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Gene Networks Inference through One Genetic Algorithm Per Gene

机译:每个基因通过一种遗传算法进行基因网络推断

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Gene regulatory networks (GRN) inference from gene expression data is an important problem in systems biology field, in which the main goal is to comprehend the global molecular mechanisms underlying diseases for the development of medical treatments and drugs. This problem involves the estimation of the gene dependencies and the regulatory functions governing these interactions to provide a model that explains the dataset (usually obtained from gene expression data) on which the estimation relies. In this work a method based on genetic algorithms to infer gene networks is proposed. The main idea behind the method consists in applying one genetic algorithm for each gene independently, instead of applying a unique genetic algorithm to determine the whole network as usually done in the literature. Besides, we propose the application of a network inference method to generate the initial populations to serve as more promising starting points for the genetic algorithms than random populations. To guide the genetic algorithms, we propose the use of Akaike information criterion (AIC) as fitness function. Results obtained from inference of artificial Boolean networks show that AIC correlates very well with popular topological similarity metrics even in cases with small number of samples. Besides, the benefit of applying one genetic algorithm per gene starting from initial populations defined by a network inference technique is evident according to the results.
机译:从基因表达数据推断基因调控网络(GRN)是系统生物学领域的一个重要问题,其主要目标是理解疾病的整体分子机制,这些疾病是药物和药物开发的基础。这个问题涉及对基因依赖性的估计以及控制这些相互作用的调节功能,以提供一个模型,该模型解释估计所依赖的数据集(通常从基因表达数据中获得)。在这项工作中,提出了一种基于遗传算法的基因网络推断方法。该方法背后的主要思想是针对每个基因独立应用一种遗传算法,而不是像文献中通常那样采用独特的遗传算法来确定整个网络。此外,我们提出应用网络推理方法来生成初始种群,以作为遗传算法比随机种群更有希望的起点。为了指导遗传算法,我们建议使用Akaike信息准则(AIC)作为适应度函数。从人工布尔网络的推论得出的结果表明,即使在样本数量较少的情况下,AIC与流行的拓扑相似性度量也具有很好的相关性。此外,根据结果,从网络推断技术定义的初始种群开始,对每个基因应用一种遗传算法的好处显而易见。

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