| Literature DB >> 28214535 |
Divya Khanna1, Prashant Singh Rana2.
Abstract
Identification of antigen for inducing specific class of antibody is prime objective in peptide based vaccine designs, immunodiagnosis, and antibody productions. It's urge to introduce a reliable system with high accuracy and efficiency for prediction. In the present study, a novel multilevel ensemble model is developed for prediction of antibodies IgG and IgA. Epitope length is important in training the model and it is efficient to use variable length of epitopes. In this ensemble approach, seven different machine learning models are combined to predict variable length of epitopes (4 to 50). The proposed model of IgG specific epitopes achieves 94.43% of accuracy and IgA specific epitopes achieves 97.56% of accuracy with repeated 10-fold cross validation. The proposed model is compared with the existing system i.e. IgPred model and outcome of proposed model is improved.Keywords: Antibody; B-cell epitope; Machine learning models; Multilevel ensemble model; Regularized trees
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Year: 2017 PMID: 28214535 DOI: 10.1016/j.imlet.2017.01.017
Source DB: PubMed Journal: Immunol Lett ISSN: 0165-2478 Impact factor: 3.685