Computational and Experimental Validation of B and T-Cell Epitopes of the In Vivo Immune Response to a Novel Malarial Antigen
Abstract
Vaccine development efforts will be guided by algorithms that predict immunogenic epitopes. Such prediction methods rely on classification-based algorithms that are trained against curated data sets of known B and T cell epitopes. It is unclear whether this empirical approach can be applied prospectively to predict epitopes associated with protective immunity for novel antigens. We present a comprehensive comparison of in silico B and T cell epitope predictions with in vivo validation using an previously uncharacterized malaria antigen, CelTOS. CelTOS has no known conserved structural elements with any known proteins, and thus is not represented in any epitope databases used to train prediction algorithms. This analysis represents a blind assessment of this approach in the context of a novel, immunologically relevant antigen. The limited accuracy of the tested algorithms to predict the in vivo immune responses emphasizes the need to improve their predictive capabilities for use as tools in vaccine design.
Document Details
- Document Type
- Technical Report
- Publication Date
- Aug 16, 2013
- Accession Number
- ADA598531
Entities
People
- Anders S. Wallqvist
- Christian F. Ockenhouse
- Elke S Bergmann-Leitner
- Evelina Angov
- Mark Sabato
- Nicholas J. Steers
- Sidhartha Chaudhury
- Vito Delvecchio
Organizations
- Biotechnology High Performance Computing Software Applications Institute