首页> 外文会议>International Conference on Inductive Logic Programming(ILP 2006); 20060824-27; Santiago de Compostela(ES) >Inferring Regulatory Networks from Time Series Expression Data and Relational Data Via Inductive Logic Programming
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Inferring Regulatory Networks from Time Series Expression Data and Relational Data Via Inductive Logic Programming

机译:通过归纳逻辑编程从时间序列表达式数据和关系数据推断监管网络

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Determining the underlying regulatory mechanism of genetic networks is one of the central challenges of computational biology. Numerous methods have been developed and applied to the important but complex task of reverse engineering regulatory networks from high-throughput gene expression data. However, many challenges remain. In this paper, we are interested in learning rules that will reveal the causal genes for the expression variation from various relational data sources in addition to gene expression data. Following our previous work where we showed that time series gene expression data could potentially uncover causal effects, we describe an application of an inductive logic programming (ILP) system, to the task of identifying important regulatory relationships from discretized time series gene expression data, protein-protein interaction, protein phosphorylation and transcription factor data about the organism. Specifically, we learn rules for predicting gene expression levels at the next time step based on the available relational data and then generalize the learned theory to visualize a pruned network of important interactions. We evaluate and present experimental results on microarray experiments from Gasch et al on Saccharomyces cerevisiae.
机译:确定遗传网络的基本调控机制是计算生物学的主要挑战之一。已经开发出许多方法并将其应用于来自高通量基因表达数据的逆向工程调控网络的重要但复杂的任务。但是,仍然存在许多挑战。在本文中,我们对学习规则感兴趣,这些规则将揭示除基因表达数据外,来自各种关系数据源的表达变异的因果基因。在先前的工作中我们证明时间序列基因表达数据可能发现潜在的因果关系之后,我们描述了归纳逻辑编程(ILP)系统的应用,以从离散的时间序列基因表达数据,蛋白质中识别重要的调控关系。 -有关生物的蛋白质相互作用,蛋白质磷酸化和转录因子数据。具体来说,我们将根据可用的相关数据学习用于预测下一步骤的基因表达水平的规则,然后对所学理论进行概括以可视化重要交互作用的修剪网络。我们评估并提出了实验结果,由Gasch等人在酿酒酵母上进行微阵列实验。

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