Multi‐perspectives and challenges in identifying B‐cell epitopes

Author:

Kumar Nishant1ORCID,Bajiya Nisha1ORCID,Patiyal Sumeet1ORCID,Raghava Gajendra P. S.1ORCID

Affiliation:

1. Department of Computational Biology Indraprastha Institute of Information Technology New Delhi India

Abstract

AbstractThe identification of B‐cell epitopes (BCEs) in antigens is a crucial step in developing recombinant vaccines or immunotherapies for various diseases. Over the past four decades, numerous in silico methods have been developed for predicting BCEs. However, existing reviews have only covered specific aspects, such as the progress in predicting conformational or linear BCEs. Therefore, in this paper, we have undertaken a systematic approach to provide a comprehensive review covering all aspects associated with the identification of BCEs. First, we have covered the experimental techniques developed over the years for identifying linear and conformational epitopes, including the limitations and challenges associated with these techniques. Second, we have briefly described the historical perspectives and resources that maintain experimentally validated information on BCEs. Third, we have extensively reviewed the computational methods developed for predicting conformational BCEs from the structure of the antigen, as well as the methods for predicting conformational epitopes from the sequence. Fourth, we have systematically reviewed the in silico methods developed in the last four decades for predicting linear or continuous BCEs. Finally, we have discussed the overall challenge of identifying continuous or conformational BCEs. In this review, we only listed major computational resources; a complete list with the URL is available from the BCinfo website (https://webs.iiitd.edu.in/raghava/bcinfo/).

Funder

University Grants Commission

Council of Scientific and Industrial Research, India

Department of Biotechnology

Publisher

Wiley

Subject

Molecular Biology,Biochemistry

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