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Computer Research and Modeling, 2020, Volume 12, Issue 6, Pages 1383–1395
DOI: https://doi.org/10.20537/2076-7633-2020-12-6-1383-1395
(Mi crm855)
 

This article is cited in 1 scientific paper (total in 1 paper)

ANALYSIS AND MODELING OF COMPLEX LIVING SYSTEMS

Ensemble building and statistical mechanics methods for MHC-peptide binding prediction

I. V. Grebenkina, A. E. Alekseenkob, N. A. Gaivoronskiya, M. G. Ignatovb, A. M. Kazennovb, D. Kozakovc, A. P. Kulagina, Ya. A. Kholodova

a Innopolis University, 1 Universitetskaya st., Innopolis, 420500, Russia
b Institute of Computer Aided Design of the Russian Academy of Sciences, 19/18 2 Brestskaya st., Moscow, 123056, Russia
c Stony Brook University, 100 Nicolls Rd, Stony Brook, NY, 11794, U.S.A.
Full-text PDF (550 kB) Citations (1)
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Abstract: The proteins of the Major Histocompatibility Complex (MHC) play a key role in the functioning of the adaptive immune system, and the identification of peptides that bind to them is an important step in the development of vaccines and understanding the mechanisms of autoimmune diseases. Today, there are a number of methods for predicting the binding of a particular MHC allele to a peptide. One of the best such methods isNetMHCpan-4.0, which is based on an ensemble of artificial neural networks. This paper presents a methodology for qualitatively improving the underlying neural network underlying NetMHCpan-4.0. The proposed method uses the ensemble construction technique and adds as input an estimate of the Potts model taken from static mechanics, which is a generalization of the Ising model. In the general case, the model reflects the interaction of spins in the crystal lattice. Within the framework of the proposed method, the model is used to better represent the physical nature of the interaction of proteins included in the complex. To assess the interaction of the MHC+peptide complex, we use a two-dimensional Potts model with 20 states (corresponding to basic amino acids). Solving the inverse problem using data on experimentally confirmed interacting pairs, we obtain the values of the parameters of the Potts model, which we then use to evaluate a new pair of MHC+peptide, and supplement this value with the input data of the neural network. This approach, combined with the ensemble construction technique, allows for improved prediction accuracy, in terms of the positive predictive value (PPV) metric, compared to the baseline model.
Keywords: major histocompatibility complex, binding affinity, neural network, machine learning, Potts model.
Funding agency Grant number
Russian Science Foundation 19-74-00090
Russian Foundation for Basic Research 19-37-90135
The work of A. E. Alekseenko and M. G. Ignatov is supported by the Russian Science Foundation under grant 19-74-00090.The work of I. V. Grebenkin is supported by the Russian Foundation for Basic Research under grant 19-37-90135 \\19.
Received: 10.08.2020
Revised: 19.10.2020
Accepted: 29.10.2020
Document Type: Article
UDC: 577.27
Language: Russian
Citation: I. V. Grebenkin, A. E. Alekseenko, N. A. Gaivoronskiy, M. G. Ignatov, A. M. Kazennov, D. Kozakov, A. P. Kulagin, Ya. A. Kholodov, “Ensemble building and statistical mechanics methods for MHC-peptide binding prediction”, Computer Research and Modeling, 12:6 (2020), 1383–1395
Citation in format AMSBIB
\Bibitem{GreAleGai20}
\by I.~V.~Grebenkin, A.~E.~Alekseenko, N.~A.~Gaivoronskiy, M.~G.~Ignatov, A.~M.~Kazennov, D.~Kozakov, A.~P.~Kulagin, Ya.~A.~Kholodov
\paper Ensemble building and statistical mechanics methods for MHC-peptide binding prediction
\jour Computer Research and Modeling
\yr 2020
\vol 12
\issue 6
\pages 1383--1395
\mathnet{http://mi.mathnet.ru/crm855}
\crossref{https://doi.org/10.20537/2076-7633-2020-12-6-1383-1395}
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  • https://www.mathnet.ru/eng/crm/v12/i6/p1383
  • This publication is cited in the following 1 articles:
    Citing articles in Google Scholar: Russian citations, English citations
    Related articles in Google Scholar: Russian articles, English articles
    Computer Research and Modeling
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