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Fuzzy logic based approaches for gene regulatory network inference

机译:基于模糊逻辑的基因调控网络推断方法

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摘要

The rapid advancements in high-throughput techniques have fueled large-scale production of biological data at very affordable costs. Some of these techniques are microarrays and next-generation sequencing that provide genome level insight of living cells. As a result, the size of most of the biological databases, such as NCBI-GEO, NCBI-SRA, etc., is growing exponentially. These biological data are analyzed using various computational techniques for knowledge discovery which is also one of the objectives of bioinformatics research. Gene regulatory network (GRN) is a gene-gene interaction network which plays a pivotal role in understanding gene regulation processes and disease mechanism at the molecular level. From last couple of decades, researchers are interested in developing computational algorithms for GRN inference (GRNI) from high-throughput experimental data. Several computational approaches have been proposed for inferring GRN from gene expression data including statistical techniques (correlation coefficient), information theory (mutual information), regression based approaches, probabilistic approaches (Bayesian networks, naive byes), artificial neural networks and fuzzy logic. The fuzzy logic, along with its hybridization with other intelligent approaches, is a well-studied technique in GRNI due to its several advantages. In this paper, we present a consolidated review on fuzzy logic and its hybrid approaches developed during last two decades for GRNI.
机译:高通量技术的迅速发展推动了以非常实惠的成本大规模生产生物数据。这些技术中的一些是微阵列和下一代测序,可提供活细胞的基因组水平见解。结果,诸如NCBI-GEO,NCBI-SRA等大多数生物数据库的规模呈指数增长。使用各种计算技术对这些生物学数据进行分析以进行知识发现,这也是生物信息学研究的目标之一。基因调控网络(GRN)是一个基因-基因相互作用网络,在理解分子水平上的基因调控过程和疾病机理中起着关键作用。在过去的几十年中,研究人员对根据高通量实验数据开发GRN推断(GRNI)的计算算法感兴趣。已经提出了几种用于从基因表达数据推断GRN的计算方法,包括统计技术(相关系数),信息论(互信息),基于回归的方法,概率方法(贝叶斯网络,朴素再见),人工神经网络和模糊逻辑。模糊逻辑及其与其他智能方法的混合,由于具有多种优势而成为GRNI中一项经过充分研究的技术。在本文中,我们对最近20年来为GRNI开发的模糊逻辑及其混合方法进行了综述。

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