RAIN: machine learning-based identification for HIV-1 bNAbs.
Mathilde FoglieriniPauline NortierRachel SchellingRahel R WinigerPhilippe JacquetSijy O'DellDavide DemurtasMaxmillian MpinaOmar LwenoYannick D MullerConstantinos PetrovasClaudia A DaubenbergerMatthieu PerreauNicole A Doria-RoseRaphaël GottardoLaurent PerezPublished in: Nature communications (2024)
Broadly neutralizing antibodies (bNAbs) are promising candidates for the treatment and prevention of HIV-1 infections. Despite their critical importance, automatic detection of HIV-1 bNAbs from immune repertoires is still lacking. Here, we develop a straightforward computational method for the Rapid Automatic Identification of bNAbs (RAIN) based on machine learning methods. In contrast to other approaches, which use one-hot encoding amino acid sequences or structural alignment for prediction, RAIN uses a combination of selected sequence-based features for the accurate prediction of HIV-1 bNAbs. We demonstrate the performance of our approach on non-biased, experimentally obtained and sequenced BCR repertoires from HIV-1 immune donors. RAIN processing leads to the successful identification of distinct HIV-1 bNAbs targeting the CD4-binding site of the envelope glycoprotein. In addition, we validate the identified bNAbs using an in vitro neutralization assay and we solve the structure of one of them in complex with the soluble native-like heterotrimeric envelope glycoprotein by single-particle cryo-electron microscopy (cryo-EM). Overall, we propose a method to facilitate and accelerate HIV-1 bNAbs discovery from non-selected immune repertoires.
Keyphrases
- antiretroviral therapy
- hiv positive
- hiv infected
- hiv testing
- human immunodeficiency virus
- machine learning
- hepatitis c virus
- hiv aids
- men who have sex with men
- high throughput
- south africa
- high resolution
- deep learning
- acute lymphoblastic leukemia
- electron microscopy
- computed tomography
- loop mediated isothermal amplification
- cancer therapy
- dengue virus