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Benchmarking Deep Graph Generative Models for Optimizing New Drug Molecules for COVID-19 (2102.04977v1)

Published 9 Feb 2021 in cs.LG and cs.AI

Abstract: Design of new drug compounds with target properties is a key area of research in generative modeling. We present a small drug molecule design pipeline based on graph-generative models and a comparison study of two state-of-the-art graph generative models for designing COVID-19 targeted drug candidates: 1) a variational autoencoder-based approach (VAE) that uses prior knowledge of molecules that have been shown to be effective for earlier coronavirus treatments and 2) a deep Q-learning method (DQN) that generates optimized molecules without any proximity constraints. We evaluate the novelty of the automated molecule generation approaches by validating the candidate molecules with drug-protein binding affinity models. The VAE method produced two novel molecules with similar structures to the antiretroviral protease inhibitor Indinavir that show potential binding affinity for the SARS-CoV-2 protein target 3-chymotrypsin-like protease (3CL-protease).

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Authors (5)
  1. Logan Ward (34 papers)
  2. Jenna A. Bilbrey (8 papers)
  3. Sutanay Choudhury (36 papers)
  4. Neeraj Kumar (90 papers)
  5. Ganesh Sivaraman (14 papers)
Citations (3)

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