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A discriminative method for family-based protein remote homology detection that combines inductive logic programming and propositional models

机译:结合归纳逻辑编程和命题模型的基于家庭的蛋白质远程同源性检测的判别方法

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摘要

BackgroundRemote homology detection is a hard computational problem. Most approaches have trained computational models by using either full protein sequences or multiple sequence alignments (MSA), including all positions. However, when we deal with proteins in the "twilight zone" we can observe that only some segments of sequences (motifs) are conserved. We introduce a novel logical representation that allows us to represent physico-chemical properties of sequences, conserved amino acid positions and conserved physico-chemical positions in the MSA. From this, Inductive Logic Programming (ILP) finds the most frequent patterns (motifs) and uses them to train propositional models, such as decision trees and support vector machines (SVM).
机译:背景远程同源性检测是一个困难的计算问题。大多数方法通过使用完整蛋白质序列或多个序列比对(MSA)(包括所有位置)来训练计算模型。但是,当我们在“暮光区”中处理蛋白质时,我们可以观察到只有部分序列(基序)是保守的。我们介绍了一种新颖的逻辑表示形式,使我们能够表示MSA中序列的物理化学性质,保守的氨基酸位置和保守的物理化学位置。由此,归纳逻辑编程(ILP)会找到最常用的模式(图案)并将其用于训练命题模型,例如决策树和支持向量机(SVM)。

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