Nonlinear Predictive Modeling of MHC Class II–Peptide Binding Using Bayesian Neural Networks
| Abstract |
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Methods for predicting the binding affinity of peptides to the MHC have become more sophisticated in the past 5–10 years.
It is possible to use computational quantitative structure-activity methods to build models of peptide affinity that are truly
predictive. Two of the most useful methods for building models are Bayesian regularized neural networks for continuous or
discrete (categorical) data and support vector machines (SVMs) for discrete data. We illustrate the application of Bayesian
regularized neural networks to modeling MHC class II-binding affinity of peptides. Training data comprised sequences and binding
data for nonamer (nine amino acid) peptides. Peptides were characterized by mathematical representations of several types.
Independent test data comprised sequences and binding data for peptides of length ≤ 25 . We also internally validated the
models by using 30% of the data in an internal test set. We obtained robust models, with near-identical statistics for multiple
training runs. We determined how predictive our models were using statistical tests and area under the receiver operating
characteristic (ROC) graphs (AROC) . Some mathematical representations of the peptides were more efficient than others and were able to generalize to unknown
peptides outside of the training space. Bayesian neural networks are robust, efficient ‘‘universal approximators’’ that are
well able to tackle the difficult problem of correctly predicting the MHC class II-binding activities of a majority of the
test set peptides.
Affiliation(s): (3) Centre for Complexity in Drug Discovery, CSIRO Molecular and Health Technologies, Clayton, Australia
(4) SciMetrics, Harrow Enterprises Pty. Ltd., Fitzroy, Victoria, Australia
(4) SciMetrics, Harrow Enterprises Pty. Ltd., Fitzroy, Victoria, Australia
Series: Methods in Molecular Biology | Volume: 409 | Pub. Date: Jun-21-2007 | Page Range: 365-377 | DOI: 10.1007/978-1-60327-118-9_27
Subject: Immunology
Key Words: Bayesian neural networks - quantitative structure-activity relationships - T-cell epitope - major histocompatibility complex - peptide binding
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