###Drug-target binding affinity prediction model based on multi-scale diffusion and interactive learning


Drug–target affinity (DTA) prediction as an emerging and effective method is widely applied to explore the strength of drug–target interactions in drug development research. By predicting these interactions, researchers can assess the potential efficacy and safety of candidate drugs at an early stage, narrowing down the search space for therapeutic targets and accelerating the discovery and development of new drugs. However, existing DTA prediction models mainly use graphical representations of drug molecules, which lack information on interactions between individual substructures, thus affecting prediction accuracy and model interpretability.

Datasets


The datasets used in this paper are KIBA,Davis, Metz and BindingDB. The way to obtain the above datasets is given in the data file.

Requirement


The other libraries are listed in the requirements file.