Large-scale ligand-based virtual screening for SARS-CoV-2 inhibitors using deep neural networks (2004.00979v3)
Abstract: Due to the current severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) pandemic, there is an urgent need for novel therapies and drugs. We conducted a large-scale virtual screening for small molecules that are potential CoV-2 inhibitors. To this end, we utilized "ChemAI", a deep neural network trained on more than 220M data points across 3.6M molecules from three public drug-discovery databases. With ChemAI, we screened and ranked one billion molecules from the ZINC database for favourable effects against CoV-2. We then reduced the result to the 30,000 top-ranked compounds, which are readily accessible and purchasable via the ZINC database. Additionally, we screened the DrugBank using ChemAI to allow for drug repurposing, which would be a fast way towards a therapy. We provide these top-ranked compounds of ZINC and DrugBank as a library for further screening with bioassays at https://github.com/ml-jku/sars-cov-inhibitors-chemai.
- Markus Hofmarcher (11 papers)
- Andreas Mayr (37 papers)
- Elisabeth Rumetshofer (5 papers)
- Peter Ruch (2 papers)
- Philipp Renz (4 papers)
- Johannes Schimunek (3 papers)
- Philipp Seidl (8 papers)
- Andreu Vall (9 papers)
- Michael Widrich (7 papers)
- Sepp Hochreiter (82 papers)
- Günter Klambauer (29 papers)