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首页> 外文期刊>Artificial intelligence in medicine >Computational methods for Gene Regulatory Networks reconstruction and analysis: A review
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Computational methods for Gene Regulatory Networks reconstruction and analysis: A review

机译:基因监管网络重建与分析的计算方法:综述

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摘要

In the recent years, the vast amount of genetic information generated by new-generation approaches, have led to the need of new data handling methods. The integrative analysis of diverse-nature gene information could provide a much-sought overview to study complex biological systems and processes. In this sense, Gene Regulatory Networks (GRN) arise as an increasingly-promising tool for the modelling and analysis of biological processes. This review is an attempt to summarize the state of the art in the field of GRNs. Essential points in the field are addressed, thereof: (a) the type of data used for network generation, (b) machine learning methods and tools used for network generation, (c) model optimization and (d) computational approaches used for network validation. This survey is intended to provide an overview of the subject for readers to improve their knowledge in the field of GRN for future research.
机译:近年来,新一代方法产生了大量的遗传信息,导致了新数据处理方法。各种自然基因信息的综合分析可以提供众所周知的概述,以研究复杂的生物系统和过程。从这个意义上讲,基因监管网络(GRN)是一种越来越有希望的生物过程建模和分析的工具。该审查是一项试图总结GRNS领域的最先进状态。解决该领域的必备点,其:(a)用于网络生成的数据类型,(b)用于网络生成的机器学习方法和工具,(c)用于网络验证的模型优化和(d)计算方法。本调查旨在概述读者的主题,以提高他们在GRN领域的知识以供未来的研究。

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