| Literature DB >> 30297733 |
Edgar Ernesto Gonzalez Kozlova1, Loïc Cerf2, Francisco Santos Schneider3, Benjamin Thomas Viart4, Christophe NGuyen3, Bethina Trevisol Steiner5, Sabrina de Almeida Lima6, Franck Molina3, Clara Guerra Duarte6, Liza Felicori6, Carlos Chávez-Olórtegui6, Ricardo Andrez Machado-de-Ávila7.
Abstract
Epitope identification is essential for developing effective antibodies that can detect and neutralize bioactive proteins. Computational prediction is a valuable and time-saving alternative for experimental identification. Current computational methods for epitope prediction are underused and undervalued due to their high false positive rate. In this work, we targeted common properties of linear B-cell epitopes identified in an individual protein class (metalloendopeptidases) and introduced an alternative method to reduce the false positive rate and increase accuracy, proposing to restrict predictive models to a single specific protein class. For this purpose, curated epitope sequences from metalloendopeptidases were transformed into frame-shifted Kmers (3 to 15 amino acid residues long). These Kmers were decomposed into a matrix of biochemical attributes and used to train a decision tree classifier. The resulting prediction model showed a lower false positive rate and greater area under the curve when compared to state-of-the-art methods. Our predictions were used for synthesizing peptides mimicking the predicted epitopes for immunization of mice. A predicted linear epitope that was previously undetected by an experimental immunoassay was able to induce neutralizing-antibody production in mice. Therefore, we present an improved prediction alternative and show that computationally identified epitopes can go undetected during experimental mapping.Entities:
Mesh:
Substances:
Year: 2018 PMID: 30297733 PMCID: PMC6175905 DOI: 10.1038/s41598-018-33298-x
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379