| Literature DB >> 35172712 |
Zun Liu1, Xing-Nan Wang1, Hui Yu2, Jian-Yu Shi3, Wen-Min Dong1.
Abstract
BACKGROUND: Prediction of drug-drug interactions (DDIs) can reveal potential adverse pharmacological reactions between drugs in co-medication. Various methods have been proposed to address this issue. Most of them focus on the traditional link prediction between drugs, however, they ignore the cold-start scenario, which requires the prediction between known drugs having approved DDIs and new drugs having no DDI. Moreover, they're restricted to infer whether DDIs occur, but are not able to deduce diverse DDI types, which are important in clinics.Entities:
Keywords: Cold start; Drug–drug interactions; Machine learning; Multi-type interactions; Prediction
Mesh:
Substances:
Year: 2022 PMID: 35172712 PMCID: PMC8851772 DOI: 10.1186/s12859-022-04610-4
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Fig. 1DDIs prediction in cold start and . Blue nodes represent the existing drugs, and the lines between drugs represent their interactions, in which different colors represent different link types. The drugs above (in blue) are existing drugs in the DDIs network, and the one below (in yellow) are the new drugs. The cold start problem refers to the prediction of interactions between the new drugs and the existed drugs, while refers to the prediction of the interaction between two new drugs
Fig. 2Frequency distribution of DDI types
Drug attribute feature: CTET
| Polypeptides | ||||||
|---|---|---|---|---|---|---|
| … | ||||||
| Universal Protein Resource identifier | P02768 | O15540 | P02753 | … | Q8NEC5 | P00480 |
| 1 | 0 | 1 | … | 1 | 0 | |
Fig. 3Computing framework of CSMDDI model. Embedding learning will learn the embeddings of the all existing drugs and DDI types. Mapping function learning will learn a mapping function between DDI network topology and drug’s attribute. Prediction will use the learned embedding vectors of a drug pair (one is existing drug and another is new drug, or two of them are new drugs) as the input, and then choose a predictor to output their prediction score. A higher score indicates a higher probability of this interaction occurrence
Fig. 4Factorization of adjacency matrices in RESCAL
The prediction results of single-type DDIs
| Methods | Single-type DDIs | |||||
|---|---|---|---|---|---|---|
| AUC | AUPR | F1 | AUC | AUPR | F1 | |
| CSMDDI-SVD | 0.8137 | 0.6121 | 0.3735 | 0.7266 | 0.4783 | 0.3698 |
| CSMDDI-GAE | 0.7223 | 0.4435 | 0.3735 | 0.6387 | 0.3390 | 0.3726 |
| CSMDDI-RESCAL | ||||||
| TransE + RandomForest | 0.6451 | 0.4371 | 0.3730 | 0.4391 | 0.1116 | 0.3679 |
| DeepDDI(S) | 0.7267 | 0.5087 | 0.3725 | 0.7254 | 0.4804 | 0.3745 |
| DDIMDL(SP) | 0.7556 | 0.5592 | 0.3732 | 0.7215 | 0.4729 | 0.3718 |
(S) denotes that the inputs of the prediction method are chemical substructures
(P) denotes that the inputs of the prediction method are drug-associated proteins
The prediction result of multi-type DDIs
| Method | Multi-type | |||||
|---|---|---|---|---|---|---|
| AUC | AUPR | F1-micro | AUC | AUPR | F1-micro | |
| TransE + RandomForest | 0.8163 | 0.2853 | 0.5163 | 0.3843 | 0.0926 | 0.4040 |
| DeepDDI(S) | 0.4638 | 0.6042 | 0.1720 | 0.4825 | ||
| DDIMDL(SP) | 0.8832 | 0.4597 | 0.6292 | 0.4337 | ||
| CSMDDI-RESCAL | 0.8658 | 0.4313 | 0.2003 | 0.5103 | ||
(S) denotes that the inputs of the prediction method are chemical substructures
(P) denotes that the inputs of the prediction method are drug-associated proteins
Fig. 5AUC and AUPR of all DDI types for different method
Fig. 6Subgraphs of DDI type 26 and type 66