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Iterative Reconstruction of Transcriptional Regulatory Networks: An Algorithmic Approach

机译:转录调控网络的迭代重建:一种算法方法

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摘要

The number of complete, publicly available genome sequences is now greater than 200, and this number is expected to rapidly grow in the near future as metagenomic and environmental sequencing efforts escalate and the cost of sequencing drops. In order to make use of this data for understanding particular organisms and for discerning general principles about how organisms function, it will be necessary to reconstruct their various biochemical reaction networks. Principal among these will be transcriptional regulatory networks. Given the physical and logical complexity of these networks, the various sources of (often noisy) data that can be utilized for their elucidation, the monetary costs involved, and the huge number of potential experiments (~1012) that can be performed, experiment design algorithms will be necessary for synthesizing the various computational and experimental data to maximize the efficiency of regulatory network reconstruction. This paper presents an algorithm for experimental design to systematically and efficiently reconstruct transcriptional regulatory networks. It is meant to be applied iteratively in conjunction with an experimental laboratory component. The algorithm is presented here in the context of reconstructing transcriptional regulation for metabolism in Escherichia coli, and, through a retrospective analysis with previously performed experiments, we show that the produced experiment designs conform to how a human would design experiments. The algorithm is able to utilize probability estimates based on a wide range of computational and experimental sources to suggest experiments with the highest potential of discovering the greatest amount of new regulatory knowledge.
机译:现在,完整的,公开可用的基因组序列的数量已超过200个,并且随着宏基因组学和环境测序工作的不断发展以及测序成本的下降,预计这一数字将在不久的将来迅速增长。为了利用这些数据来理解特定的生物并辨别有关生物如何运作的一般原则,将有必要重建其各种生化反应网络。其中最主要的是转录调控网络。考虑到这些网络的物理和逻辑复杂性,可以使用各种数据源(通常是嘈杂的数据)进行说明,涉及的货币成本以及大量潜在的实验(〜10 12 ),实验设计算法对于综合各种计算和实验数据以最大化监管网络重建的效率将是必不可少的。本文提出了一种用于实验设计的算法,可以系统有效地重建转录调控网络。它应与实验实验室组件一起迭代应用。在重构大肠杆菌代谢的转录调控的背景下提出了该算法,并且通过对先前进行的实验进行回顾性分析,我们证明了所产生的实验设计符合人类如何设计实验。该算法能够利用基于大量计算和实验来源的概率估计来建议具有发现最大量新监管知识潜力的实验。

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