2023
DOI: 10.3389/fphar.2023.1205144
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Drug–disease association prediction with literature based multi-feature fusion

Abstract: Introduction: Exploring the potential efficacy of a drug is a valid approach for drug development with shorter development times and lower costs. Recently, several computational drug repositioning methods have been introduced to learn multi-features for potential association prediction. However, fully leveraging the vast amount of information in the scientific literature to enhance drug-disease association prediction is a great challenge.Methods: We constructed a drug-disease association prediction method call… Show more

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Cited by 8 publications
(6 citation statements)
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References 59 publications
(69 reference statements)
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“…To showcase the superiority of the DRAGNN model, we conducted a comparison with five advanced models on three datasets: Fdataset, Cdataset and LRSSL. The models included in the comparison were DRWBNCF [ 23 ], LBMFF [ 34 ], SCMFDD [ 35 ], SCPMF [ 8 ] and HNRD [ 36 ].…”
Section: Methodsmentioning
confidence: 99%
“…To showcase the superiority of the DRAGNN model, we conducted a comparison with five advanced models on three datasets: Fdataset, Cdataset and LRSSL. The models included in the comparison were DRWBNCF [ 23 ], LBMFF [ 34 ], SCMFDD [ 35 ], SCPMF [ 8 ] and HNRD [ 36 ].…”
Section: Methodsmentioning
confidence: 99%
“…Coupling high-throughput data production with data infrastructure and computational powers makes it feasible to use machine learning (ML) to aid drug repositioning. ML methods could be implemented during the coupling of the known drug with the disease-causing protein by aiding the recognition of potential drug–disease associations (e.g., through information networks [ 86 , 87 ] or embeddings [ 88 ]). The same methods could produce valid drug combinations that potentiate the effect of the cure [ 89 ].…”
Section: Expanding Human Skills: In Silico Modelsmentioning
confidence: 99%
“…We compare this experiment with other drug-disease association algorithms to demonstrate the effectiveness of our experiment. We conduct a comparative experiment between the method of this paper and the methods of Kang [13] and Chen [14] on the same dataset. As shown in Table 1, the experimental method used in this paper possesses an accuracy rate of 98.5%, which is far superior to other methods, indicating that the method in this paper can more accurately make a better prediction of whether a drug can treat a disease.…”
Section: Comparison With Other Algorithmsmentioning
confidence: 99%