Computational advances in discovering cryptic pockets for drug discovery
Martijn P. Bemelmans, Zoe Cournia, Kelly L. Damm‐Ganamet, Francesco Luigi Gervasio, Vineet Pande
Abstract
A number of promising therapeutic target proteins have been considered "undruggable" due to the lack of well-defined ligandable pockets. Substantial research in protein dynamics has elucidated the existence of "cryptic" pockets that only exist transiently and become favorable for binding in the presence of a ligand. These pockets provide an avenue to target challenging proteins, inspiring the development of multiple computational methods. This review highlights established cryptic pocket modeling approaches like mixed solvent molecular dynamics and recent applications of enhanced sampling and AI-based methods in therapeutically relevant proteins.