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A Simplified Complex Network-Based Approach to mRNA and ncRNA Transcript Classification

机译:基于基于网络的MRNA和NCRNA转录物分类的简化网络方法

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摘要

Bioinformatics is an interdisciplinary area that presents several important computational challenges. These challenges are usually related to the large volume of biological data generated and that needs to be analyzed for information discovery. An important challenge is the need to distinguish mRNAs and ncRNAs in an efficient and assertive way. The correct identification of these transcripts is due to the existence of thousands of non-coding transcripts, whose function and meaning are not known, as well as the challenge to understand the expression and regulation of genetic information. On the other hand, the complex network theory has been successfully applied in many real-world problems in different contexts. Therefore, this work presents a simplified and efficient complex network-based approach for the classification of mRNA and ncRNA sequences. Experiments were performed to evaluate the proposed approach considering a dataset with six different species and with important methods in the literature such as CPC, CPC2 and PLEK. The results indicated the assertiveness of the proposed approach achieving average accuracy rates higher than 98% in the classification of mRNA and ncRNA considering all compared species. Besides, the proposed approach presents fewer variations on its results when compared to competitor methods, indicating its robustness and suitability for the classification of transcripts.
机译:生物信息学是一个跨学科领域,呈现了几个重要的计算挑战。这些挑战通常与产生的大量生物数据相关,并且需要分析信息发现。一个重要的挑战是需要以有效和自信的方式区分MRNA和NCRNA。对这些转录物的正确鉴定是由于存在数千名非编码转录物,其功能和意义不知道,以及理解遗传信息表达和调节的挑战。另一方面,复杂的网络理论已经成功应用于不同背景下的许多现实问题。因此,该工作提出了一种用于分类mRNA和NCRNA序列的基于简化和有效的复杂网络方法。进行实验以评估具有六种不同物种的数据集和文献中的重要方法,如CPC,CPC2和PLEK的重要方法。结果表明,考虑到所有比较物种,所提出的方法的拟议方法的平均准确度率高于98%的分类。此外,与竞争对手方法相比,该方法的结果呈现出较少的变化,表明其对成绩单分类的鲁棒性和适用性。

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