用逻辑进行蛋白质结构预测

S. Muggleton, R. King, M.J.E. Sternberg
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引用次数: 5

摘要

从一级序列预测蛋白质二级结构是分子生物学中尚未解决的重要问题之一。本文表明,使用允许关系描述的机器学习算法(Golem)可以提高性能。Golem将作为输入的例子和背景知识描述为Prolog事实。它产生作为输出的Prolog规则,这些规则是示例的概括。Golem被用于学习α结构域型蛋白质的二级结构预测规则(蛋白质数据库的一个子集,富含螺旋二级结构,几乎没有β片)。Golem学会了一套小规则,根据它们的位置关系、化学和物理性质来预测哪些残基是α -螺旋的一部分。这种表示更容易被分子生物学家理解。学习规则的性能为81%(+/-2%)。
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Using logic for protein structure prediction
The prediction of protein secondary structure from a primary sequence is one of the most important unsolved problems in molecular biology. This paper shows that the use of a machine learning algorithm (Golem) which allows relational descriptions leads to improved performance. Golem takes, as input, examples and background knowledge described as Prolog facts. It produces, as output, Prolog rules which are a generalisation of the examples. Golem was applied to learning secondary structure prediction rules for alpha domain type proteins (a subset of the Protein Data Bank rich in helical secondary structure and nearly devoid of beta sheet). Golem learned a small set of rules predicting which residues are part of alpha -helices based on their positional relationships and chemical and physical properties. This representations is more easily understood by molecular biologists. Performance of the learned rules was 81% (+/-2%).<>
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