1. Inferring B cell specificity for vaccines using a Bayesian mixture model
- Author
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Dominic F. Kelly, Gerton Lunter, Jacob D. Galson, Anna Fowler, Johannes Trück, University of Zurich, and Fowler, Anna
- Subjects
Immune repertoire ,lcsh:QH426-470 ,lcsh:Biotechnology ,B-cell receptor ,610 Medicine & health ,Computational biology ,Biology ,03 medical and health sciences ,0302 clinical medicine ,Immune system ,1311 Genetics ,Antigen ,Immunity ,lcsh:TP248.13-248.65 ,Influenza, Human ,Genetics ,medicine ,Humans ,B cell ,030304 developmental biology ,B-Lymphocytes ,Vaccines ,0303 health sciences ,High-throughput sequencing ,B cell receptor ,Methodology Article ,Vaccination ,Models, Immunological ,breakpoint cluster region ,Bayes Theorem ,Hepatitis B ,lcsh:Genetics ,medicine.anatomical_structure ,10036 Medical Clinic ,1305 Biotechnology ,biology.protein ,Antibody ,030215 immunology ,Biotechnology - Abstract
Background Vaccines have greatly reduced the burden of infectious disease, ranking in their impact on global health second only after clean water. Most vaccines confer protection by the production of antibodies with binding affinity for the antigen, which is the main effector function of B cells. This results in short term changes in the B cell receptor (BCR) repertoire when an immune response is launched, and long term changes when immunity is conferred. Analysis of antibodies in serum is usually used to evaluate vaccine response, however this is limited and therefore the investigation of the BCR repertoire provides far more detail for the analysis of vaccine response. Results Here, we introduce a novel Bayesian model to describe the observed distribution of BCR sequences and the pattern of sharing across time and between individuals, with the goal to identify vaccine-specific BCRs. We use data from two studies to assess the model and estimate that we can identify vaccine-specific BCRs with 69% sensitivity. Conclusion Our results demonstrate that statistical modelling can capture patterns associated with vaccine response and identify vaccine specific B cells in a range of different data sets. Additionally, the B cells we identify as vaccine specific show greater levels of sequence similarity than expected, suggesting that there are additional signals of vaccine response, not currently considered, which could improve the identification of vaccine specific B cells.
- Published
- 2020
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