引用次数: 11

Abstract

Spatiotemporal control of gene expression is fundamental to multicellular life. Despite prodigious efforts, the encoding of gene expression regulation in eukaryotes is not understood. Gene expression analyses nourish the hope to reverse engineer effector-target gene networks using inference techniques. Inference from noisy and circumstantial data relies on using robust models with few parameters for the underlying mechanisms. However, a systematic path to gene regulatory network reverse engineering from functional genomics data is still impeded by fundamental problems. Recently, Johannes Berg from the Theoretical Physics Institute of Cologne University has made two remarkable contributions that significantly advance the gene regulatory network inference problem. Berg, who uses gene expression data from yeast, has demonstrated a nonequilibrium regime for mRNA concentration dynamics and was able to map the gene regulatory process upon simple stochastic systems driven out of equilibrium. The impact of his demonstration is twofold, affecting both the understanding of the operational constraints under which transcription occurs and the capacity to extract relevant information from highly time-resolved expression data. Berg has used his observation to predict target genes of selected transcription factors, and thereby, in principle, demonstrated applicability of his out of equilibrium statistical mechanics approach to the gene network inference problem.

基于非平衡统计力学的基因调控网络推断。
基因表达的时空调控是多细胞生命的基础。尽管付出了巨大的努力,真核生物基因表达调控的编码仍未被理解。基因表达分析为利用推理技术对效应靶基因网络进行逆向工程提供了希望。从噪声和环境数据中进行推断依赖于使用具有少量参数的稳健模型来描述潜在机制。然而,基于功能基因组学数据的基因调控网络逆向工程的系统路径仍然受到一些基本问题的阻碍。最近,来自科隆大学理论物理研究所的Johannes Berg在基因调控网络推理问题上做出了两项显著的贡献。Berg利用酵母的基因表达数据,证明了mRNA浓度动态的非平衡机制,并能够在脱离平衡的简单随机系统上绘制基因调控过程。他的演示的影响是双重的,既影响了对转录发生的操作约束的理解,也影响了从高度时间分辨的表达数据中提取相关信息的能力。Berg利用他的观察预测了选定的转录因子的靶基因,从而在原则上证明了他的非平衡统计力学方法对基因网络推断问题的适用性。
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Hfsp Journal
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