Multi-Dimensional Scaling and MODELLER-Based Evolutionary Algorithms for Protein Model Refinement.

Yan Chen, Yi Shang, Dong Xu
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Abstract

Protein structure prediction, i.e., computationally predicting the three-dimensional structure of a protein from its primary sequence, is one of the most important and challenging problems in bioinformatics. Model refinement is a key step in the prediction process, where improved structures are constructed based on a pool of initially generated models. Since the refinement category was added to the biennial Critical Assessment of Structure Prediction (CASP) in 2008, CASP results show that it is a challenge for existing model refinement methods to improve model quality consistently. This paper presents three evolutionary algorithms for protein model refinement, in which multidimensional scaling(MDS), the MODELLER software, and a hybrid of both are used as crossover operators, respectively. The MDS-based method takes a purely geometrical approach and generates a child model by combining the contact maps of multiple parents. The MODELLER-based method takes a statistical and energy minimization approach, and uses the remodeling module in MODELLER program to generate new models from multiple parents. The hybrid method first generates models using the MDS-based method and then run them through the MODELLER-based method, aiming at combining the strength of both. Promising results have been obtained in experiments using CASP datasets. The MDS-based method improved the best of a pool of predicted models in terms of the global distance test score (GDT-TS) in 9 out of 16test targets.

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用于蛋白质模型完善的多维缩放和基于 MODELLER 的进化算法。
蛋白质结构预测,即根据蛋白质的主序列计算预测蛋白质的三维结构,是生物信息学中最重要和最具挑战性的问题之一。模型细化是预测过程中的一个关键步骤,即在初始生成的模型池基础上构建改进的结构。自 2008 年两年一度的 "结构预测关键评估"(Critical Assessment of Structure Prediction,CASP)增加了完善类别以来,CASP 的结果表明,现有的模型完善方法在持续提高模型质量方面面临挑战。本文介绍了三种蛋白质模型完善的进化算法,分别采用多维尺度(MDS)、MODELLER软件和两者的混合体作为交叉算子。基于 MDS 的方法采用纯几何方法,通过组合多个父模型的接触图生成子模型。基于 MODELLER 的方法采用统计和能量最小化方法,利用 MODELLER 程序中的重塑模块从多个父模型生成新模型。混合方法首先使用基于 MDS 的方法生成模型,然后通过基于 MODELLER 的方法运行,旨在结合两者的优势。使用 CASP 数据集进行的实验取得了可喜的成果。在 16 个测试目标中,基于 MDS 的方法在 9 个目标的全局距离测试得分(GDT-TS)方面改进了预测模型池中的最佳模型。
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