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In-silico Gene Annotation Prediction Using the Co-expression Network Structure

机译:使用共表达网络结构的硅基基因注释预测

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Identifying which genes are involved in particular biological processes is relevant to understand the structure and function of a genome. A number of techniques have been proposed that aim to annotate genes, i.e., identify unknown biological associations between biological processes and genes. The ultimate goal of these techniques is to narrow down the search for promising candidates to carry out further studies through in-vivo experiments. This paper presents an approach for the in-silico prediction of functional gene annotations. It uses existing knowledge body of gene annotations of a given genome and the topological properties of its gene co-expression network, to train a supervised machine learning model that is designed to discover unknown annotations. The approach is applied to Oryza Sativa Japonica (a variety of rice). Our results show that the topological properties help in obtaining a more precise prediction for annotating genes.
机译:鉴定哪些基因涉及特定的生物过程是相关的,以了解基因组的结构和功能。已经提出了许多技术,其目的是注释基因,即确定生物过程和基因之间的未知生物学联合。这些技术的最终目标是缩小搜索有希望通过体内实验进行进一步研究的候选人。本文介绍了函数基因注释的硅预测的方法。它使用了给定基因组的基因注释的现有知识体和其基因共表达网络的拓扑特性,培训了旨在发现未知注释的监督机器学习模型。该方法适用于Oryza sativa japonica(各种米)。我们的结果表明,拓扑特性有助于获得更精确的注释基因预测。

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