疫苗毒株组成抗体反应的现象学模型。

IF 2.7 Q3 IMMUNOLOGY
Antibodies Pub Date : 2025-01-16 DOI:10.3390/antib14010006
Victor Ovchinnikov, Martin Karplus
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引用次数: 0

摘要

激发广泛中和抗体(bnAbs)是针对流感、艾滋病毒和冠状病毒等高度可变病原体设计疫苗的主要目标。虽然已经设计了许多合理的疫苗设计策略来诱导bnAbs,但它们的有效性需要在临床前动物模型和临床试验中进行评估。为了改善这类疫苗的效果,开发能够预测疫苗对任意病原体变异的效力的方法将是有用的。作为朝这个方向迈出的一步,在这里,我们描述了一个简单的生物动机模型,即基于纳米颗粒的疫苗仅使用抗原氨基酸序列引发的抗体反应性,并使用流感或SARS-CoV-2纳米颗粒疫苗的小样本实验抗体结合数据进行参数化。结果:该模型能够将实验数据概括在实验不确定度之内,对参数化/训练集的选择相对不敏感,并对疫苗利用的抗原表位提供定性预测,可通过实验验证。对于本文考虑的马赛克纳米颗粒疫苗,模型结果间接表明,从接种疫苗的小鼠获得的血清中含有bnAbs,而不仅仅是不同的菌株特异性抗体。尽管本模型是由纳米颗粒疫苗驱动的,但我们也将其应用于多价mRNA流感疫苗接种研究,并证明了实验结果的良好再现。这表明,该模型的形式主义在原则上是足够灵活的,以适应不同的疫苗接种策略。最后,我们展示了该模型如何用于对不同抗原组成的疫苗的效力进行排序。结论:总的来说,本研究表明,用少量实验数据参数化的简单疫苗效力模型可用于比较设计疫苗的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Phenomenological Modeling of Antibody Response from Vaccine Strain Composition.

Phenomenological Modeling of Antibody Response from Vaccine Strain Composition.

Phenomenological Modeling of Antibody Response from Vaccine Strain Composition.

Phenomenological Modeling of Antibody Response from Vaccine Strain Composition.

The elicitation of broadly neutralizing antibodies (bnAbs) is a major goal of vaccine design for highly mutable pathogens, such as influenza, HIV, and coronavirus. Although many rational vaccine design strategies for eliciting bnAbs have been devised, their efficacies need to be evaluated in preclinical animal models and in clinical trials. To improve outcomes for such vaccines, it would be useful to develop methods that can predict vaccine efficacies against arbitrary pathogen variants. As a step in this direction, here, we describe a simple biologically motivated model of antibody reactivity elicited by nanoparticle-based vaccines using only antigen amino acid sequences, parametrized with a small sample of experimental antibody binding data from influenza or SARS-CoV-2 nanoparticle vaccinations. Results: The model is able to recapitulate the experimental data to within experimental uncertainty, is relatively insensitive to the choice of the parametrization/training set, and provides qualitative predictions about the antigenic epitopes exploited by the vaccine, which are testable by experiment. For the mosaic nanoparticle vaccines considered here, model results suggest indirectly that the sera obtained from vaccinated mice contain bnAbs, rather than simply different strain-specific Abs. Although the present model was motivated by nanoparticle vaccines, we also apply it to a mutlivalent mRNA flu vaccination study, and demonstrate good recapitulation of experimental results. This suggests that the model formalism is, in principle, sufficiently flexible to accommodate different vaccination strategies. Finally, we show how the model could be used to rank the efficacies of vaccines with different antigen compositions. Conclusions: Overall, this study suggests that simple models of vaccine efficacy parametrized with modest amounts of experimental data could be used to compare the effectiveness of designed vaccines.

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来源期刊
Antibodies
Antibodies IMMUNOLOGY-
CiteScore
7.10
自引率
6.40%
发文量
68
审稿时长
11 weeks
期刊介绍: Antibodies (ISSN 2073-4468), an international, peer-reviewed open access journal which provides an advanced forum for studies related to antibodies and antigens. It publishes reviews, research articles, communications and short notes. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. Full experimental and/or methodical details must be provided. Electronic files or software regarding the full details of the calculation and experimental procedure - if unable to be published in a normal way - can be deposited as supplementary material. This journal covers all topics related to antibodies and antigens, topics of interest include (but are not limited to): antibody-producing cells (including B cells), antibody structure and function, antibody-antigen interactions, Fc receptors, antibody manufacturing antibody engineering, antibody therapy, immunoassays, antibody diagnosis, tissue antigens, exogenous antigens, endogenous antigens, autoantigens, monoclonal antibodies, natural antibodies, humoral immune responses, immunoregulatory molecules.
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