Combination therapy with multiple drugs is a potent therapy strategy for
complex diseases such as cancer, due to its therapeutic efficacy and potential
for reducing side effects. However, the extensive search space of drug
combinations makes it challenging to screen all combinations experimentally. To
address this issue, computational methods have been developed to identify
prioritized drug combinations. Recently, Convolutional Neural Networks based
deep learning methods have shown great potential in this community. Although
the significant progress has been achieved by existing computational models,
they have overlooked the important high-level semantic information and
significant chemical bond features of drugs. It is worth noting that such
information is rich and it can be represented by the edges of graphs in drug
combination predictions. In this work, we propose a novel Edge-based Graph
Transformer, named EGTSyn, for effective anti-cancer drug combination synergy
prediction. In EGTSyn, a special Edge-based Graph Neural Network (EGNN) is
designed to capture the global structural information of chemicals and the
important information of chemical bonds, which have been neglected by most
previous studies. Furthermore, we design a Graph Transformer for drugs (GTD)
that combines the EGNN module with a Transformer-architecture encoder to
extract high-level semantic information of drugs.Comment: 15 pages,4 figures,6 table