| Literature DB >> 32425979 |
Xianyou Zhu1, Xuzai Wang2, Haochen Zhao2, Tingrui Pei2, Linai Kuang1,2, Lei Wang2,3.
Abstract
Recent studies have indicated that microRNAs (miRNAs) are closely related to sundry human sophisticated diseases. According to the surmise that functionally similar miRNAs are more likely associated with phenotypically similar diseases, researchers have proposed a variety of valid computational models through integrating known miRNA-disease associations, disease semantic similarity, miRNA functional similarity, and Gaussian interaction profile kernel similarity to discover the potential miRNA-disease relationships in biomedical researches. Taking account of the limitations of previous computational models, a new computational model based on biased heat conduction for MiRNA-Disease Association prediction (BHCMDA) was proposed in this paper, which can achieve the AUC of 0.8890 in LOOCV (Leave-One-Out Cross Validation) and the mean AUC of 0.9060, 0.8931 under the framework of twofold cross validation, fivefold cross validation, respectively. In addition, BHCMDA was further implemented to the case studies of three vital human cancers, and simulation results illustrated that there were 88% (Esophageal Neoplasms), 92% (Colonic Neoplasms) and 92% (Lymphoma) out of top 50 predicted miRNAs having been confirmed by experimental literatures, separately, which demonstrated the good performance of BHCMDA as well. Thence, BHCMDA would be a useful calculative resource for potential miRNA-disease association prediction.Entities:
Keywords: biased heat conduction; bipartite graph network; clustering algorithm; integrated similarity; miRNA-disease association
Year: 2020 PMID: 32425979 PMCID: PMC7212362 DOI: 10.3389/fgene.2020.00384
Source DB: PubMed Journal: Front Genet ISSN: 1664-8021 Impact factor: 4.599
FIGURE 1The heat transfer process of biased heat conduction (BHC) algorithm. (A) A binary network of users and objects. (B) The process of objects receiving resources from users. (C) The process of users receiving resources from objects.
FIGURE 2Flow chart of BHCMDA model to predict the potential miRNA-disease associations.
FIGURE 3Diagram of implementing the biased heat conduction (BHC) algorithm on the newly constructed bipartite miRNAs-diseases network. (A) The newly constructed bipartite miRNAs-diseases network, (B) let miRNAs and diseases represent the Object nodes and the User nodes respectively while implementing the BHC algorithm on the newly constructed bipartite miRNAs-diseases network, (C) let diseases and miRNAs represent the Object nodes and the User nodes respectively while implementing the BHC algorithm on the newly constructed bipartite miRNAs-diseases network.
FIGURE 4Performance comparisons between BHCMDA, LRLSLDA, and WBSMDA in LOOCV.
FIGURE 5Performance comparisons between BHCMDA, LRLSLDA, and WBSMDA in twofold cross-validation.
FIGURE 6Performance comparisons between BHCMDA, LRLSLDA, and WBSMDA in fivefold cross-validation.
Top 50 potential Esophageal Neoplasms-related miRNAs predicted by BHCMDA and confirmations for these predicted associations provided by the dbDEMC and dbDEMC 2.0.
| hsa-mir-17 | dbDEMC | hsa-mir-302c | dbDEMC |
| hsa-mir-18a | dbDEMC 2.0 | hsa-mir-602 | dbDEMC |
| hsa-mir-200b | dbDEMC | hsa-mir-612 | dbDEMC 2.0 |
| hsa-mir-629 | dbDEMC 2.0 | hsa-mir-657 | unconfirmed |
| hsa-mir-93 | dbDEMC 2.0 | hsa-mir-376c | dbDEMC 2.0 |
| hsa-mir-324 | dbDEMC | hsa-mir-367 | dbDEMC 2.0 |
| hsa-mir-19b | dbDEMC 2.0 | hsa-mir-153 | dbDEMC |
| hsa-let-7d | dbDEMC | hsa-mir-302e | dbDEMC |
| hsa-mir-185 | dbDEMC 2.0 | hsa-mir-30c | dbDEMC 2.0 |
| hsa-mir-638 | unconfirmed | hsa-mir-302d | dbDEMC 2.0 |
| hsa-let-7f | dbDEMC 2.0 | hsa-mir-16 | dbdemc 2.0 |
| hsa-mir-601 | unconfirmed | hsa-mir-429 | dbDEMC 2.0 |
| hsa-mir-1 | dbDEMC 2.0 | hsa-mir-106b | dbDEMC 2.0 |
| hsa-let-7i | dbDEMC 2.0 | hsa-mir-583 | dbDEMC |
| hsa-let-7e | dbDEMC | hsa-mir-125b | dbDEMC 2.0 |
| hsa-let-7g | dbDEMC | hsa-mir-660 | dbDEMC |
| hsa-mir-637 | dbDEMC 2.0 | hsa-mir-557 | dbDEMC 2.0 |
| hsa-mir-218 | dbDEMC 2.0 | hsa-mir-600 | unconfirmed |
| hsa-mir-608 | unconfirmed | hsa-mir-611 | unconfirmed |
| hsa-mir-596 | dbDEMC 2.0 | hsa-mir-654 | dbDEMC 2.0 |
| hsa-mir-615 | dbDEMC | hsa-mir-662 | dbDEMC 2.0 |
| hsa-mir-622 | dbDEMC | hsa-mir-769 | dbDEMC |
| hsa-mir-518c | dbDEMC 2.0 | hsa-mir-215 | dbDEMC 2.0 |
| hsa-mir-301a | HMDD3.0 | hsa-mir-335 | dbDEMC 2.0 |
| hsa-mir-302b | dbDEMC | hsa-mir-221 | dbDEMC 2.0 |
Top 50 potential Colonic Neoplasms-related miRNAs predicted by BHCMDA and confirmations for these predicted associations provided by the dbDEMC, dbDEMC 2.0, HMDD3.0 and miR2Disease.
| hsa-mir-324 | unconfirmed | hsa-mir-146b | dbDEMC 2.0 |
| hsa-mir-222 | dbDEMC 2.0 | hsa-mir-601 | dbDEMC 2.0 |
| hsa-mir-301a | dbDEMC 2.0 | hsa-mir-7 | dbDEMC 2.0 |
| hsa-mir-638 | dbDEMC 2.0 | hsa-mir-637 | dbDEMC 2.0 |
| hsa-mir-200a | unconfirmed | hsa-mir-526a | dbDEMC 2.0 |
| hsa-mir-210 | dbDEMC 2.0 | hsa-mir-515 | unconfirmed |
| hsa-mir-133a | dbDEMC 2.0 | hsa-mir-27a | dbDEMC 2.0 |
| hsa-mir-93 | dbDEMC 2.0 | hsa-mir-331 | HMDD3.0 |
| hsa-mir-185 | dbDEMC 2.0 | hsa-mir-148a | dbDEMC 2.0 |
| hsa-mir-367 | dbDEMC 2.0 | hsa-mir-195 | dbDEMC 2.0 |
| hsa-mir-219 | unconfirmed | hsa-mir-520h | dbDEMC 2.0 |
| hsa-mir-520a | HMDD3.0 | hsa-mir-153 | dbDEMC 2.0 |
| hsa-mir-196a | dbDEMC 2.0 | hsa-mir-199b | dbDEMC 2.0 |
| hsa-mir-199a | 23292866 | hsa-mir-30b | dbDEMC 2.0 |
| hsa-mir-297 | dbDEMC 2.0 | hsa-mir-26a | dbDEMC |
| hsa-mir-608 | dbDEMC 2.0 | hsa-mir-181b | dbDEMC 2.0 |
| hsa-mir-449b | dbDEMC 2.0 | hsa-mir-520e | dbDEMC 2.0 |
| hsa-mir-34c | miR2Disease | hsa-mir-602 | dbDEMC 2.0 |
| hsa-mir-215 | dbDEMC 2.0 | hsa-mir-512 | HMDD3.0 |
| hsa-mir-375 | dbDEMC 2.0 | hsa-mir-194 | dbDEMC 2.0 |
| hsa-mir-25 | dbDEMC 2.0 | hsa-mir-95 | dbDEMC 2.0 |
| hsa-mir-34b | dbDEMC | hsa-mir-612 | dbDEMC 2.0 |
| hsa-mir-429 | dbDEMC 2.0 | hsa-mir-526b | dbDEMC 2.0 |
| hsa-mir-203 | dbDEMC 2.0 | hsa-mir-657 | dbDEMC 2.0 |
| hsa-mir-518b | dbDEMC 2.0 | hsa-mir-135a | dbDEMC 2.0 |
Top 50 potential Lymphomas-related miRNAs predicted by BHCMDA and confirmations for these predicted associations provided by the dbDEMC 2.0 and the recent experimental literatures with relevant PMIDs.
| hsa-mir-145 | dbDEMC 2.0 | hsa-mir-652 | dbDEMC 2.0 |
| hsa-mir-34a | dbDEMC 2.0 | hsa-mir-221 | dbDEMC 2.0 |
| hsa-mir-29b | dbDEMC 2.0 | hsa-mir-185 | dbDEMC 2.0 |
| hsa-mir-9 | dbDEMC 2.0 | hsa-mir-596 | dbDEMC 2.0 |
| hsa-mir-106b | dbDEMC 2.0 | hsa-mir-608 | dbDEMC 2.0 |
| hsa-let-7a | dbDEMC 2.0 | hsa-mir-223 | dbDEMC 2.0 |
| hsa-mir-125b | dbDEMC 2.0 | hsa-mir-557 | dbDEMC 2.0 |
| hsa-mir-183 | dbDEMC 2.0 | hsa-mir-192 | dbDEMC 2.0 |
| hsa-mir-205 | dbDEMC 2.0 | hsa-mir-602 | dbDEMC 2.0 |
| hsa-mir-30b | dbDEMC 2.0 | hsa-mir-181b | dbDEMC 2.0 |
| hsa-mir-29a | dbDEMC 2.0 | hsa-mir-214 | dbDEMC 2.0 |
| hsa-mir-93 | dbDEMC 2.0 | hsa-let-7c | dbDEMC 2.0 |
| hsa-mir-199a | dbDEMC 2.0 | hsa-let-7i | dbDEMC 2.0 |
| hsa-mir-324 | unconfirmed | hsa-mir-612 | unconfirmed |
| hsa-mir-143 | dbDEMC 2.0 | hsa-mir-657 | dbDEMC 2.0 |
| hsa-mir-106a | dbDEMC 2.0 | hsa-mir-142 | 23209550 |
| hsa-let-7b | dbDEMC 2.0 | hsa-mir-222 | dbDEMC 2.0 |
| hsa-mir-30e | dbDEMC 2.0 | hsa-let-7d | dbDEMC 2.0 |
| hsa-mir-638 | dbDEMC 2.0 | hsa-mir-153 | dbDEMC 2.0 |
| hsa-mir-215 | dbDEMC 2.0 | hsa-mir-367 | dbDEMC 2.0 |
| hsa-mir-637 | dbDEMC 2.0 | hsa-mir-518c | unconfirmed |
| hsa-mir-195 | dbDEMC 2.0 | hsa-mir-622 | dbDEMC 2.0 |
| hsa-mir-598 | dbDEMC 2.0 | hsa-mir-583 | dbDEMC 2.0 |
| hsa-let-7e | dbDEMC 2.0 | hsa-mir-600 | dbDEMC 2.0 |
| hsa-mir-615 | unconfirmed | hsa-mir-601 | dbDEMC 2.0 |