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Incorporating Ab Initio energy into threading approaches for protein structure prediction

机译:将AB Initio Energy纳入蛋白质结构预测的穿线方法

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Background: Native structures of proteins are formed essentially due to the combining effects of local and distant (in the sense of sequence) interactions among residues. These interaction information are, explicitly or implicitly, encoded into the scoring function in protein structure prediction approaches—threading approaches usually measure an alignment in the sense that how well a sequence adopts an existing structure; while the energy functions in Ab Initio methods are designed to measure how likely a conformation is near-native. Encouraging progress has been observed in structure refinement where knowledge-based or physics-based potentials are designed to capture distant interactions. Thus, it is interesting to investigate whether distant interaction information captured by the Ab Initio energy function can be used to improve threading, especially for the weakly/ distant homologous templates. Results: In this paper, we investigate the possibility to improve alignment-generating through incorporating distant interaction information into the alignment scoring function in a nontrivial approach. Specifically, the distant interaction information is introduced through employing an Ab Initio energy function to evaluate the "partial" decoy built from an alignment. Subsequently, a local search algorithm is utilized to optimize the scoring function. Experimental results demonstrate that with distant interaction items, the quality of generated alignments are improved on 68 out of 127 query-template pairs in Prosup benchmark. In addition, compared with state-to-art threading methods, our method performs better on alignment accuracy comparison. Conclusions: Incorporating Ab Initio energy functions into threading can greatly improve alignment accuracy.
机译:背景:蛋白质的本地结构基本上由于残留物之间的局部和静止(序列感)相互作用的相互作用而形成。这些相互作用信息明确或隐含地,编码到蛋白质结构预测方法中的评分功能中 - 穿线方法通常测量序列如何采用现有结构的比较。虽然AB INITIO方法中的能量函数旨在测量构象近乎近的可能性。在结构细化中观察到令人鼓舞的进展,其中基于知识的或基于物理的潜力旨在捕捉远处的相互作用。因此,研究AB初始能量功能捕获的远程交互信息是否可用于改善螺纹,特别是对于弱/远处同源模板。结果:在本文中,我们通过以非活动方法将远处交互信息与对准评分功能结合到对准得分函数来改善对准产生的可能性。具体地,通过采用AB Initio能量功能来评估从对准构建的“部分”诱饵来介绍远程交互信息。随后,利用本地搜索算法来优化评分函数。实验结果表明,对于遥远的相互作用项目,在起草基准中的127个查询模板对中的68个中产生的对准质量得到改善。另外,与先前的线程方法相比,我们的方法在对准精度比较方面更好地执行。结论:将AB Initio Energy功能掺入穿线上可以大大提高对准精度。

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