蛋白质结构预测的树分解方法。

Jinbo Xu, Feng Jiao, Bonnie Berger
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引用次数: 59

摘要

本文提出了一种蛋白质结构的树分解方法,该方法可以有效地解决蛋白质结构预测的两个关键子问题:用于主链预测的蛋白质线程和蛋白质侧链预测的蛋白质线程。为了开发一种统一的基于树分解的方法来解决这两个子问题,我们将它们建模为一个几何邻域图标记问题。理论上,我们可以用低次多项式时间算法将几何邻域图G = (V, E)分解为大小为O(|V|(2/3))log|V|)的分量。基于树分解的图标记算法的计算复杂度为O(|V|Delta(tw+1)),其中Delta为每个顶点可能标记的平均数目,tw(= O(|V|(2/3))log|V|))为g的树宽度。经验表明,tw很小,树分解方法可以非常有效地解决这两个问题。本文还比较了树分解方法与线性规划方法对这两个问题的计算效率,并确定了树分解方法比线性规划方法效率更高的条件。实验结果表明,树分解方法在大多数情况下都是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A tree-decomposition approach to protein structure prediction.

This paper proposes a tree decomposition of protein structures, which can be used to efficiently solve two key subproblems of protein structure prediction: protein threading for backbone prediction and protein side-chain prediction. To develop a unified tree-decomposition based approach to these two subproblems, we model them as a geometric neighborhood graph labeling problem. Theoretically, we can have a low-degree polynomial time algorithm to decompose a geometric neighborhood graph G = (V, E) into components with size O(|V|((2/3))log|V|). The computational complexity of the tree-decomposition based graph labeling algorithms is O(|V|Delta(tw+1)) where Delta is the average number of possible labels for each vertex and tw( = O(|V|((2/3))log|V|)) the tree width of G. Empirically, tw is very small and the tree-decomposition method can solve these two problems very efficiently. This paper also compares the computational efficiency of the tree-decomposition approach with the linear programming approach to these two problems and identifies the condition under which the tree-decomposition approach is more efficient than the linear programming approach. Experimental result indicates that the tree-decomposition approach is more efficient most of the time.

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