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首页> 外文期刊>SAR and QSAR in Environmental Research >Neural networks predict protein folding and structure: artificial intelligence faces biomolecular complexity
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Neural networks predict protein folding and structure: artificial intelligence faces biomolecular complexity

机译:神经网络预测蛋白质的折叠和结构:人工智能面临生物分子的复杂性

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In the genomic era DNA sequencing is increasing our knowledge of the molecular structure of genetic codes from bacteria to man at a hyperbolic rate. Billions of nucleotides and millions of aminoacids are already filling the electronic files of the data bases presently available, which contain a tremendous amount of information on the most biologically relevant macromolecules, such as DNA, RNA and proteins. The most urgent problem originates from the need to single out the relevant information amidst a wealth of general features. Intelligent tools are therefore needed to optimise the search. Data mining for sequence analysis in biotechnology has been substantially aided by the development of new powerful methods borrowed from the machine learning approach. In this paper we discuss the application of artificial feedforward neural networks to deal with some fundamental problems tied with the folding process and the structure-function relationship in proteins.
机译:在基因组时代,DNA测序正以双曲线的速度增加了我们对从细菌到人类的遗传密码分子结构的了解。数十亿个核苷酸和数百万个氨基酸已经填充了当前可用数据库的电子文件,其中包含有关最生物学相关的大分子(如DNA,RNA和蛋白质)的大量信息。最紧迫的问题源于在众多通用特征中选择相关信息的需求。因此,需要智能工具来优化搜索。生物技术中用于序列分析的数据挖掘在很大程度上得益于从机器学习方法中借用的新的强大方法的开发。在本文中,我们讨论了人工前馈神经网络在处理与蛋白质的折叠过程和结构-功能关系有关的一些基本问题上的应用。

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