Title :
Evolved neural networks for HIV-1 co-receptor identification
Author :
Fogel, Gary B. ; Liu, Enoch S. ; Salemi, Marco ; Lamers, Susanna L. ; McGrath, Michael S.
Author_Institution :
Natural Selection, Inc., San Diego, CA, USA
Abstract :
HIV-1 infects a variety of cell types such as macrophages, T-cells and dendritic cells by expressing different chemokine receptors. R5 HIV-1 viruses use the CCR5 co-receptor for entry, X4 viruses use the CXCR4 co-receptor, and several viral strains make use of both co-receptors (a so-called “dual tropic” or R5X4 virus). Both X4 and R5X4 viruses are associated with late stage rapid progression to AIDS. It remains difficult to identify viral co-receptor type in advance of treatment, especially the R5X4 variety. In this paper we extended previous work to classify HIV-1 tropism using evolved neural networks and a larger set of HIV-1 sequences and features to improve overall classification accuracy.
Keywords :
biology computing; cellular biophysics; neural nets; pattern classification; AIDS rapid progression; CCR5 co-receptor; CXCR4 co-receptor; HIV-1 co-receptor identification; HIV-1 sequences; HIV-1 tropism classification; R5X4 virus; T-cells; X4 virus; chemokine receptors; classification accuracy; dendritic cells; evolved neural networks; macrophages; Artificial neural networks; Human immunodeficiency virus; Inhibitors; Testing; Training; Viruses (medical);
Conference_Titel :
Evolutionary Computation (CEC), 2014 IEEE Congress on
Conference_Location :
Beijing
Print_ISBN :
978-1-4799-6626-4
DOI :
10.1109/CEC.2014.6900628