posted on 2024-03-29, 14:12authored byXinyue Zhang, Ye Sheng, Xiumin Liu, Jiong Yang, William A. Goddard III, Caichao Ye, Wenqing Zhang
The graph representation of complex materials plays a
crucial role
in the field of inorganic and organic materials investigations for
developing data-centric materials science, such as those using graph
neural networks (GNNs). However, the currently prevalent GNN models
are primarily employed for investigating periodic crystals and organic
small molecule data, yet they still encounter challenges in terms
of interpretability and computational efficiency when applied to polymer
monomers and organic macromolecules data. There is still a lack of
graph representation of organic polymers and macromolecules specifically
tailored for GNN models to explore the structural characteristics.
The Polymer-unit Graph, a novel coarse-grained graph
representation method introduced in study, is dedicated to expressing
and analyzing polymers and macromolecules. By incorporating the Polymer-unit Graph into the GNN models and analyzing the
organic semiconductor (OSC) materials database, it becomes possible
to uncover intricate structure–property relationships involving
branched-chain engineering, fluoridation substitution, and donor–acceptor
combination effects on the elementary structure of OSC polymers. Furthermore,
the Polymer-unit Graph enables visualizing the relationship
between target properties and polymer units while reducing training
time by an impressive 98% and minimizing molecular graph representation
models. In conclusion, the Polymer-unit Graph successfully
integrates the concept of Polymer-unit into the field
of GNNs, enabling more accurate analysis and understanding of organic
polymers and macromolecules.