Uncertainty Quantified Computational Analysis of the Energetics of Virus Capsid Assembly.

N Clement, M Rasheed, C Bajaj
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Abstract

Most of the existing research in assembly pathway prediction/analysis of viral capsids makes the simplifying assumption that the configuration of the intermediate states can be extracted directly from the final configuration of the entire capsid. This assumption does not take into account the conformational changes of the constituent proteins as well as minor changes to the binding interfaces that continue throughout the assembly process until stabilization. This paper presents a statistical-ensemble based approach which samples the configurational space for each monomer with the relative local orientation between monomers, to capture the uncertainties in binding and conformations. Furthermore, instead of using larger capsomers (trimers, pentamers) as building blocks, we allow all possible subassemblies to bind in all possible combinations. We represent the resulting assembly graph in two different ways: First, we use the Wilcoxon signed rank measure to compare the distributions of binding free energy computed on the sampled conformations to predict likely pathways. Second, we represent chemical equilibrium aspects of the transitions as a Bayesian Factor graph where both associations and dissociations are modeled based on concentrations and the binding free energies. We applied these protocols on the feline panleukopenia virus and the Nudaurelia capensis virus. Results from these experiments showed significant departure from those one would obtain if only the static configurations of the proteins were considered. Hence, we establish the importance of an uncertainty-aware protocol for pathway analysis, and provide a statistical framework as an important first step towards assembly pathway prediction with high statistical confidence.

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病毒外壳组装能量的不确定性量化计算分析。
现有的大多数病毒衣壳组装路径预测/分析研究都做了一个简化假设,即中间状态的构型可以直接从整个衣壳的最终构型中提取出来。这一假设没有考虑到组成蛋白的构象变化以及结合界面的微小变化,而这些变化在整个组装过程中一直持续到稳定为止。本文提出了一种基于统计组合的方法,该方法利用单体间的相对局部取向对每个单体的构象空间进行采样,以捕捉结合和构象中的不确定性。此外,我们不使用较大的单体(三聚体、五聚体)作为构建模块,而是允许所有可能的子装配以所有可能的组合进行结合。我们用两种不同的方法表示由此产生的组装图:首先,我们使用 Wilcoxon 符号秩测量法来比较在采样构象上计算的结合自由能分布,以预测可能的路径。其次,我们用贝叶斯因子图来表示化学平衡方面的转变,其中关联和解离都是根据浓度和结合自由能来建模的。我们将这些方案应用于猫泛白细胞减少症病毒和帽状瘤病毒。这些实验的结果表明,如果只考虑蛋白质的静态构型,结果会有很大偏差。因此,我们确定了不确定性感知协议对通路分析的重要性,并提供了一个统计框架,作为以高统计置信度进行组装通路预测的重要第一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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