| Literature DB >> 34185011 |
Meng Wang1,2, Haofen Wang3, Xing Liu4, Xinyu Ma1, Beilun Wang1.
Abstract
BACKGROUND: Minimizing adverse reactions caused by drug-drug interactions (DDIs) has always been a prominent research topic in clinical pharmacology. Detecting all possible interactions through clinical studies before a drug is released to the market is a demanding task. The power of big data is opening up new approaches to discovering various DDIs. However, these data contain a huge amount of noise and provide knowledge bases that are far from being complete or used with reliability. Most existing studies focus on predicting binary DDIs between drug pairs and ignore other interactions.Entities:
Keywords: drug-drug interactions; knowledge graph; natural language processing
Year: 2021 PMID: 34185011 PMCID: PMC8277366 DOI: 10.2196/28277
Source DB: PubMed Journal: JMIR Med Inform
Figure 1Overview of the framework. DDI: drug-drug interaction.
Entities and relations of basic triples in Kamdar and Musen [27].
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| Drugs |
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| Drugs |
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| Pathways |
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| Phenotypes |
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| Drug, hastarget, protein |
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| Drug, hasenzyme, protein |
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| Drug, hastransporter, protein |
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| Protein, ispresentin, pathway |
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| Pathway, isimplicatedin, phenotype |
Figure 2A drug knowledge graph is shown on the left with missing relations represented as dotted lines. There is usually no direct DDI relation between drugs. DDI descriptions from the biomedical text are shown on the right. The words in red represent concerns regarding DDI information in terms of both adverse DDIs and in-depth ways drugs can interact in pharmacology. DDI: drug-drug interaction.
Figure 3ROC and PR results of binary drug-drug interaction-type predictions. MDDP: multitask dyadic drug-drug interaction (DDI) prediction; ROC: receiver operator characteristic; PR: precision-recall.
Evaluation results for multiple drug-drug interaction relation predictions (×100 for Hits@k).
| Framework | Raw | Filter | |||||||
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| Hits@1a | Hits@5 | Hits@10 | MeanRankb | Hits@1 | Hits@5 | Hits@10 | MeanRank | |
| Tiresias | 14.23 | 33.18 | 50.61 | 21.89 | 19.21 | 45.29 | 52.94 | 17.93 | |
| SCNNc | 12.19 | 26.31 | 39.02 | 37.91 | 16.82 | 27.03 | 40.78 | 37.06 | |
| MDDPd | 20.95 | 58.66 | 79.48 | 13.53 | 43.19 | 68.57 | 84.12 | 7.85 | |
| TransE | 26.61 | 70.23 | 83.97 | 8.01 | 57.88 | 79.99 | 87.27 | 7.02 | |
| TransR | 31.33 | 75.80 | 87.63 | 6.89 | 69.58 | 84.01 | 89.01 | 6.25 | |
| PRDe | 45.11 | 85.57 | 91.01 | 6.11 | 75.11 | 88.60 | 92.85 | 5.45 | |
aHits@x: accuracy of real values contained in the top x rank.
bMeanRank: the average rank of all correct relations.
cSCNN: Syntax Convolutional Neural Network.
dMDDP: multitask dyadic drug-drug interaction prediction.
ePRD: Predicting Rich Drug-Drug Interaction.
Rich drug-drug interaction predictions for acetylsalicylic acid.
| Interacted drug | TransRa | PRDb |
| Ibritumomab | ||
| Alteplase | ||
| Anistreplase | ||
| Ramipril |
aTransR: a knowledge graph embedding model, which performs translation in the corresponding relation space.
bPRD: Predicting Rich Drug-Drug Interaction.
cLabels in italics indicate those annotated by a professional pharmacist.
Figure 4Case visualization of the binary drug-drug interaction-type prediction on a drug-drug interaction network sample. MDDP: multitask dyadic drug-drug interaction prediction; PRD: Predicting Rich Drug-Drug Interaction; SCNN: Syntax Convolutional Neural Network.