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iDNA6mA (5-step rule): Identification of DNA N6-methyladenine sites in the rice genome by intelligent computational model via Chou's 5-step rule

机译:idna6ma(5步规则):通过Chou的5步规则通过智能计算模型鉴定水稻基因组中的DNA N6-甲基腺嘌呤位点

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摘要

DNA methylation is an elementary epigenetic process. The N6-methyladenine is related to a large kind of biological processes i.e., transcription, DNA replication, and repair. In genome, the N6-methyladenine (6 mA) site distribution is non-random; therefore, precise discrimination of 6 mA is necessary to understand its biological functions. Through biochemical experiments, the N6-methyladenine produced a positive outcome, still, these wet lab processes are very time consuming and high pricy. In view of this, it is of high priority to introduce a powerful, accurate, and fast computational model to identify N6-methyladenine sites. In this connection, we propose an intelligent computational model called iDNA6mA (5-step rule) using deep learning approach to identify N6-methyladenine sites from DNA sequences in the rice genome. Existing methods used handcrafted features to identify N6-methyladenine sites; however, the proposed computational model automatically extracts the key features from DNA input sequences via the proposed convolution neural network (CNN) model. The intelligent computational model iDNA6mA (5-step rule) obtained 86.64% of accuracy, 86.70% of sensitivity, 86.59% of specificity, 0.732 of MCC, and 0.931 of auROC. The results demonstrate that the proposed intelligent computational model achieved better performance in terms of all evaluation parameters than existing techniques. It is observed that iDNA6mA (5-step rule) model will become a useful tool in the fields of computational biology, bioinformatics, and for the academic research on N6-methyladenine sites prediction. A user-friendly webserver has been established and freely accessible at https://home.jbnu.ac.kr/NSCL/iDNA6mA.htm.
机译:DNA甲基化是基本的表观遗传过程。 N6-甲基腺嘌呤与大类生物方法有关,即转录,DNA复制和修复。在基因组中,N6-甲基腺嘌呤(6mA)位点分布是非随机的;因此,需要精确歧视6 mA,以了解其生物学功能。通过生化实验,N6-甲基腺嘌呤产生了阳性结果,仍然是这些湿式实验室过程非常耗时和高的刺激。鉴于此,引入强大,准确和快速的计算模型是高优先级以鉴定N6-甲基腺嘌呤位点。在这方面,我们提出了一种智能计算模型,使用深入学习方法来鉴定水稻基因组中的DNA序列N6-甲基腺嘌呤位点。现有方法使用手工特征来鉴定N6-甲基腺嘌呤位点;然而,所提出的计算模型通过所提出的卷积神经网络(CNN)模型自动提取来自DNA输入序列的关键特征。智能计算模型IDNA6MA(5步规则)获得的精度为86.64%,灵敏度的86.70%,特异性的86.59%,0.732的MCC和0.931的Auroc。结果表明,所提出的智能计算模型的智能计算模型与所有评估参数的表现更好,而不是现有技术。观察到IDNA6MA(5步规则)模型将成为计算生物学,生物信息学等领域的有用工具,以及对N6-甲基腺嘌呤位点预测的学术研究。在https://home.jbnu.ac.kr/nscl/idna6ma.htm,已经建立并自由地访问了一个用户友好的Web服务器。

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