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RLFDDA: a meta-path based graph representation learning model for drug–disease association prediction
by
He, Yi-Zhou
, Zhao, Bo-Wei
, Zhang, Meng-Long
, Yang, Yue
, Su, Xiao-Rui
, Hu, Lun
in
Algorithms
/ Benchmarking
/ Bioinformatics
/ Biomedical and Life Sciences
/ Computational Biology/Bioinformatics
/ Computer Appl. in Life Sciences
/ Computer applications
/ Datasets
/ Disease
/ Drug Discovery
/ Drug interactions
/ Drugs
/ Drug–disease association prediction
/ Graph representation learning
/ Graph representations
/ Graphic methods
/ Graphical representations
/ Heterogeneous network
/ Humans
/ Knowledge
/ Learning
/ Life Sciences
/ Lung cancer
/ Lung Neoplasms
/ Lungs
/ Mathematical models
/ Meta-path based random walk
/ Methods
/ Microarrays
/ Paclitaxel
/ Performance evaluation
/ Pharmaceutical research
/ Prediction models
/ Proteins
/ R&D
/ Random walk
/ Research & development
/ Semantics
/ Similarity
/ Tumors
/ Viruses
2022
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RLFDDA: a meta-path based graph representation learning model for drug–disease association prediction
by
He, Yi-Zhou
, Zhao, Bo-Wei
, Zhang, Meng-Long
, Yang, Yue
, Su, Xiao-Rui
, Hu, Lun
in
Algorithms
/ Benchmarking
/ Bioinformatics
/ Biomedical and Life Sciences
/ Computational Biology/Bioinformatics
/ Computer Appl. in Life Sciences
/ Computer applications
/ Datasets
/ Disease
/ Drug Discovery
/ Drug interactions
/ Drugs
/ Drug–disease association prediction
/ Graph representation learning
/ Graph representations
/ Graphic methods
/ Graphical representations
/ Heterogeneous network
/ Humans
/ Knowledge
/ Learning
/ Life Sciences
/ Lung cancer
/ Lung Neoplasms
/ Lungs
/ Mathematical models
/ Meta-path based random walk
/ Methods
/ Microarrays
/ Paclitaxel
/ Performance evaluation
/ Pharmaceutical research
/ Prediction models
/ Proteins
/ R&D
/ Random walk
/ Research & development
/ Semantics
/ Similarity
/ Tumors
/ Viruses
2022
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RLFDDA: a meta-path based graph representation learning model for drug–disease association prediction
by
He, Yi-Zhou
, Zhao, Bo-Wei
, Zhang, Meng-Long
, Yang, Yue
, Su, Xiao-Rui
, Hu, Lun
in
Algorithms
/ Benchmarking
/ Bioinformatics
/ Biomedical and Life Sciences
/ Computational Biology/Bioinformatics
/ Computer Appl. in Life Sciences
/ Computer applications
/ Datasets
/ Disease
/ Drug Discovery
/ Drug interactions
/ Drugs
/ Drug–disease association prediction
/ Graph representation learning
/ Graph representations
/ Graphic methods
/ Graphical representations
/ Heterogeneous network
/ Humans
/ Knowledge
/ Learning
/ Life Sciences
/ Lung cancer
/ Lung Neoplasms
/ Lungs
/ Mathematical models
/ Meta-path based random walk
/ Methods
/ Microarrays
/ Paclitaxel
/ Performance evaluation
/ Pharmaceutical research
/ Prediction models
/ Proteins
/ R&D
/ Random walk
/ Research & development
/ Semantics
/ Similarity
/ Tumors
/ Viruses
2022
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RLFDDA: a meta-path based graph representation learning model for drug–disease association prediction
Journal Article
RLFDDA: a meta-path based graph representation learning model for drug–disease association prediction
2022
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Overview
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.
Publisher
BioMed Central,BioMed Central Ltd,Springer Nature B.V,BMC
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