# Graph Deep Learning for Drug Repurposing. ## Content in each directory: - **data**: Data to build DISNET's graph. - **documentation**: Instructions to install the needed libraries. - **metrics**: Training, testing and RepoDB validating ROC & PRC. - **models**: Trained models. - **results**: Result files of the RepoDB test and the distribution plots (once these are generated). - **testData**: Data to validate model using RepoDB. - **Code files:** - autoencoder (drug molecular embedder model). - dmsr (drug repurposing model). - drug_embedding_generator (generates drug embeddings using SMILES representation). - heterograph_construction (build graph). - testRepoDB (validate model using RepoDB). - testRepoDBWeightsAndBiases.py (validate model using RepoDB automatically with Weights&Biases). - topN (get topN new predictions). - utilities (plotting utilities). ## Summary Repository of Adrián Ayuso-Muñoz's master's final project "Graph Deep Learning for Drug Repurposing".