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STRUM: structure-based prediction of protein stability changes upon single-point mutation

机译:STRUM:基于结构的蛋白质稳定性在单点突变后的预测

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>Motivation: Mutations in human genome are mainly through single nucleotide polymorphism, some of which can affect stability and function of proteins, causing human diseases. Several methods have been proposed to predict the effect of mutations on protein stability; but most require features from experimental structure. Given the fast progress in protein structure prediction, this work explores the possibility to improve the mutation-induced stability change prediction using low-resolution structure modeling.>Results: We developed a new method (STRUM) for predicting stability change caused by single-point mutations. Starting from wild-type sequences, 3D models are constructed by the iterative threading assembly refinement (I-TASSER) simulations, where physics- and knowledge-based energy functions are derived on the I-TASSER models and used to train STRUM models through gradient boosting regression. STRUM was assessed by 5-fold cross validation on 3421 experimentally determined mutations from 150 proteins. The Pearson correlation coefficient (PCC) between predicted and measured changes of Gibbs free-energy gap, ΔΔG, upon mutation reaches 0.79 with a root-mean-square error 1.2 kcal/mol in the mutation-based cross-validations. The PCC reduces if separating training and test mutations from non-homologous proteins, which reflects inherent correlations in the current mutation sample. Nevertheless, the results significantly outperform other state-of-the-art methods, including those built on experimental protein structures. Detailed analyses show that the most sensitive features in STRUM are the physics-based energy terms on I-TASSER models and the conservation scores from multiple-threading template alignments. However, the ΔΔG prediction accuracy has only a marginal dependence on the accuracy of protein structure models as long as the global fold is correct. These data demonstrate the feasibility to use low-resolution structure modeling for high-accuracy stability change prediction upon point mutations.>Availability and Implementation: >Contact: and >Supplementary information: are available at Bioinformatics online.
机译:>动机:人类基因组中的突变主要是通过单核苷酸多态性引起的,其中一些会影响蛋白质的稳定性和功能,从而导致人类疾病。已经提出了几种方法来预测突变对蛋白质稳定性的影响。但大多数都需要实验结构中的功能。鉴于蛋白质结构预测的快速进展,这项工作探索了使用低分辨率结构建模改善突变诱导的稳定性变化预测的可能性。>结果:我们开发了一种预测稳定性的新方法(STRUM)由单点突变引起的变化。从野生型序列开始,通过迭代线程装配细化(I-TASSER)模拟来构建3D模型,其中基于物理和知识的能量函数在I-TASSER模型上导出,并用于通过梯度增强来训练STRUM模型回归。通过对150种蛋白质的3421个实验确定的突变进行5倍交叉验证来评估STRUM。在基于突变的交叉验证中,突变后的吉布斯自由能隙ΔΔG的预测值和测量值之间的皮尔逊相关系数(PCC)达到0.79,均方根误差为1.2 kcal / mol。如果从非同源蛋白质中分离出训练和测试突变,则PCC会减少,这反映了当前突变样本中的固有相关性。但是,结果明显优于其他最新方法,包括建立在实验蛋白质结构上的方法。详细的分析表明,STRUM中最敏感的功能是I-TASSER模型上基于物理的能量项以及来自多线程模板对齐的守恒分数。但是,只要全局折叠正确,ΔG预测精度对蛋白质结构模型的精度仅具有很小的依赖性。这些数据证明了使用低分辨率结构模型进行点突变后的高精度稳定性变化预测的可行性。>可用性和实现: >联系方式:和>补充信息: 可从生物信息学在线获得。

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