Davis Courtney L, Wahid Rezwanul, Toapanta Franklin R, Simon Jakub K, Sztein Marcelo B
Natural Science Division, Pepperdine University, Malibu, CA, United States of America.
Center for Vaccine Development, University of Maryland School of Medicine, Baltimore, MD, United States of America.
PLoS One. 2018 Jan 5;13(1):e0189571. doi: 10.1371/journal.pone.0189571. eCollection 2018.
We refine and clinically parameterize a mathematical model of the humoral immune response against Shigella, a diarrheal bacteria that infects 80-165 million people and kills an estimated 600,000 people worldwide each year. Using Latin hypercube sampling and Monte Carlo simulations for parameter estimation, we fit our model to human immune data from two Shigella EcSf2a-2 vaccine trials and a rechallenge study in which antibody and B-cell responses against Shigella's lipopolysaccharide (LPS) and O-membrane proteins (OMP) were recorded. The clinically grounded model is used to mathematically investigate which key immune mechanisms and bacterial targets confer immunity against Shigella and to predict which humoral immune components should be elicited to create a protective vaccine against Shigella. The model offers insight into why the EcSf2a-2 vaccine had low efficacy and demonstrates that at a group level a humoral immune response induced by EcSf2a-2 vaccine or wild-type challenge against Shigella's LPS or OMP does not appear sufficient for protection. That is, the model predicts an uncontrolled infection of gut epithelial cells that is present across all best-fit model parameterizations when fit to EcSf2a-2 vaccine or wild-type challenge data. Using sensitivity analysis, we explore which model parameter values must be altered to prevent the destructive epithelial invasion by Shigella bacteria and identify four key parameter groups as potential vaccine targets or immune correlates: 1) the rate that Shigella migrates into the lamina propria or epithelium, 2) the rate that memory B cells (BM) differentiate into antibody-secreting cells (ASC), 3) the rate at which antibodies are produced by activated ASC, and 4) the Shigella-specific BM carrying capacity. This paper underscores the need for a multifaceted approach in ongoing efforts to design an effective Shigella vaccine.
我们对针对志贺氏菌的体液免疫反应数学模型进行了优化和临床参数化。志贺氏菌是一种导致腹泻的细菌,每年在全球感染8000万至1.65亿人,估计造成60万人死亡。我们使用拉丁超立方抽样和蒙特卡罗模拟进行参数估计,将模型与来自两项志贺氏菌EcSf2a - 2疫苗试验的人体免疫数据以及一项再激发研究的数据进行拟合,在该再激发研究中记录了针对志贺氏菌脂多糖(LPS)和O膜蛋白(OMP)的抗体和B细胞反应。这个基于临床的模型用于从数学角度研究哪些关键免疫机制和细菌靶点赋予针对志贺氏菌的免疫力,并预测应激发哪些体液免疫成分以研发出针对志贺氏菌的保护性疫苗。该模型揭示了EcSf2a - 2疫苗效力低下的原因,并表明在群体水平上,EcSf2a - 2疫苗或野生型菌株针对志贺氏菌LPS或OMP诱导的体液免疫反应似乎不足以提供保护。也就是说,当模型拟合EcSf2a - 2疫苗或野生型菌株攻击数据时,所有最佳拟合模型参数化都显示该模型预测肠道上皮细胞会出现不受控制的感染。通过敏感性分析,我们探索了哪些模型参数值必须改变以防止志贺氏菌对上皮细胞的破坏性侵袭,并确定了四个关键参数组作为潜在的疫苗靶点或免疫相关因素:1)志贺氏菌迁移到固有层或上皮的速率;2)记忆B细胞(BM)分化为抗体分泌细胞(ASC)的速率;3)活化ASC产生抗体的速率;4)志贺氏菌特异性BM的承载能力。本文强调了在当前设计有效志贺氏菌疫苗的努力中采用多方面方法的必要性。