| Literature DB >> 27375776 |
Santiago Vilar1, George Hripcsak1.
Abstract
BACKGROUND: Drug-target identification is crucial to discover novel applications for existing drugs and provide more insights about mechanisms of biological actions, such as adverse drug effects (ADEs). Computational methods along with the integration of current big data sources provide a useful framework for drug-target and drug-adverse effect discovery.Entities:
Keywords: 3D molecular structure; Adverse effect; Pharmacophoric; Target
Year: 2016 PMID: 27375776 PMCID: PMC4930585 DOI: 10.1186/s13321-016-0147-1
Source DB: PubMed Journal: J Cheminform ISSN: 1758-2946 Impact factor: 5.514
Fig. 1Flowchart of the main steps included in the study
Fig. 2ROC curve (a) for the global drug-target predictor along with precision (b) and enrichment factors (c) in different top positions
Fig. 3a Performance of the 3D drug-target model (AUROCs) in the hold-out validations extracting 20 and 40 % of the initial data into test sets. b Performance of the 3D drug-target model (AUROCs) using 8 Anatomical Therapeutic Chemical (ATC) categories as test sets: ACE inhibitors (A), Angiotensin II antagonists (B), Benzodiazepines (C), Beta-blocking agents (D), Fluoroquinolones (E), Imidazole/triazole derivatives (F), Nucleosides/Nucleotides (G) and Sulfonamides/urea derivatives (H). c AUROC values for the individual drug-target models
Fig. 4a Illustration (no real data) of the target-phenotype predictor. ADE Adverse Drug Effect, EF Enrichment Factor, TP True Positives, FP False Positives, FN False Negatives, TN True Negatives. b Validation of the target-adverse effect predictor using two external reference standards of known target-adverse effect associations: a database generated by Kuhn et al. [40] extracted from the literature and manually reviewed, and a set of the associations extracted from DART database. A higher proportion of the target-adverse effect associations in the two reference standards have q-values lower than 0.05 compared to the model background
Fig. 5Intersection of drug-target and target-adverse effect data (a). Precision (b) and Enrichment Factor (c) in drug-target identification comparing the 3D drug-target model leveraged with phenotypic data with the 3D drug-target model by itself
Examples of some drug-target candidates generated by our predictor
| TCa | Similar drug in ChEMBL (ATC category)b | Drug candidate (ATC category) | 3D D-Tc | Target | EF and |
|---|---|---|---|---|---|
| 0.30 | Diclofenac (antiinflammatory agent, non-steroid) | Carbamazepine (carboxamide deriv., antiepileptic) | 0.83 | Gamma-secretase | EF = 3.17 |
| 0.20 | Phenytoin (hydantoin deriv., antiepileptic) | Venlafaxine (antidepressant) | 0.82 | Aquaporin-4 | EF = 2.71 |
| 0.65 | Ondansetron (serotonin antagonist, antiemetic-antinauseant) | Molindone (indole deriv., antipsychotic) | 0.79 | 5-HT3 receptor | EF = 17.73 |
| 0.50 | Oxymetazoline (descongestant, sympathomimetic) | Molindone (indole deriv., antipsychotic) | 0.77 | Alpha-2-adrenergic receptor | EF = 22.16 |
| 0.65 | Oxybuprocaine (local anesthetic) | Metoclopramide (propulsive) | 0.77 | DNA repair protein RAD52 homolog | EF = 6.57 |
| 0.39 | Niclosamide (salicylic acid deriv., anticestodal) | Thalidomide (immunosuppressant) | 0.76 | Tyrosine-protein kinase SRC | EF = 2.75 |
| 0.41 | Diethyltryptamine (psychedelic drug) | Metoclopramide (propulsive) | 0.75 | 5-HT6 receptor | EF = 8.21 |
| 0.35 | Pentamidine (agent against Leishmaniasis/Trypanosomiasis) | Haloperidol (antipsychotic, butyrophenone deriv.) | 0.75 | Muscarinic acetylcholine M4 | EF = 11.22 |
Each drug-target association is predicted to cause different adverse effects confirmed in SIDER through the calculation of the EF and q-values [predicted adverse effects corroborated in SIDER (TP), predicted adverse effects not found in SIDER (FP), adverse effects described in SIDER and not predicted (FN), adverse effects not described in SIDER and not predicted by the model (TN)]
aTC is the Tanimoto coefficient between both drugs using MACCS fingerprint
bSimilar drug is the most similar drug binding the target in our ChEMBL data calculated with our 3D model
c3D D-T is the 3D score that associates the drug candidate with the target according to our 3D model
dEnrichment factor (EF) and q-values calculated for each drug-target association based on the integration of phenotype data from SIDER
Fig. 6Intersection of drug-adverse effect and target-adverse effect data (a). Precision (b) and Enrichment Factor (c) in drug-adverse effect identification comparing the 3D drug-adverse effect model leveraged with target data with the 3D drug-adverse effect model by itself