Discovery of a Novel DCAF1 Ligand Using a Drug-Target Interaction Prediction Model: Generalizing Machine Learning to New Drug Targets.
Serah W KimaniJulie OwenStuart R GreenFengling LiYanjun LiAiping DongPeter J BrownSuzanne AcklooDavid KuterCindy YangMiranda MacAskillStephen Scott MacKinnonCheryl H ArrowsmithMatthieu SchapiraVijay ShahaniLevon HalabelianPublished in: Journal of chemical information and modeling (2023)
DCAF1 functions as a substrate recruitment subunit for the RING-type CRL4 DCAF1 and the HECT family EDVP DCAF1 E3 ubiquitin ligases. The WDR domain of DCAF1 serves as a binding platform for substrate proteins and is also targeted by HIV and SIV lentiviral adaptors to induce the ubiquitination and proteasomal degradation of antiviral host factors. It is therefore attractive both as a potential therapeutic target for the development of chemical inhibitors and as an E3 ligase that could be recruited by novel PROTACs for targeted protein degradation. In this study, we used a proteome-scale drug-target interaction prediction model, MatchMaker, combined with cheminformatics filtering and docking to identify ligands for the DCAF1 WDR domain. Biophysical screening and X-ray crystallographic studies of the predicted binders confirmed a selective ligand occupying the central cavity of the WDR domain. This study shows that artificial intelligence-enabled virtual screening methods can successfully be applied in the absence of previously known ligands.
Keyphrases
- artificial intelligence
- machine learning
- big data
- small molecule
- deep learning
- hiv positive
- protein protein
- drug induced
- cancer therapy
- hepatitis c virus
- emergency department
- human immunodeficiency virus
- high throughput
- magnetic resonance imaging
- hiv infected
- antiretroviral therapy
- binding protein
- computed tomography
- adverse drug
- molecular dynamics simulations
- magnetic resonance
- mass spectrometry
- dna binding
- transcription factor
- men who have sex with men