“…In a similar fashion, a KG from CoV-KGE contains 15 million edges from 39 distinct relation categories . Subsequently, unsupervised dimensionality reduction methods, such as multimodal autoencoder (AE), variational autoencoder (VAE), and GNN, were implemented to extract characteristics of drugs, diseases, and their associations from the KG. , These characteristics of the heterogeneous KG were utilized to prepare the data set for training, validation, and testing purposes, as well as ML and DL model construction. Currently, DL strategies are most widely used to process graph-structured data because of their capacity to manage complex network data. ,, Graph convolutional neural network was utilized by AI-DrugNet to identify drug–target associations .…”