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首页> 外文期刊>BioMed research international >Prediction and Analysis of Retinoblastoma Related Genes through Gene Ontology and KEGG
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Prediction and Analysis of Retinoblastoma Related Genes through Gene Ontology and KEGG

机译:视网膜母细胞瘤相关基因的基因本体和KEGG预测与分析

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摘要

One of the most important and challenging problems in biomedicine is how to predict the cancer related genes. Retinoblastoma (RB) is the most common primary intraocular malignancy usually occurring in childhood. Early detection of RB could reduce the morbidity and promote the probability of disease-free survival. Therefore, it is of great importance to identify RB genes. In this study, we developed a computational method to predict RB related genes based on Dagging, with the maximum relevance minimum redundancy (mRMR) method followed by incremental feature selection (IFS). 119 RB genes were compiled from two previous RB related studies, while 5,500 non-RB genes were randomly selected from Ensemble genes. Ten datasets were constructed based on all these RB and non-RB genes. Each gene was encoded with a 13,126-dimensional vector including 12,887 Gene Ontology enrichment scores and 239 KEGG enrichment scores. Finally, an optimal feature set including 1061 GO terms and 8 KEGG pathways was obtained. Analysis showed that these features were closely related to RB. It is anticipated that the method can be applied to predict the other cancer related genes as well.
机译:生物医学中最重要和最具挑战性的问题之一是如何预测与癌症相关的基因。视网膜母细胞瘤(RB)是最常见的原发性眼内恶性肿瘤,通常发生于儿童时期。 RB的早期发现可以降低发病率,提高无病生存的可能性。因此,鉴定RB基因非常重要。在这项研究中,我们开发了一种基于Dagging预测RB相关基因的计算方法,先采用最大相关性最小冗余(mRMR)方法,然后进行增量特征选择(IFS)。从先前的两项RB相关研究中汇编了119个RB基因,而从Ensemble基因中随机选择了5500个非RB基因。基于所有这些RB和非RB基因,构建了十个数据集。每个基因用一个13,126维的载体编码,该载体包括12,887个Gene Ontology富集得分和239个KEGG富集得分。最终,获得了包括1061个GO项和8条KEGG路径的最佳特征集。分析表明,这些特征与RB密切相关。预期该方法也可用于预测其他癌症相关基因。

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