A case study of the application of AI to early stage drug discovery
Journal article, 2026

Artificial intelligence (AI) has emerged as a powerful tool in drug discovery, offering the potential to expedite the design of novel therapeutics. This study evaluates the effectiveness of a general-purpose conversational AI, ChatGPT (GPT-4o), in performing three distinct drug discovery tasks, assessing its ability to assist in early-stage molecular ideation and design. In the first task, ChatGPT generated molecules starting from five low-affinity EGFR inhibitors (IC₅₀ values of 10–3.16 µM), which were iteratively optimized in a QSAR model to produce compounds with predicted IC₅₀ values of ~ 10–50 nM. In the second task, de novo design of EGFR inhibitors produced a molecule with a predicted IC₅₀ of 94 nM in a single attempt. In the third task, ChatGPT generated non-covalent MCL1 inhibitors, with a top candidate achieving a docking score corresponding to a 39 nM dissociation constant. Because AI-generated molecules often face synthetic feasibility challenges, we also identified readily available analogues from a chemical vendor. These analogues were evaluated using molecular docking (AutoDock Vina) and QSAR models, with several achieving a promising activity range of 10–100 nM across the three tasks. These results demonstrate that general-purpose AI models like ChatGPT can accelerate early-stage drug discovery by assisting in molecular ideation and candidate prioritization.

Author

Abbi Abdel-Rehim

University of Cambridge

Larisa N. Soldatova

University of London

Ross King

Chalmers, Computer Science and Engineering (Chalmers), Data Science and AI

University of Cambridge

Alan Turing Institute

Scientific Reports

2045-2322 (ISSN) 20452322 (eISSN)

Vol. 16 1 2902

Subject Categories (SSIF 2025)

Pharmaceutical Sciences

DOI

10.1038/s41598-025-32805-1

PubMed

41454019

More information

Latest update

2/13/2026