| Literature DB >> 27258182 |
Xiaohan Sun1,2, Junying Zhang1.
Abstract
Past research on pathogenesis of a complex disease suggests that differentially expressed message RNAs (mRNAs) can be noted as biomarkers of a disease. However, significant miRNA-mediated regulation change might also be more deep underlying cause of a disease. In this study, a miRNA-mediated regulation module is defined based on GO terms (Gene Ontology terms) from which dysfunctional modules are identified as the suspected cause of a disease. A miRNA-mediated regulation module contains mRNAs annotated to a GO term and MicroRNAs (miRNAs) which regulate the mRNAs. Based on the miRNA-mediated regulation coefficients estimated from the expression profiles of the mRNA and the miRNAs, a SW (single regulation-weight) value is then designed to evaluate the miRNA-mediated regulation change of an mRNA, and the modules with significantly differential SW values are thus identified as dysfunctional modules. The approach is applied to Chromophobe renal cell carcinoma and it identifies 70 dysfunctional miRNA-mediated regulation modules from initial 4381 modules. The identified dysfunctional modules are detected to be comprehensive reflection of chromophobe renal cell carcinoma. The proposed approach suggests that accumulated alteration in miRNA-mediated regulation might cause functional alterations, which further cause a disease. Moreover, this approach can also be used to identify diffentially miRNA-mediated regulated mRNAs showing more comprehensive underlying association with a disease than differentially expressed mRNAs.Entities:
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Year: 2016 PMID: 27258182 PMCID: PMC4892590 DOI: 10.1371/journal.pone.0156324
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Flowchart of the approach.
(1) Regulation relationship between a miRNA and an mRNA is predicated. (2) Regulation coefficients are estimated, and SW values are computed. (3) MMRMs are created and dysfunctional ones are identified.
Fig 2Regulation coefficients estimation between multiple miRNAs and a target mRNA.
The dependent variable is an m-by-1 vector (m is the number of samples), in which each value is the expression of an mRNA sample. The explanatory variables is a m-by-n matrix, in which each column is the expression values of a miRNA across all the samples, and n is the number of miRNAs which regulate the mRNA. A n-by-1 vector [w11 w21 ⋯ w] is then returned, and each value in the vector is a regulation coefficient.
Identified Dysfunctional MMRMs.
| GO:0005577, GO:0005578, GO:0005579, GO:0005581, GO:0005582, GO:0005583, GO:0005584, GO:0005585, GO:0005586 GO:0005588, GO:0005589, GO:0005590, GO:0005591, GO:0005592, GO:0005594 GO:0005595, GO:0005596, GO:0005597, GO:0005600, GO:0005614, GO:0005615 | |
| GO:0005622, GO:0005623 | |
| GO:0005576, GO:0005587, GO:0005604, GO:0005605, GO:0005608, GO:0005610 | |
| GO:0005515, GO:0005516, GO:0005518, GO:0005519, GO:0005520, GO:0005521, GO:0005522, GO:0005523 | |
| GO:0005534, GO:0005536, GO:0005537, GO:0005524, GO:0005528, GO:0005539 | |
| GO:0001708, GO:0001709, GO:0001710 | |
| GO:0001711, GO:0001714, GO:0001976, GO:0001984, GO:0001987, GO:0001991, GO:0001994, GO:0002001, GO:0002002, GO:0002003, GO:0002005, GO:0002017, GO:0002018, GO:0003085 | |
| GO:0001985, GO:0001986, GO:0001996, GO:0001997 | |
| GO:0002009, GO:0002011 | |
| GO:0001946 | |
| GO:0001975 | |
| GO:0001707 | |