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Incorporating post-translational modifications and unnatural amino acids into high-throughput modeling of protein structures

机译:将翻译后修饰和非天然氨基酸整合到蛋白质结构的高通量建模中

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摘要

>Motivation: Accurately predicting protein side-chain conformations is an important subproblem of the broader protein structure prediction problem. Several methods exist for generating fairly accurate models for moderate-size proteins in seconds or less. However, a major limitation of these methods is their inability to model post-translational modifications (PTMs) and unnatural amino acids. In natural living systems, the chemical groups added following translation are often critical for the function of the protein. In engineered systems, unnatural amino acids are incorporated into proteins to explore structure–function relationships and create novel proteins.>Results: We present a new version of SIDEpro to predict the side chains of proteins containing non-standard amino acids, including 15 of the most frequently observed PTMs in the Protein Data Bank and all types of phosphorylation. SIDEpro uses energy functions that are parameterized by neural networks trained from available data. For PTMs, the and accuracies are comparable with those obtained for the precursor amino acid, and so are the RMSD values for the atoms shared with the precursor amino acid. In addition, SIDEpro can accommodate any PTM or unnatural amino acid, thus providing a flexible prediction system for high-throughput modeling of proteins beyond the standard amino acids.>Availability and implementation: SIDEpro programs and Web server, rotamer libraries and data are available through the SCRATCH suite of protein structure predictors at >Contact: >Supplementary information: are available at Bioinformatics online.
机译:>动机:准确预测蛋白质侧链构象是更广泛的蛋白质结构预测问题的重要子问题。存在几种方法可以在几秒钟或更短的时间内生成中等大小的蛋白质的相当准确的模型。但是,这些方法的主要局限性在于它们无法建模翻译后修饰(PTM)和非天然氨基酸。在自然生物系统中,翻译后添加的化学基团通常对蛋白质的功能至关重要。在工程系统中,非天然氨基酸被掺入蛋白质中以探索结构与功能之间的关系并创建新的蛋白质。>结果:我们提供了SIDEpro的新版本,可预测包含非标准氨基酸的蛋白质的侧链酸,包括蛋白质数据库中最常见的15个PTM和所有类型的磷酸化。 SIDEpro使用能量函数,这些能量函数由根据可用数据训练的神经网络进行参数化。对于PTM,与的准确性与从前体氨基酸获得的精度相当,因此与前体氨基酸共享的原子的RMSD值也是如此。此外,SIDEpro可以容纳任何PTM或非天然氨基酸,从而提供了灵活的预测系统,可以对超出标准氨基酸的蛋白质进行高通量建模。>可用性和实现: SIDEpro程序和Web服务器,rotamer可通过>联系方式: >补充信息:的SCRATCH蛋白质结构预测变量套件获得库和数据,可在在线Bioinformatics上获得。

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