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首页> 外文期刊>PLoS Computational Biology >The Fitness Landscape of HIV-1 Gag: Advanced Modeling Approaches and Validation of Model Predictions by In Vitro Testing
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The Fitness Landscape of HIV-1 Gag: Advanced Modeling Approaches and Validation of Model Predictions by In Vitro Testing

机译:HIV-1堵嘴的适应性景观:高级建模方法和通过体外测试对模型预测的验证

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Viral immune evasion by sequence variation is a major hindrance to HIV-1 vaccine design. To address this challenge, our group has developed a computational model, rooted in physics, that aims to predict the fitness landscape of HIV-1 proteins in order to design vaccine immunogens that lead to impaired viral fitness, thus blocking viable escape routes. Here, we advance the computational models to address previous limitations, and directly test model predictions against in vitro fitness measurements of HIV-1 strains containing multiple Gag mutations. We incorporated regularization into the model fitting procedure to address finite sampling. Further, we developed a model that accounts for the specific identity of mutant amino acids (Potts model), generalizing our previous approach (Ising model) that is unable to distinguish between different mutant amino acids. Gag mutation combinations (17 pairs, 1 triple and 25 single mutations within these) predicted to be either harmful to HIV-1 viability or fitness-neutral were introduced into HIV-1 NL4-3 by site-directed mutagenesis and replication capacities of these mutants were assayed in vitro. The predicted and measured fitness of the corresponding mutants for the original Ising model (r?=??0.74, p?=?3.6×10?6) are strongly correlated, and this was further strengthened in the regularized Ising model (r?=??0.83, p?=?3.7×10?12). Performance of the Potts model (r?=??0.73, p?=?9.7×10?9) was similar to that of the Ising model, indicating that the binary approximation is sufficient for capturing fitness effects of common mutants at sites of low amino acid diversity. However, we show that the Potts model is expected to improve predictive power for more variable proteins. Overall, our results support the ability of the computational models to robustly predict the relative fitness of mutant viral strains, and indicate the potential value of this approach for understanding viral immune evasion, and harnessing this knowledge for immunogen design.
机译:通过序列变异进行病毒免疫逃逸是HIV-1疫苗设计的主要障碍。为了应对这一挑战,我们小组开发了一个基于物理的计算模型,该模型旨在预测HIV-1蛋白的适应状况,以设计可导致病毒适应性受损,从而阻止可行逃逸途径的疫苗免疫原。在这里,我们推进了计算模型以解决以前的局限性,并针对包含多个Gag突变的HIV-1菌株的体外适应性测量直接测试了模型预测。我们将正则化合并到模型拟合过程中以解决有限采样问题。此外,我们开发了一个模型来解释突变氨基酸的特定身份(Potts模型),并推广了我们以前无法区分不同突变氨基酸的方法(Ising模型)。通过定点诱变和复制能力将预计对HIV-1生存力或健康中性有害的Gag突变组合(其中17对,其中1个三重和25个单突变)引入HIV-1 NL4-3中在体外进行了测定。与原始Ising模型(r?=?0.74,p?=?3.6×10?6)的相应突变体的预测和测得的适应度密切相关,在正则化Ising模型中(r?= Δθ= 0.83,p≤3.7×10≤12)。 Potts模型的性能(r?=?0.73,p?=?9.7×10?9)与Ising模型的性能相似,表明二元近似足以捕获常见突变体在低位点的适应性效应。氨基酸多样性。但是,我们表明,Potts模型有望提高更多可变蛋白的预测能力。总体而言,我们的结果支持计算模型能够可靠地预测突变病毒株的相对适应性,并表明该方法对于理解病毒免疫逃逸以及利用此知识进行免疫原设计的潜在价值。

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