AI Article Synopsis

  • The study explores the complex relationship between HIV envelope glycoproteins' primary structure and antibody neutralization, influenced by factors like binding affinity and viral strain infection rates.
  • An artificial feedforward neural network is employed to analyze experimental data and learn these dependencies.
  • The neural network shows promising results, effectively generalizing to new viral strains and accurately predicting neutralizing activities of antibodies against HIV-1.

Article Abstract

The dependency between the primary structure of HIV envelope glycoproteins (ENV) and the neutralization data for given antibodies is very complicated and depends on a large number of factors, such as the binding affinity of a given antibody for a given ENV protein, and the intrinsic infection kinetics of the viral strain. This paper presents a first approach to learning these dependencies using an artificial feedforward neural network which is trained to learn from experimental data. The results presented here demonstrate that the trained neural network is able to generalize on new viral strains and to predict reliable values of neutralizing activities of given antibodies against HIV-1.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5085742PMC
http://dx.doi.org/10.3390/ijms17101710DOI Listing

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