Author:
Rawi Reda,Mall Raghvendra,Shen Chen-Hsiang,Doria-Rose Nicole A.,Farney S. Katie,Shiakolas Andrea,Zhou Jing,Chun Tae-Wook,Lynch Rebecca M.,Mascola John R.,Kwong Peter D.,Chuang Gwo-Yu
Abstract
Broadly neutralizing antibodies (bNAbs) targeting the HIV-1 envelope glycoprotein (Env) have promising utility in prevention and treatment of HIV-1 infection with several undergoing clinical trials. Due to high sequence diversity and mutation rate of HIV-1, viral isolates are often resistant to particular bNAbs. Resistant strains are commonly identified by time-consuming and expensive in vitro neutralization experiments. Here, we developed machine learning-based classifiers that accurately predict resistance of HIV-1 strains to 33 neutralizing antibodies. Notably, our classifiers achieved an overall prediction accuracy of 96% for 212 clinical isolates from patients enrolled in four different clinical trials. Moreover, use of the tree-based machine learning method gradient boosting machine enabled us to identify critical epitope features that distinguish between antibody resistance and sensitivity. The availability of an in silico antibody resistance predictor will facilitate informed decisions of antibody usage in clinical settings.
Publisher
Cold Spring Harbor Laboratory
Cited by
2 articles.
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