| Literature DB >> 31234797 |
Ying-Lian Gao1, Zhen Cui2, Jin-Xing Liu3,4, Juan Wang2, Chun-Hou Zheng5.
Abstract
BACKGROUND: Predicting meaningful miRNA-disease associations (MDAs) is costly. Therefore, an increasing number of researchers are beginning to focus on methods to predict potential MDAs. Thus, prediction methods with improved accuracy are under development. An efficient computational method is proposed to be crucial for predicting novel MDAs. For improved experimental productivity, large biological datasets are used by researchers. Although there are many effective and feasible methods to predict potential MDAs, the possibility remains that these methods are flawed.Entities:
Keywords: Gaussian interaction profile; Matrix factorization; MiRNA-disease association prediction; Nearest profile
Mesh:
Substances:
Year: 2019 PMID: 31234797 PMCID: PMC6591872 DOI: 10.1186/s12859-019-2956-5
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
MiRNAs, diseases, and associations in Gold Standard Dataset
| Datasets | MiRNAs | Diseases | Associations |
|---|---|---|---|
| Gold Standard Dataset | 495 | 383 | 5430 |
AUC results of cross validation experiments
| Methods | Gold Standard Dataset |
|---|---|
| WBSMDA | 0.8185 (0.0009) |
| HDMP | 0.8342 (0.0010) |
| CMF | 0.8697 (0.0011) |
| HAMDA | 0.8965 (0.0012) |
| ELLPMDA | 0.9193 (0.0002) |
| NPCMF | 0.9429 (0.0011) |
Fig. 1Comparison of convergence about NPCMF and CMF. Compared with the CMF, the NPCMF converges the fastest
Fig. 2The ROC curve for each method in a 5-fold cross validation experiment
Fig. 3Sensitivity analysis for K under CV-p
Fig. 4Sensitivity analysis for p under CV-p
Predicted MiRNAs for Gastric Neoplasms
| Rank | miRNA | Evidence |
|---|---|---|
|
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| known |
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| known |
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| known |
| 4 | hsa-mir-214 | dbDEMC; miR2Disease |
| 5 | hsa-mir-30b | Unconfirmed |
| 6 | hsa-mir-145 | dbDEMC |
| 7 | hsa-mir-296 | Unconfirmed |
| 8 | hsa-mir-199a | miR2Disease |
| 9 | hsa-mir-23b | dbDEMC |
| 10 | hsa-mir-96 | dbDEMC |
Predicted MiRNAs for Rectal Neoplasms
| Rank | miRNA | Evidence |
|---|---|---|
|
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| known |
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| known |
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| known |
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| known |
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| known |
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| known |
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| known |
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| known |
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| known |
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| known |
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| known |
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| known |
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| known |
|
|
| known |
| 15 | hsa | Unconfirmed |
| 16 | hsa | Unconfirmed |
| 17 | hsa | Unconfirmed |
| 18 | hsa | Unconfirmed |
| 19 | hsa | Unconfirmed |
| 20 | hsa | Unconfirmed |
Predicted MiRNAs for Colonic Neoplasms
| Rank | miRNA | Evidence | Rank | miRNA | Evidence |
|---|---|---|---|---|---|
|
|
| known |
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| known |
|
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| known |
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| known |
|
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| known |
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| known |
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| known |
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| known |
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| known |
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| known |
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| known | 31 | hsa-mir-520 g | dbDEMC |
|
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| known | 32 | hsa-mir-204 | dbDEMC |
|
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| known | 33 | hsa-mir-206 | dbDEMC |
|
|
| known | 34 | hsa-mir-215 | dbDEMC |
|
|
| known | 35 | hsa-mir-491 | dbDEMC |
|
|
| known | 36 | hsa-mir-144 | Unconfirmed |
|
|
| known | 37 | hsa-mir-515 | Unconfirmed |
|
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| known | 38 | hsa-mir-153 | dbDEMC |
|
|
| known | 39 | hsa-mir-211 | Unconfirmed |
|
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| known | 40 | hsa-mir-525 | Unconfirmed |
|
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| known | 41 | hsa-mir-219 | Unconfirmed |
|
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| known | 42 | hsa-mir-526b | dbDEMC |
|
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| known | 43 | hsa-mir-507 | dbDEMC |
|
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| known | 44 | hsa-mir-523 | dbDEMC |
|
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| known | 45 | hsa-mir-520f | dbDEMC |
|
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| known | 46 | hsa-mir-520e | dbDEMC |
|
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| known | 47 | hsa-mir-339 | Unconfirmed |
|
|
| known | 48 | hsa-mir-124 | Unconfirmed |
|
|
| known | 49 | hsa-mir-381 | dbDEMC |
|
|
| known | 50 | hsa-mir-340 | Unconfirmed |
Fig. 5Sensitivity analysis for α under CV-p