Abstract

Abstract In this paper we describe an improved neural network method to predict T‐cell class I epitopes. A novel input representation has been developed consisting of a combination of sparse encoding, Blosum encoding, and input derived from hidden Markov models. We demonstrate that the combination of several neural networks derived using different sequence‐encoding schemes has a performance superior to neural networks derived using a single sequence‐encoding scheme. The new method is shown to have a performance that is substantially higher than that of other methods. By use of mutual information calculations we show that peptides that bind to the HLA A*0204 complex display signal of higher order sequence correlations. Neural networks are ideally suited to integrate such higher order correlations when predicting the binding affinity. It is this feature combined with the use of several neural networks derived from different and novel sequence‐encoding schemes and the ability of the neural network to be trained on data consisting of continuous binding affinities that gives the new method an improved performance. The difference in predictive performance between the neural network methods and that of the matrix‐driven methods is found to be most significant for peptides that bind strongly to the HLA molecule, confirming that the signal of higher order sequence correlation is most strongly present in high‐binding peptides. Finally, we use the method to predict T‐cell epitopes for the genome of hepatitis C virus and discuss possible applications of the prediction method to guide the process of rational vaccine design.

Keywords

Artificial neural networkSequence (biology)Encoding (memory)Computer scienceArtificial intelligenceEpitopePattern recognition (psychology)Computational biologyFeature (linguistics)AlgorithmBiologyGenetics

Affiliated Institutions

Related Publications

Squeeze-and-Excitation Networks

Convolutional neural networks are built upon the convolution operation, which extracts informative features by fusing spatial and channel-wise information together within local ...

2018 25361 citations

Publication Info

Year
2003
Type
article
Volume
12
Issue
5
Pages
1007-1017
Citations
1102
Access
Closed

External Links

Social Impact

Social media, news, blog, policy document mentions

Citation Metrics

1102
OpenAlex

Cite This

Morten Nielsen, Claus Lundegaard, Peder Worning et al. (2003). Reliable prediction of T‐cell epitopes using neural networks with novel sequence representations. Protein Science , 12 (5) , 1007-1017. https://doi.org/10.1110/ps.0239403

Identifiers

DOI
10.1110/ps.0239403