Litcius/Paper detail

RLFDDA: a meta-path based graph representation learning model for drug–disease association prediction

Meng-Long Zhang, Bo-Wei Zhao, Xiaorui Su, Yi-Zhou He, Yue Yang, Lun Hu

2022BMC Bioinformatics25 citationsDOIOpen Access PDF

Abstract

BACKGROUND: Drug repositioning is a very important task that provides critical information for exploring the potential efficacy of drugs. Yet developing computational models that can effectively predict drug-disease associations (DDAs) is still a challenging task. Previous studies suggest that the accuracy of DDA prediction can be improved by integrating different types of biological features. But how to conduct an effective integration remains a challenging problem for accurately discovering new indications for approved drugs. METHODS: In this paper, we propose a novel meta-path based graph representation learning model, namely RLFDDA, to predict potential DDAs on heterogeneous biological networks. RLFDDA first calculates drug-drug similarities and disease-disease similarities as the intrinsic biological features of drugs and diseases. A heterogeneous network is then constructed by integrating DDAs, disease-protein associations and drug-protein associations. With such a network, RLFDDA adopts a meta-path random walk model to learn the latent representations of drugs and diseases, which are concatenated to construct joint representations of drug-disease associations. As the last step, we employ the random forest classifier to predict potential DDAs with their joint representations. RESULTS: To demonstrate the effectiveness of RLFDDA, we have conducted a series of experiments on two benchmark datasets by following a ten-fold cross-validation scheme. The results show that RLFDDA yields the best performance in terms of AUC and F1-score when compared with several state-of-the-art DDAs prediction models. We have also conducted a case study on two common diseases, i.e., paclitaxel and lung tumors, and found that 7 out of top-10 diseases and 8 out of top-10 drugs have already been validated for paclitaxel and lung tumors respectively with literature evidence. Hence, the promising performance of RLFDDA may provide a new perspective for novel DDAs discovery over heterogeneous networks.

Topics & Concepts

Computer scienceMachine learningArtificial intelligenceRandom forestDrug repositioningGraphDrugTheoretical computer scienceMedicinePsychiatryComputational Drug Discovery MethodsBioinformatics and Genomic NetworksAdvanced Graph Neural Networks
RLFDDA: a meta-path based graph representation learning model for drug–disease association prediction | Litcius