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Alex Rubinsteyn
Alex Rubinsteyn
Research Staff
Researcher in the Hammerbacher Lab at Mount Sinai. Working on applying machine learning to immunology & genomics, with an eye for translational medical applications. Most important project at the moment: Phase I personalized neoantigen vaccine trial for solid tumors.
New York

Public Documents 1
Predicting Peptide-MHC Binding Affinities With Imputed Training Data
Alex Rubinsteyn
Timothy O'Donnell

Alex Rubinsteyn

and 3 more

April 19, 2016
Predicting the binding affinity between MHC proteins and their peptide ligands is a key problem in computational immunology. State of the art performance is currently achieved by the allele-specific predictor NetMHC and the pan-allele predictor NetMHCpan, both of which are ensembles of shallow neural networks. We explore an intermediate between allele-specific and pan-allele prediction: training allele-specific predictors with synthetic samples generated by imputation of the peptide-MHC affinity matrix. We find that the imputation strategy is useful on alleles with very little training data. We have implemented our predictor as an open-source software package called MHCflurry and show that MHCflurry achieves competitive performance to NetMHC and NetMHCpan.

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