Designing of interferon-gamma inducing MHC class-II binders
Institute of Microbial Technology · Council of Scientific and Industrial Research
Abstract
The generation of interferon-gamma (IFN-γ) by MHC class II activated CD4+ T helper cells play a substantial contribution in the control of infections such as caused by Mycobacterium tuberculosis. In the past, numerous methods have been developed for predicting MHC class II binders that can activate T-helper cells. Best of author's knowledge, no method has been developed so far that can predict the type of cytokine will be secreted by these MHC Class II binders or T-helper epitopes. In this study, an attempt has been made to predict the IFN-γ inducing peptides. The main dataset used in this study contains 3705 IFN-γ inducing and 6728 non-IFN-γ inducing MHC class II binders. Another dataset called IFNgOnly contains 4483 IFN-γ inducing epitopes and 2160 epitopes that induce other cytokine except IFN-γ. In addition we have alternate dataset that contains IFN-γ inducing and equal number of random peptides.
It was observed that the peptide length, positional conservation of residues and amino acid composition affects IFN-γ inducing capabilities of these peptides. We identified the motifs in IFN-γ inducing binders/peptides using MERCI software. Our analysis indicates that IFN-γ inducing and non-inducing peptides can be discriminated using above features. We developed models for predicting IFN-γ inducing peptides using various approaches like machine learning technique, motifs-based search, and hybrid approach. Our best model based on the hybrid approach achieved maximum prediction accuracy of 82.10% with MCC of 0.62 on main dataset. We also developed hybrid model on IFNgOnly dataset and achieved maximum accuracy of 81.39% with 0.57 MCC.
Citation impact
- FWCI
- 2.09
- Percentile
- 100%
- References
- 71
Authors
3- SKSandeep Kumar DhandaCorresponding
Institute of Microbial Technology, Council of Scientific and Industrial Research
- PVPooja Vir
Institute of Microbial Technology, Council of Scientific and Industrial Research
- GPGajendra P. S. Raghava
Institute of Microbial Technology, Council of Scientific and Industrial Research
Topics & keywords
- Epitope
- Biology
- Major histocompatibility complex
- MHC class I
- Computational biology
- MHC class II
- Interferon gamma
- Interferon
- Reduced inequalities