AlphaFold is an outstanding example of artificial intelligence’s computational capabilities in accurately predicting intricate protein structures.
A new Review article explores AlphaFold’s recent advancements and its potential impact on predictive medicine.
The article is published in the peer-reviewed journal AI in Precision Oncology.
Vivek Subbiah, MD, from the Sarah Cannon Research Institute, and coauthors, describe a shift toward predictive medicine, in which AI, integrated with genomic data, revolutionises our understanding of diseases, facilitates drug design, and enables personalised therapies.
This evolution comes with challenges, however, and the review emphasises the importance of predicting protein functions, binding kinetics, and thermodynamic properties for effective drug development.
As AI merges with clinical data, the authors stress that “ethical considerations surrounding patient privacy and responsible AI use become paramount.”
The review presents a hypothetical patient journey in colorectal cancer, highlighting how AI-driven predictions could accelerate the development of personalised vaccines and facilitate adaptive clinical trials.
“AlphaFold's groundbreaking ability to predict protein structures is set to revolutionise predictive medicine, driving forward drug design and personalised therapies. Dr. Vivek Subbiah and coauthors, in a recent AI in Precision Oncology review, illuminate this transformative shift while addressing the crucial challenges and ethical considerations of integrating AI with clinical data.”, says Douglas Flora, MD, Editor-in-Chief of AI in Precision Oncology.