线性规划的一致接触预测。

Xin Gao, D. Bu, S. Li, Ming Li, Jinbo Xu
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引用次数: 0

摘要

蛋白质残基间接触对蛋白质结构的测定和预测具有重要的意义。最近的CASP事件表明,一些准确预测的接触可以帮助提高蚁群折叠方法的计算效率和预测精度。提出了一种基于共识的接触预测的整数线性规划方法。与简单的“多数投票”方法相反,假设所有单独的服务器都是平等和独立的,我们的方法使用最大似然方法评估它们的相关性,并使用主成分分析技术构建一些潜在的独立服务器。然后,我们使用整数线性规划模型为这些潜在服务器分配权重,以使正确接触点与错误接触点之间的偏差最大化;我们的共识预测服务器是这些潜在服务器的加权组合。除了共识信息外,我们的方法还使用服务器无关的相关突变(CM)作为预测特征之一。实验结果表明,我们的接触预测服务器比“多数投票”方法性能更好。我们的方法对CASP7靶标上的前L/5位接触点的准确率为73.41%,远高于已有报道的研究。在16个自由建模(FM)目标上,我们的方法达到了37.21%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Consensus contact prediction by linear programming.
Protein inter-residue contacts are of great use for protein structure determination or prediction. Recent CASP events have shown that a few accurately predicted contacts can help improve both computational efficiency and prediction accuracy of the ab inito folding methods. This paper develops an integer linear programming (ILP) method for consensus-based contact prediction. In contrast to the simple "majority voting" method assuming that all the individual servers are equal and independent, our method evaluates their correlations using the maximum likelihood method and constructs some latent independent servers using the principal component analysis technique. Then, we use an integer linear programming model to assign weights to these latent servers in order to maximize the deviation between the correct contacts and incorrect ones; our consensus prediction server is the weighted combination of these latent servers. In addition to the consensus information, our method also uses server-independent correlated mutation (CM) as one of the prediction features. Experimental results demonstrate that our contact prediction server performs better than the "majority voting" method. The accuracy of our method for the top L/5 contacts on CASP7 targets is 73.41%, which is much higher than previously reported studies. On the 16 free modeling (FM) targets, our method achieves an accuracy of 37.21%.
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