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Soft Computing Methods in Bioinformatics: A Comprehensive Review

机译:生物信息学中的软计算方法:综述

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Applications of genomic and proteomic, epigenetic, pharmacogenomics, and systems biology have shown increased a lot, resulting in an explosion in the amount of highly dimensional and complicated data being generated. The data of bioinformatics fields are always with high-dimension and small samples. Genome-wide investigations generate in large numbers of data and there is a need for soft computing methods (SCMs) such as artificial neural networks, fuzzy systems, evolutionary algorithms, metaheuristic and swarm intelligence algorithms, statistical model algorithms etc. that can deal with this amount of data. The use of soft computing methods has been increased to a variety of bioinformatics applications. It is used to inquire the underlying mechanisms and interactions between biological molecules in a lot of diseases, and it is a main tool in any biological (or biomarker) discovery process. The aim of this article is to introduce soft computing methods for bioinformatics. These methods present supervised or unsupervised classification, clustering and statistical or stochastic heuristics models for knowledge discovery. In this article, the current problems and the prospects of SCMs in the application of bioinformatics is also discussed.
机译:基因组和蛋白质组学,表观遗传学,药物基因组学和系统生物学的应用已显示出大量增加,导致生成的高维和复杂数据的数量激增。生物信息学领域的数据总是高维和小样本。全基因组研究产生大量数据,因此需要软计算方法(SCM),例如人工神经网络,模糊系统,进化算法,元启发式和群智能算法,统计模型算法等,可以解决此问题。数据量。软计算方法的使用已增加到各种生物信息学应用中。它用于查询许多疾病中生物分子之间的潜在机制和相互作用,并且是任何生物学(或生物标记)发现过程中的主要工具。本文的目的是介绍用于生物信息学的软计算方法。这些方法提供了用于知识发现的有监督或无监督分类,聚类以及统计或随机启发式模型。本文还讨论了SCM在生物信息学应用中的当前问题和前景。

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