fRMSDPred:利用序列信息预测结构片段之间的局部RMSD。

Huzefa Rangwala, George Karypis
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引用次数: 0

摘要

通过在初始序列-结构比对中加入预测的结构信息,可以大大提高蛋白质结构预测的比较建模方法的有效性。受用于排列蛋白质结构的方法的启发,本文着重于开发用于估计一对蛋白质片段的RMSD值的机器学习方法。这些估计的片段级RMSD值可用于构建对齐,评估对齐的质量,并识别高质量的对齐片段。我们提出了一种算法来解决这个片段级RMSD预测问题,该算法使用基于支持向量回归和分类的监督学习框架,该框架结合了蛋白质谱、预测的二级结构、有效的信息编码方案和新的二阶成对指数核函数。我们的综合实证研究表明,与配置文件到配置文件的评分方案相比,效果更好。
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fRMSDPred: predicting local RMSD between structural fragments using sequence information.

The effectiveness of comparative modeling approaches for protein structure prediction can be substantially improved by incorporating predicted structural information in the initial sequence-structure alignment. Motivated by the approaches used to align protein structures, this paper focuses on developing machine learning approaches for estimating the RMSD value of a pair of protein fragments. These estimated fragment-level RMSD values can be used to construct the alignment, assess the quality of an alignment, and identify high-quality alignment segments. We present algorithms to solve this fragment-level RMSD prediction problem using a supervised learning framework based on support vector regression and classification that incorporates protein profiles, predicted secondary structure, effective information encoding schemes, and novel second-order pairwise exponential kernel functions. Our comprehensive empirical study shows superior results compared to the profile-to-profile scoring schemes.

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