2019
DOI: 10.3390/molecules24152712
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Inferring Drug-Related Diseases Based on Convolutional Neural Network and Gated Recurrent Unit

Abstract: Predicting novel uses for drugs using their chemical, pharmacological, and indication information contributes to minimizing costs and development periods. Most previous prediction methods focused on integrating the similarity and association information of drugs and diseases. However, they tended to construct shallow prediction models to predict drug-associated diseases, which make deeply integrating the information difficult. Further, path information between drugs and diseases is important auxiliary informat… Show more

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Cited by 10 publications
(3 citation statements)
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“…Various specially designed AI/ML models have been proposed for detecting novel drug indications. Here, we classify the ML applications for drug repositioning into the following three categories: (i) Similarity‐based methods that employ different types of classifiers like logistic regression, 305,306 SVM, 307–309 RF, 310,311 KNN, 312 and CNN, 313 (ii) feature vector‐based methods that utilize supervised 314–318 and semisupervised 319–321 learning algorithms, and (iii) network‐based methods that mainly use semisupervised learning algorithms (e.g., Laplacian regularized least square, 322–324 label propagation, 325 random walk, 326 and RF 310 ). We provide an in‐depth discussion of these three classes of AI‐based drug repositioning applications in the Supporting Information.…”
Section: Ai/ml Applications In Drug Discoverymentioning
confidence: 99%
“…Various specially designed AI/ML models have been proposed for detecting novel drug indications. Here, we classify the ML applications for drug repositioning into the following three categories: (i) Similarity‐based methods that employ different types of classifiers like logistic regression, 305,306 SVM, 307–309 RF, 310,311 KNN, 312 and CNN, 313 (ii) feature vector‐based methods that utilize supervised 314–318 and semisupervised 319–321 learning algorithms, and (iii) network‐based methods that mainly use semisupervised learning algorithms (e.g., Laplacian regularized least square, 322–324 label propagation, 325 random walk, 326 and RF 310 ). We provide an in‐depth discussion of these three classes of AI‐based drug repositioning applications in the Supporting Information.…”
Section: Ai/ml Applications In Drug Discoverymentioning
confidence: 99%
“…Learned features were then decoded to predict repositioning candidates. Xuan et al [272] presented a novel model that was based on CNN to capture local representation from feature matrices and GRU, to learn path representation from drug-disease paths. The model outperformed other previous studies.…”
Section: Deep Learning Approachesmentioning
confidence: 99%
“…If the input data is in the form of sequences, then Recurrent Neural Networks (RNN) are trained with the time-stamped data and used for prediction of drugs ( Wang et al, 2020 ). Hybrid models that combine the power of Convolutional Neural Networks (CNN) and RNN have been used for drug repurposing ( Xuan et al, 2019 ; Jarada et al, 2020 ). Gene protein and protein–protein interactions are generally depicted in the form of a graph, which have led to identifying disease networks and network medicine approaches for drug repurposing ( Gysi et al, 2020 ).…”
Section: Introductionmentioning
confidence: 99%