posted on 2024-09-25, 19:03authored byJiali Guo, Songran Yang, Chenghui Wang, Jing Liu, Yanzhi Guo, Zongwei Yang, Xueyan Zhao, Xuemei Pu
Cocrystallization, as a molecular modification strategy,
has exhibited
great success in the chemistry and material fields. To reduce time
and labor costs in experiments, machine learning of artificial intelligence
(AI) has been introduced to accelerate cocrystal development. Despite
the theoretical success of the exploits, their usages suffer from
professional programmed operation and substantial human intervention,
thus hindering their application in practice. To fill up the gap between
theory and practical application, we explore a one-step and user-friendly
cocrystal prediction web server (CCPT), which integrates two state-of-the-art
deep learning models with high generalization and accuracy, including
cocrystal screening and density evaluation. Users only need to upload
molecule pair files and select the job type. CCPT can automatically
perform feature descriptor calculation and prediction tasks (cocrystallization
formation and their densities). All prediction results will be packaged
into a file format that can be visualized and downloaded on the web
page by users. The entire process under the ergonomic graphical interface
is code-free operation and a streamlined workflow with minimum human
intervention and thus very simple and convenient for the end-user,
especially for experimental investigators. CCPT is free and accessible
at http://www.scuccpt.cn.
We expect that it will be a useful design tool for diverse cocrystal
fields.