AI tool dramatically reduces computing power needed to find protein-binding molecules | News
AI tool dramatically reduces computing power needed to find protein-binding molecules | News
Publish Date: 2026-01-13 09:41:00
Source Domain: www.chemistryworld.com
- A new machine learning tool called DrugCLIP dramatically speeds up the identification of small-molecule candidates that can bind specific proteins, requiring significantly less computational power compared to previous methods.
- Researchers at Tsinghua University developed the DrugCLIP framework, which uses a deep-learning algorithm to predict binding affinities, making it up to 10 million times faster than traditional docking methods.
- The method involves representing protein pockets and small molecules as vectors in high-dimensional space, calculating the scalar product to predict binding affinity, and validating the top candidates with AlphaFold3.
- Using the new tool, researchers identified potential drug candidates for the serotonin 2A receptor and the norepinephrine transporter, with one molecule targeting the norepinephrine transporter showing promising chemical effectiveness.
- The team discovered a new molecule that they hope to take to clinical trials, although they caution about the uncertainty of clinical effectiveness.
- Nicholas Polizzi at Harvard Medical School sees the potential of high-throughput, genome-wide screening for identifying ligands with minimal off-target effects, though he raises concerns regarding the generalizability of the deep-learning algorithm.