首页> 外文期刊>Journal of Theoretical Biology >iRNA-PseKNC(2methyl): Identify RNA 2 '-O-methylation sites by convolution neural network and Chou's pseudo components
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iRNA-PseKNC(2methyl): Identify RNA 2 '-O-methylation sites by convolution neural network and Chou's pseudo components

机译:IRNA-PSEKNC(2methyl):通过卷积神经网络和Chou的伪组分鉴定RNA 2'-甲基化位点

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摘要

The 2'-O-methylation transferase is involved in the process of 2'-O-methylation. In catalytic processes, the 2-hydroxy group of the ribose moiety of a nucleotide accept a methyl group. This methylation process is a post-transcriptional modification, which occurs in various cellular RNAs and plays a vital role in regulation of gene expressions at the post-transcriptional level. Through biochemical experiments 2'-O-methylation sites produce good results but these biochemical process and exploratory techniques are very expensive. Thus, it is required to develop a computational method to identify 2'-O-methylation sites. In this work, we proposed a simple and precise convolution neural network method namely: iRNA-PseKNC(2methyl) to identify 2'-O-methylation sites. The existing techniques use handcrafted features, while the proposed method automatically extracts the features of 2'-O-methylation using the proposed convolution neural network model. The proposed prediction iRNA-PseKNC(2methyl) method obtained 98.27% of accuracy, 96.29% of sensitivity, 100% of specificity, and 0.965 of MCC on Home sapiens dataset. The reported outcomes present that our proposed method obtained better outcomes than existing method in terms of all evaluation parameters. These outcomes show that iRNA-PseKNC(2methyl) method might be beneficial for the academic research and drug design. (C) 2018 The Authors. Published by Elsevier Ltd.
机译:2'-O-甲基化转移酶参与2'-O-甲基化的方法。在催化过程中,核苷酸的核糖部分的2-羟基接受甲基。该甲基化方法是转录后修饰,其发生在各种细胞RNA中,并在转录后水平的基因表达调节中发挥重要作用。通过生化实验2'-O-甲基化位点产生良好的效果,但这些生化过程和探索性技术非常昂贵。因此,需要开发一种计算方法以鉴定2'-O-甲基化位点。在这项工作中,我们提出了一种简单精确的卷积神经网络方法:IRNA-PSEKNC(2methyl)鉴定2'-O-甲基化位点。现有技术使用手工制作功能,而建议的方法使用所提出的卷积神经网络模型自动提取2'-O-甲基化的特征。所提出的预测IRNA-PSEKNC(2methyl)方法获得98.27%的精度,灵敏度为96.29%,素质的100%和0.965的MCC在家庭SAPIENS数据集中。报告的结果表明我们所提出的方法在所有评估参数方面比现有方法获得更好的结果。这些结果表明,IRNA-PSEKNC(2甲基)方法可能对学术研究和药物设计有益。 (c)2018作者。 elsevier有限公司出版

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