| Literature DB >> 31874609 |
Cheng Yan1,2, Guihua Duan1, Yi Pan3, Fang-Xiang Wu4, Jianxin Wang5.
Abstract
BACKGROUND: A drug-drug interaction (DDI) is defined as a drug effect modified by another drug, which is very common in treating complex diseases such as cancer. Many studies have evidenced that some DDIs could be an increase or a decrease of the drug effect. However, the adverse DDIs maybe result in severe morbidity and even morality of patients, which also cause some drugs to withdraw from the market. As the multi-drug treatment becomes more and more common, identifying the potential DDIs has become the key issue in drug development and disease treatment. However, traditional biological experimental methods, including in vitro and vivo, are very time-consuming and expensive to validate new DDIs. With the development of high-throughput sequencing technology, many pharmaceutical studies and various bioinformatics data provide unprecedented opportunities to study DDIs. RESULT: In this study, we propose a method to predict new DDIs, namely DDIGIP, which is based on Gaussian Interaction Profile (GIP) kernel on the drug-drug interaction profiles and the Regularized Least Squares (RLS) classifier. In addition, we also use the k-nearest neighbors (KNN) to calculate the initial relational score in the presence of new drugs via the chemical, biological, phenotypic data of drugs. We compare the prediction performance of DDIGIP with other competing methods via the 5-fold cross validation, 10-cross validation and de novo drug validation. CONLUSION: In 5-fold cross validation and 10-cross validation, DDRGIP method achieves the area under the ROC curve (AUC) of 0.9600 and 0.9636 which are better than state-of-the-art method (L1 Classifier ensemble method) of 0.9570 and 0.9599. Furthermore, for new drugs, the AUC value of DDIGIP in de novo drug validation reaches 0.9262 which also outperforms the other state-of-the-art method (Weighted average ensemble method) of 0.9073. Case studies and these results demonstrate that DDRGIP is an effective method to predict DDIs while being beneficial to drug development and disease treatment.Entities:
Keywords: Drug; Drug-drug interaction; Gaussian interaction profile; RLS
Mesh:
Year: 2019 PMID: 31874609 PMCID: PMC6929542 DOI: 10.1186/s12859-019-3093-x
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
The description of benchmark dataset
| Data type | Data | Database | dimensionality |
|---|---|---|---|
| chemical | Chemical substructures | PubChem | 881 |
| Biological | Drug-targets | DrugBank | 780 |
| Drug transporters | DrugBank | 18 | |
| Drug enzymes | DrugBank | 129 | |
| Drug pathways | KEGG | 253 | |
| Phenotypic | Drug indications | SIDER | 4897 |
| Drug side effects | SIDER | 4897 | |
| Drug off side effects | OFFSIDES | 9496 | |
| Interaction | Drug-drug interactions | TWOSIDES | Drugs:548,DDIs:48,584 |
Fig. 1The work flow of DDIGIP
The prediction performances in 5CV,10CV and denovo validation, the best results are in the bold face
| The prediction performances(AUC) | ||||
|---|---|---|---|---|
| Method | Feature | 5CV | 10CV | Denovo |
| WAE | Chemical data, biological data, phenotypic data | 0.9502 | 0.9530 | 0.9073 |
| L1E | Chemical data, biological data, phenotypic data | 0.9570 | 0.9599 | |
| L2E | Chemical data, biological data, phenotypic data | 0.9561 | 0.9594 | |
| LP | Drug-sub | 0.9356 | 0.9359 | 0.8993 |
| Drug-Label | 0.9364 | 0.9368 | 0.8994 | |
| Drug-Off Label | 0.9374 | 0.9378 | 0.8997 | |
| DDIGIP | Chemical data, biological data, phenotypic data |
The ∅ represents that we did not compute the prediction performance because the prediction limit for new drugs.
Fig. 2The average computation times of five methods in 5-fold cross validation
Fig. 3The AUC of DDIGIP under different settings of K in de novo drug validation, the sign ∗ represents the default value
Top 20 new DDIs predicted by DDIGIP method
| Rank | Drug ID1 | Drug ID2 | Evidence |
|---|---|---|---|
| 1 | DB00448 | DB01059 | Unknown |
| 2 | DB00549 | DB01129 | DrugBank |
| 3 | DB00991 | DB00231 | Unknown |
| 4 | DB00470 | DB00331 | Unknown |
| 5 | DB00630 | DB00346 | Unknown |
| 6 | DB00863 | DB01416 | DrugBank |
| 7 | DB01203 | DB00335 | DrugBank |
| 8 | DB00813 | DB00535 | Unknown |
| 9 | DB00257 | DB00230 | DrugBank |
| 10 | DB00806 | DB01036 | Unknown |
| 11 | DB00927 | DB01193 | Unknown |
| 12 | DB00333 | DB00213 | DrugBank |
| 13 | DB00987 | DB00758 | Unknown |
| 14 | DB01595 | DB01137 | Unknown |
| 15 | DB06151 | DB01068 | Unknown |
| 16 | DB00328 | DB00218 | Unknown |
| 17 | DB00264 | DB01193 | DrugBank |
| 18 | DB01072 | DB00381 | DrugBank |
| 19 | DB01203 | DB00571 | DrugBank |
| 20 | DB00584 | DB00790 | DrugBank |
The validation result of top 20 new DDIs of drug Ranolazine (DB00243) predicted by DDIGIP method in de novo validation
| Rank | Drug ID1 | Drug ID2 | Evidence |
|---|---|---|---|
| 1 | DB00243 | DB00451 | TWOSIDES,DrugBanK |
| 2 | DB00338 | TWOSIDES,DrugBanK | |
| 3 | DB00641 | TWOSIDES,DrugBanK | |
| 4 | DB00945 | TWOSIDES,DrugBanK | |
| 5 | DB00758 | TWOSIDES,DrugBanK | |
| 6 | DB00316 | DrugBanK | |
| 7 | DB00264 | TWOSIDES | |
| 8 | DB00695 | TWOSIDES | |
| 9 | DB00722 | TWOSIDES | |
| 10 | DB00390 | TWOSIDES,DrugBanK | |
| 11 | DB00448 | TWOSIDES,DrugBanK | |
| 12 | DB00999 | TWOSIDES | |
| 13 | DB00863 | TWOSIDES,DrugBanK | |
| 14 | DB00630 | TWOSIDES | |
| 15 | DB00635 | DrugBanK | |
| 16 | DB00213 | TWOSIDES,DrugBanK | |
| 17 | DB00678 | TWOSIDES,DrugBanK | |
| 18 | DB00425 | TWOSIDES,DrugBanK | |
| 19 | DB00177 | TWOSIDES | |
| 20 | DB00331 | TWOSIDES,DrugBanK |