Demonstration
MolDesigner: Interactive Design of Efficacious Drugs with Deep Learning
Kexin Huang · Tianfan Fu · Dawood Khan · Ali Abid · Ali Abdalla · Abubaker Abid · Lucas Glass · Marinka Zitnik · Cao Xiao · Jimeng Sun
Abstract:
The efficacy of a drug depends on its binding affinity to the therapeutic target and pharmacokinetics. Deep learning (DL) has demonstrated remarkable progress in predicting drug efficacy. We develop MolDesigner, a human-in-the-loop web user-interface (UI), to assist drug developers leverage DL predictions to design more effective drugs. A developer can draw a drug molecule in the interface. In the backend, more than 17 state-of-the-art DL models generate predictions on important indices that are crucial for a drug's efficacy. Based on these predictions, drug developers can edit the drug molecule and reiterate until satisfaction. MolDesigner can make predictions in real-time with a latency of less than a second.
Chat is not available.