Ziyang Liu, Sivaramakrishnan Natarajan, et al.
VLDB
The coronavirus main protease, essential for viral replication, is a well-validated antiviral target. Here, we present Deep-CovBoost, a computational pipeline integrating deep learning with free energy perturbation (FEP) simulations to guide the structure-based optimization of inhibitors targeting the coronavirus main protease. Starting from a reported noncovalent inhibitor, the pipeline generated and prioritized analogs using predictive modeling, followed by rigorous validation through FEP and molecular dynamics simulations. This approach led to the identification of optimized compounds (e.g., I3C-1, I3C-2, I3C-35) that enhance binding affinity by engaging the underexploited S4 and S5 subpockets. These results highlight the potential of combining physics-based and AI-driven approaches to accelerate lead optimization and antiviral design.
Ziyang Liu, Sivaramakrishnan Natarajan, et al.
VLDB
Kento Tsubouchi, Yosuke Mitsuhashi, et al.
npj Quantum Information
Rafae Bhatti, Elisa Bertino, et al.
Communications of the ACM
Erich P. Stuntebeck, John S. Davis II, et al.
HotMobile 2008