Abstract

The development of a humoral immune response to influenza vaccines occurs on a multisystems level. Due to the orchestration required for robust immune responses when multiple genes and their regulatory components across multiple cell types are involved, we examined an influenza vaccination cohort using multiple high-throughput technologies. In this study, we sought a more thorough understanding of how immune cell composition and gene expression relate to each other and contribute to interindividual variation in response to influenza vaccination. We first hypothesized that many of the differentially expressed (DE) genes observed after influenza vaccination result from changes in the composition of participants’ peripheral blood mononuclear cells (PBMCs), which were assessed using flow cytometry. We demonstrated that DE genes in our study are correlated with changes in PBMC composition. We gathered DE genes from 128 other publically available PBMC-based vaccine studies and identified that an average of 57% correlated with specific cell subset levels in our study (permutation used to control false discovery), suggesting that the associations we have identified are likely general features of PBMC-based transcriptomics. Second, we hypothesized that more robust models of vaccine response could be generated by accounting for the interplay between PBMC composition, gene expression, and gene regulation. We employed machine learning to generate predictive models of B-cell ELISPOT response outcomes and hemagglutination inhibition (HAI) antibody titers. The top HAI and B-cell ELISPOT model achieved an area under the receiver operating curve (AUC) of 0.64 and 0.79, respectively, with linear model coefficients of determination of 0.08 and 0.28. For the B-cell ELISPOT outcomes, CpG methylation had the greatest predictive ability, highlighting potentially novel regulatory features important for immune response. B-cell ELISOT models using only PBMC composition had lower performance (AUC = 0.67), but highlighted well-known mechanisms. Our analysis demonstrated that each of the three data sets (cell composition, mRNA-Seq, and DNA methylation) may provide distinct information for the prediction of humoral immune response outcomes. We believe that these findings are important for the interpretation of current omics-based studies and set the stage for a more thorough understanding of interindividual immune responses to influenza vaccination.

Highlights

  • Goals of vaccine research include improved understanding of vaccine-induced immunity, identification of differences in immune responses to vaccination, and determination of their underlying mechanisms

  • Our study consisted of 159 subjects for which hemagglutination inhibition assay (HAI), B-cell ELISPOT, three flow cytometry panels, mRNA-Seq, and CpG methylation data were available at several time points relative to vaccination [details published previously [23,24,25,26, 49]]

  • We have found that [1] overall variability of participants’ peripheral blood mononuclear cells (PBMCs) composition is correlated with overall variability in gene expression, [2] many of the individual genes with statistically significant gene expression changes are associated with changes in specific cell subsets, and [3] PBMC composition is a strong predictor of humoral immune response

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Summary

Introduction

Goals of vaccine research include improved understanding of vaccine-induced immunity, identification of differences in immune responses to vaccination, and determination of their underlying mechanisms. Leveraging molecular data to enhance our ability to predict response to influenza vaccination is of great interest. Previous studies of immune response to influenza vaccination have leveraged genetic association and gene expression data to highlight specific pathways and signaling events, which have contributed greatly to our understanding of innate and adaptive immune responses [5,6,7,8,9]. A common theme observed throughout these studies is that very few individual genes demonstrate strong effect sizes [5, 10]; rather many genes exhibit small effects, similar to what has been observed in genetic association studies for other complex traits [11, 12], including immunity following vaccination [13,14,15,16]. To generate robust statistical models of vaccine response, it may be necessary to leverage multiple genetic features whose combined information is greater than each alone

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