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A Multi-gene-Feature-Based Genetic Algorithm for Prediction of Operon

机译:基于多基因特征的遗传算法对操纵子的预测

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The prediction of operons is critical to reconstruction of regulatory networks at the whole genome level. In this paper, a multi-approach guided genetic algorithm is developed to prediction of operon. The fitness function is created by using intergenic distance of local entropy-minimization, participation of the same metabolic pathway, log-likelihood of COG gene functions and correlation coefficient of microarray expression data, which have been used individually for predicting operons. The gene pairs within operons have high fitness value by using these four scoring criteria, whereas those across transcription unit borders have low fitness value. On the other hand, it is easy to predict operons and makes the prediction ability stronger by using these four scoring criteria. The proposed method is examined on 683 known operons of Escherichia coli K12 and an accuracy of 85.9987% is obtained.
机译:操纵子的预测对于在整个基因组水平重建调控网络至关重要。本文提出了一种多方法指导遗传算法来预测操纵子。通过使用局部熵最小化的基因间隔距离,同一代谢途径的参与,COG基因功能的对数似然性和微阵列表达数据的相关系数来创建适应度函数,这些函数已分别用于预测操纵子。通过使用这四个评分标准,操纵子内的基因对具有较高的适应度值,而跨转录单位边界的基因对具有较低的适应度值。另一方面,通过使用这四个评分标准,容易预测操纵子,并使预测能力更强。该方法在683个已知的大肠杆菌K12操纵子上进行了检测,其准确度为85.9987%。

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