Litcius/Paper detail

A novel efficient drug repurposing framework through drug-disease association data integration using convolutional neural networks

R. Amiri, Jafar Razmara, Sepideh Parvizpour, Habib Izadkhah

2023BMC Bioinformatics15 citationsDOIOpen Access PDF

Abstract

Drug repurposing is an exciting field of research toward recognizing a new FDA-approved drug target for the treatment of a specific disease. It has received extensive attention regarding the tedious, time-consuming, and highly expensive procedure with a high risk of failure of new drug discovery. Data-driven approaches are an important class of methods that have been introduced for identifying a candidate drug against a target disease. In the present study, a model is proposed illustrating the integration of drug-disease association data for drug repurposing using a deep neural network. The model, so-called IDDI-DNN, primarily constructs similarity matrices for drug-related properties (three matrices), disease-related properties (two matrices), and drug-disease associations (one matrix). Then, these matrices are integrated into a unique matrix through a two-step procedure benefiting from the similarity network fusion method. The model uses a constructed matrix for the prediction of novel and unknown drug-disease associations through a convolutional neural network. The proposed model was evaluated comparatively using two different datasets including the gold standard dataset and DNdataset. Comparing the results of evaluations indicates that IDDI-DNN outperforms other state-of-the-art methods concerning prediction accuracy.

Topics & Concepts

Drug repositioningComputer scienceConvolutional neural networkArtificial intelligenceDrugSimilarity (geometry)Machine learningArtificial neural networkData miningMedicinePharmacologyImage (mathematics)Computational Drug Discovery MethodsBioinformatics and Genomic NetworksMachine Learning in Bioinformatics