| Literature DB >> 29943160 |
Jia Qu1, Xing Chen2, Ya-Zhou Sun3,4, Jian-Qiang Li3,4, Zhong Ming3,4.
Abstract
Recently, many biological experiments have indicated that microRNAs (miRNAs) are a newly discovered small molecule (SM) drug targets that play an important role in the development and progression of human complex diseases. More and more computational models have been developed to identify potential associations between SMs and target miRNAs, which would be a great help for disease therapy and clinical applications for known drugs in the field of medical research. In this study, we proposed a computational model of triple layer heterogeneous network based small molecule-MiRNA association prediction (TLHNSMMA) to uncover potential SM-miRNA associations by integrating integrated SM similarity, integrated miRNA similarity, integrated disease similarity, experimentally verified SM-miRNA associations and miRNA-disease associations into a heterogeneous graph. To evaluate the performance of TLHNSMMA, we implemented global and two types of local leave-one-out cross validation as well as fivefold cross validation to compare TLHNSMMA with one previous classical computational model (SMiR-NBI). As a result, for Dataset 1, TLHNSMMA obtained the AUCs of 0.9859, 0.9845, 0.7645 and 0.9851 ± 0.0012, respectively; for Dataset 2, the AUCs are in turn 0.8149, 0.8244, 0.6057 and 0.8168 ± 0.0022. As the result of case studies shown, among the top 10, 20 and 50 potential SM-related miRNAs, there were 2, 7 and 14 SM-miRNA associations confirmed by experiments, respectively. Therefore, TLHNSMMA could be effectively applied to the prediction of SM-miRNA associations.Entities:
Keywords: Association prediction; Small molecule; Triple layer heterogeneous network; microRNA
Year: 2018 PMID: 29943160 PMCID: PMC6020102 DOI: 10.1186/s13321-018-0284-9
Source DB: PubMed Journal: J Cheminform ISSN: 1758-2946 Impact factor: 5.514
Fig. 1Performance evaluation comparison between TLHNSMMA and SMiR–NBI in terms of ROC curve and AUC based on global LOOCV in Dataset 1 (left) and Dataset 2 (right). As a result, TLHNSMMA achieved AUCs of 0.9859 and 0.8149 for Dataset 1 and Dataset 2, respectively. The predictive performance of TLHNSMMA is better than SMiR–NBI
Fig. 2Performance evaluation comparison between TLHNSMMA and SMiR–NBI in terms of ROC curve and AUC based on local LOOCV by fixing miRNAs to rank SMs in Database 1 (left) and Database 2 (right). As a result, TLHNSMMA achieved AUCs of 0.9845 and 0.8244 for Dataset 1 and Dataset 2, respectively. The predictive performance of TLHNSMMA is better than SMiR-NBI
Fig. 3Performance evaluation comparison between TLHNSMMA and SMiR–NBI in terms of ROC curve and AUC based on local LOOCV by fixing SMs to rankmiRNAs in Database 1 (left) and Database 2 (right). As a result, TLHNSMMA achieved AUCs of 0.7645 and 0.6057 for Dataset 1 and Dataset 2, respectively. The predictive performance of TLHNSMMA is better than SMiR–NBI
Performance evaluation comparison between TLHNSMMA and SMiR-NBI in global LOOCV, SM-fixed local LOOCV, miRNA-fixed local LOOCV and fivefold cross validation based on Dataset 1 and Dataset 2
| Dataset | Experimental types | TLHNSMMA | SMiR-NBI |
|---|---|---|---|
| Dataset 1 | AUC in global LOOCV | 0.9859 | 0.8843 |
| AUC in SM-fixed local LOOCV | 0.7645 | 0.7497 | |
| AUC in miRNA-fixed local LOOCV | 0.9845 | 0.8837 | |
| Average AUC in fivefold cross validation | 0.9851 ± 0.0012 | 0.8554 ± 0.0063 | |
| Dataset 2 | AUC in global LOOCV | 0.8149 | 0.7264 |
| AUC in SM-fixed local LOOCV | 0.6057 | 0.6100 | |
| AUC in miRNA-fixed local LOOCV | 0.8244 | 0.7846 | |
| Average AUC in fivefold cross validation | 0.8168 ± 0.0022 | 0.7104 ± 0.0087 |
The corresponding AUCs of TLHNSMMA are shown in the third columns, and compared with the AUCs for SMiR–NBI in the fourth column
Verification of the top 50 predicted miRNAs associated with SMs based on published references
| SM | MiRNA | Evidence | SM | MiRNA | Evidence |
|---|---|---|---|---|---|
| CID:3385 | hsa-mir-219-a | Unconfirmed | CID:5757 | hsa-mir-125b-1 | Unconfirmed |
| CID:448537 | hsa-mir-219-a | Unconfirmed | CID:448537 | hsa-mir-125b-2 | Unconfirmed |
| CID:5757 | hsa-mir-219-a | Unconfirmed | CID:3385 | hsa-mir-29b-1 | Unconfirmed |
| CID:5311 | hsa-mir-219-a | Unconfirmed | CID:448537 | hsa-mir-145 | Unconfirmed |
| CID:3229 | hsa-mir-219-a | Unconfirmed | CID:5311 | hsa-mir-125b-1 | Unconfirmed |
| CID:451668 | hsa-mir-219-a | Unconfirmed | CID:451668 | hsa-mir-146a | 24885368 |
| CID:60750 | hsa-mir-219-a | Unconfirmed | CID:3385 | hsa-mir-143 | 19843160 |
| CID:448537 | hsa-mir-21 | 28265775 | CID:448537 | hsa-mir-221 | Unconfirmed |
| CID:3385 | hsa-mir-155 | 28515355 | CID:3385 | hsa-mir-122 | 24898807 |
| CID:5311 | hsa-mir-21 | Unconfirmed | CID:5757 | hsa-mir-34a | Unconfirmed |
| CID:448537 | hsa-mir-155 | Unconfirmed | CID:3385 | hsa-let-7b | 25789066 |
| CID:5288826 | hsa-mir-219-a | Unconfirmed | CID:60750 | hsa-mir-146a | Unconfirmed |
| CID:3385 | hsa-mir-146a | 28466779 | CID:3385 | hsa-mir-1-1 | Unconfirmed |
| CID:5757 | hsa-mir-155 | 23568502 | CID:5757 | hsa-mir-20a | Unconfirmed |
| CID:3385 | hsa-mir-125b-1 | Unconfirmed | CID:3229 | hsa-mir-17 | Unconfirmed |
| CID:3385 | hsa-mir-34a | 25333573 | CID:3385 | hsa-mir-181a-1 | Unconfirmed |
| CID:3229 | hsa-mir-155 | Unconfirmed | CID:5757 | hsa-mir-125b-2 | Unconfirmed |
| CID:3385 | hsa-mir-125b-2 | Unconfirmed | CID:3385 | hsa-mir-1-2 | Unconfirmed |
| CID:3385 | hsa-mir-145 | 24447928 | CID:448537 | hsa-mir-29a | Unconfirmed |
| CID:3385 | hsa-mir-221 | 27501171 | CID:448537 | hsa-mir-18a | Unconfirmed |
| CID:448537 | hsa-mir-146a | Unconfirmed | CID:5757 | hsa-mir-145 | 28011237 |
| CID:3385 | hsa-mir-126 | Unconfirmed | CID:5311 | hsa-mir-20a | 25393367 |
| CID:448537 | hsa-mir-125b-1 | Unconfirmed | CID:60750 | hsa-mir-125b-1 | Unconfirmed |
| CID:5311 | hsa-mir-146a | 24107356 | CID:60750 | hsa-mir-17 | Unconfirmed |
| CID:3385 | hsa-mir-19b-1 | Unconfirmed | CID:3385 | hsa-mir-223 | Unconfirmed |
The first column records top 1–25 related miRNAs. The second column records the top 26–50 related miRNAs
Fig. 4Flowchart of TLHNSMMA model to predict the potential miRNA–SM associations based on the known associations in SM2miR V1.0 database