Biotechnology HPC Software Applications Institute, Telemedicine and Advanced Technology Research Center, U.S. Army Medical Research and Materiel Command, Fort Detrick, MD, USA.
Malaria Vaccine Branch, U.S. Military Malaria Research Program, Walter Reed Army Institute of Research, Silver Spring, MD, USA.
Hum Vaccin Immunother. 2020;16(2):400-411. doi: 10.1080/21645515.2019.1654807. Epub 2019 Oct 7.
Adjuvants produce complex, but often subtle, effects on vaccine-induced immune responses that, nonetheless, play a critical role in vaccine efficacy. In-depth profiling of vaccine-induced cytokine, cellular, and antibody responses ("immunoprofiling") combined with machine-learning holds the promise of identifying adjuvant-specific immune response characteristics that can guide rational adjuvant selection. Here, we profiled human immune responses induced by vaccines adjuvanted with two similar, clinically relevant adjuvants, AS01B and AS02A, and identified key distinguishing characteristics, or immune signatures, they imprint on vaccine-induced immunity. Samples for this side-by-side comparison were from malaria-naïve individuals who had received a recombinant malaria subunit vaccine (AMA-1) that targets the pre-erythrocytic stage of the parasite. Both adjuvant formulations contain the same immunostimulatory components, QS21 and MPL, thus this study reveals the subtle impact that adjuvant formulation has on immunogenicity. Adjuvant-mediated immune signatures were established through a two-step approach: First, we generated a broad immunoprofile (serological, functional and cellular characterization of vaccine-induced responses). Second, we integrated the immunoprofiling data and identify what combination of immune features was most clearly able to distinguish vaccine-induced responses by adjuvant using machine learning. The computational analysis revealed statistically significant differences in cellular and antibody responses between cohorts and identified a combination of immune features that was able to distinguish subjects by adjuvant with 71% accuracy. Moreover, the in-depth characterization demonstrated an unexpected induction of CD8 T cells by the recombinant subunit vaccine, which is rare and highly relevant for future vaccine design.
佐剂对疫苗诱导的免疫反应产生复杂但往往微妙的影响,而这些影响在疫苗效力中起着至关重要的作用。深入分析疫苗诱导的细胞因子、细胞和抗体反应(“免疫分析”)与机器学习相结合,有望确定佐剂特异性免疫反应特征,从而指导合理的佐剂选择。在这里,我们对两种类似的、具有临床相关性的佐剂(AS01B 和 AS02A)佐剂的疫苗诱导的人类免疫反应进行了分析,并确定了它们在疫苗诱导免疫中留下的关键区别特征或免疫特征。进行此并排比较的样本来自疟原虫-naive 的个体,他们接受了一种针对寄生虫红细胞前阶段的重组疟疾亚单位疫苗(AMA-1)。这两种佐剂配方都含有相同的免疫刺激成分 QS21 和 MPL,因此本研究揭示了佐剂配方对免疫原性的微妙影响。通过两步法建立佐剂介导的免疫特征:首先,我们生成了广泛的免疫图谱(疫苗诱导反应的血清学、功能和细胞特性分析)。其次,我们整合了免疫图谱数据,并使用机器学习确定最能区分疫苗诱导反应的佐剂的免疫特征组合。计算分析显示,在细胞和抗体反应方面,队列之间存在统计学上的显著差异,并确定了一组能够以 71%的准确率区分佐剂的免疫特征。此外,深入的表征还显示了重组亚单位疫苗出乎意料地诱导了 CD8 T 细胞,这在未来的疫苗设计中是罕见且非常相关的。