Article
A new ensemble coevolution system for detecting HIV-1 protein coevolution
Registro en:
LI, G. et al. A new ensemble coevolution system for detecting HIV-1 protein coevolution. Biology Direct, v. 10, p. 1, 2015.
1745-6150
10.1186/s13062-014-0031-8
Autor
Li, Guangdi
Theys, Kristof
Verheyen, Jens
Peña, Andrea Clemencia Pineda
Cunha, Antonio Ricardo Khouri
Piampongsant, Supinya
Eusébio, Mónica
Ramon, Jan
Vandamme, Anne Mieke
Resumen
Khouri, Antonio Ricardo “Documento produzido em parceria ou por autor vinculado à Fiocruz, mas não consta à informação no documento”. Fonds voor Wetenschappelijk Onderzoek – Flanders (FWO) [PDO/11 to K.T., G.0692.14]; the European Community’s Seventh Framework Programme (FP7/2007-2013) under the project “Collaborative HIV and Anti-HIV Drug Resistance Network (CHAIN)” [223131]. A key challenge in the field of HIV-1 protein evolution is the identification of coevolving amino acids at the molecular level. In the past decades, many sequence-based methods have been designed to detect position-specific coevolution within and between different proteins. However, an ensemble coevolution system that integrates different methods to improve the detection of HIV-1 protein coevolution has not been developed. Results: We integrated 27 sequence-based prediction methods published between 2004 and 2013 into an ensemble
coevolution system. This system allowed combinations of different sequence-based methods for coevolution
predictions. Using HIV-1 protein structures and experimental data, we evaluated the performance of individual and
combined sequence-based methods in the prediction of HIV-1 intra- and inter-protein coevolution. We showed that
sequence-based methods clustered according to their methodology, and a combination of four methods
outperformed any of the 27 individual methods. This four-method combination estimated that HIV-1 intra-protein
coevolving positions were mainly located in functional domains and physically contacted with each other in the
protein tertiary structures. In the analysis of HIV-1 inter-protein coevolving positions between Gag and protease,
protease drug resistance positions near the active site mostly coevolved with Gag cleavage positions (V128, S373-
T375, A431, F448-P453) and Gag C-terminal positions (S489-Q500) under selective pressure of protease inhibitors.
Conclusions: This study presents a new ensemble coevolution system which detects position-specific coevolution
using combinations of 27 different sequence-based methods. Our findings highlight key coevolving residues within
HIV-1 structural proteins and between Gag and protease, shedding light on HIV-1 intra- and inter-protein coevolution.