结合支持向量机进行基因结构预测的进化计算

Javier Pérez-Rodríguez, N. García-Pedrajas
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引用次数: 2

摘要

基因结构预测包括确定细胞基因组序列的哪些部分编码,以及构建从起始位点到终止密码子的整个基因。基因识别是生物信息学中最重要的开放性问题之一。证据的微妙来源和问题的许多陷阱使得真核生物的基因识别成为该领域最具挑战性的任务之一。基因识别可以被认为是一个搜索问题,其中许多证据来源组合在一个评分函数中,必须最大化该评分函数以获得可能基因的结构。本文提出了一种将进化计算与支持向量机相结合的基因结构预测方法。具体来说,我们使用支持向量机(svm)对基因组序列中的功能位点进行定位和评分,减少了搜索空间。进化计算用于进化一个种群,其中个体具有正确的基因结构。进化计算的灵活性可以用来解释问题的复杂性,随着我们对转录和翻译的分子过程的了解的加深,问题的复杂性也在增加。我们的结果表明,通过一个非常简单的程序,我们能够在识别人类第19号染色体上的基因方面达到非常高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolutionary computation, combined with support vector machines, for gene structure prediction
Gene structure prediction consists of determining which parts of a genomic sequence of the cell are coding, and constructing the whole gene from its start site to its stop codon. Gene recognition is one of the most important open problems in bioinformatics. The subtle sources of evidence and the many pitfalls of the problem make gene recognition in eukaryotes one of the most challenging tasks in this field. Gene recognition may be considered as a search problem, where many evidence sources are combined in a scoring function that must be maximized to obtain the structure of a probable gene. Using an intrinsic method, we propose a combination of evolutionary computation and support vector machines for gene structure prediction. Specifically, we use support vector machines (SVMs) to localize and score the functional sites along the genomic sequence, reducing the search space. Evolutionary computation is used to evolve a population where the individuals are correct gene structures. The flexibility of evolutionary computation can be used to account for the complexities of the problem, which are growing as our knowledge of the molecular processes of transcription and translation deepens. Our results show that with a very simple program we are able to achieve very good accuracies in the recognition of genes in human chromosome 19.
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