| Literature DB >> 33874912 |
Alieh Gholaminejad1, Yousof Gheisari1, Sedigheh Jalali2, Amir Roointan3.
Abstract
BACKGROUND: IgA nephropathy (IgAN) is a kidney disease recognized by the presence of IgA antibody depositions in kidneys. The underlying mechanisms of this complicated disease are remained to be explored and still, there is an urgent need for the discovery of noninvasive biomarkers for its diagnosis. In this investigation, an integrative approach was applied to mRNA and miRNA expression profiles in PBMCs to discover a gene signature and novel potential targets/biomarkers in IgAN.Entities:
Keywords: Biomarkers; Computational biology; Gene expression; Gene regulatory network; IgA nephropathy
Mesh:
Substances:
Year: 2021 PMID: 33874912 PMCID: PMC8054414 DOI: 10.1186/s12882-021-02356-4
Source DB: PubMed Journal: BMC Nephrol ISSN: 1471-2369 Impact factor: 2.388
Fig. 1The flowchart representing different steps of the study
Fig. 2PCA clustering pattern of the healthy and IgAN patient’s samples in mRNA “GSE73953” (a) and miRNA “GSE25590” (b) datasets. Volcano plots representing the DEGs in the mRNA (c), and DEmiRs in the miRNA datasets (d)
List of top 20 up- and down-regulated DEGs and DEmiRs in the analyzed datasets
| No | DEGs | Log2FC | Adj.p-value | DEmiRs | Log2FC | Adj.p-value | |
|---|---|---|---|---|---|---|---|
| 1 | SEC24C | 3.709 | 0.000 | miR-146b-3p | 8.166 | 0.029 | |
| 2 | IFI27 | 3.492 | 0.002 | miR-493-5p | 8.020 | 0.013 | |
| 3 | UQCRB | 3.156 | 0.018 | miR-516a-3p | 7.537 | 0.044 | |
| 4 | CARD16 | 2.893 | 0.001 | miR-668-3p | 7.179 | 0.044 | |
| 5 | SDHC | 2.667 | 0.000 | miR-424-3p | 6.713 | 0.015 | |
| 6 | CARD17 | 2.621 | 0.001 | miR-708 | 5.338 | 0.037 | |
| 7 | TSC22D3 | 2.62 | 0.000 | miR-92a-2-5p | 5.201 | 0.020 | |
| 8 | TPMT | 2.564 | 0.011 | miR-9-5p | 4.744 | 0.037 | |
| 9 | NOTCH1 | 2.563 | 0.002 | miR-548d-3p | 4.734 | 0.011 | |
| 10 | CYP27A1 | 2.551 | 0.004 | miR-124-3p | 4.718 | 0.017 | |
| 1 | GPR78 | −5.642 | 0.000 | miR-935 | −7.086 | 0.015 | |
| 2 | SLC22A7 | −5.147 | 0.000 | miR-920 | −6.232 | 0.048 | |
| 3 | LRFN1 | −4.052 | 0.000 | miR-891a-5p | −4.878 | 0.032 | |
| 4 | PRB3 | −3.751 | 0.000 | miR-488-3p | −4.870 | 0.016 | |
| 5 | SLC26A1 | −3.718 | 0.001 | miR-650 | −4.703 | 0.011 | |
| 6 | SHANK1 | −3.561 | 0.008 | miR-137-3p | −4.545 | 0.036 | |
| 7 | CACNA1H | −3.550 | 0.000 | miR-372-3p | −3.937 | 0.034 | |
| 8 | NLGN2 | −3.389 | 0.000 | miR-578 | −3.889 | 0.045 | |
| 9 | TMEM217 | −3.334 | 0.009 | miR-220a | −3.699 | 0.037 | |
| 10 | CLSTN1 | −3.221 | 0.025 | miR-607 | −3.431 | 0.000 |
Fig. 3a: Venn diagram representing the intersecting mRNAs among the identified DEGs and DEmiR-gene targets. b: Topmost enriched biological process, c: molecular function, d: cellular component GO terms and e: Reactome pathways for the intersecting mRNAs
Fig. 4Multilayer regulatory network (a), and its derived sub-networks showing top regulatory molecules and their targets (b-d). a: Multilayer regulatory network comprising of the intersecting mRNAs (DEGs), DEmiRs, and their related TFs and lncRNAs. The constituents of this multilayer network are including 46 transcription factors (green circle), 132 DEmiRs (yellow circle), 217 LncRNAs (magenta circle), and 598 DEGs (blue circle). The DEmiRs and DEGs with no interactions are omitted from the network. b: Top miRNA molecule (miR-124) (in case of degree centrality and log2FC in the DEmiR dataset), c: top lncRNA (HOTAIR), (D): top transcription factor (NF-κB) and their interactions. *DEGs, DEmiRs, lncRNAs and TFs are colored in blue, yellow, violet and green, respectively. The multilayer regulatory network is accessible at network data exchange (NDEx) server by the below link: [https://public.ndexbio.org/#/network/a1d9669e-7daf-11eb-9e72-0ac135e8bacf?accesskey=c229bf52538f314edd2617ce1f6c6e6cd81ebcbef1437c6d7c81167c3590d973]
List of hub-DEGs, and topmost DEmiRs, TFs and lncRNAs in the constructed multilayer regulatory network
| Type | Name | Degree | Type | Name | Degree |
|---|---|---|---|---|---|
| TP53 | 112 | HOTAIR | 32 | ||
| STAT3 | 73 | MEG3 | 24 | ||
| JUN | 46 | H19 | 21 | ||
| FOS | 43 | MALAT1 | 20 | ||
| DNMT1 | 38 | UCA1 | 17 | ||
| NOTCH1 | 37 | CDKN2B-AS1 | 14 | ||
| TGFB1 | 36 | GAS5 | 10 | ||
| E2F3 | 34 | NEAT1 | 10 | ||
| CREB1 | 34 | PVT1 | 10 | ||
| XIAP | 34 | HULC | 9 | ||
| SUMO1 | 33 | ||||
| VIM | 32 | EZH2 | 74 | ||
| ETS1 | 29 | MYC | 56 | ||
| ABCB1 | 27 | NF-κB | 39 | ||
| COX6B1 | 26 | hsa-mir-16-5p | 134 | ||
| TERT | 25 | hsa-mir-92a-3p | 108 | ||
| CEBPB | 25 | hsa-let-7b-5p | 105 | ||
| CRK | 24 | hsa-mir-17-5p | 102 | ||
| TXNIP | 24 | hsa-mir-124-3p | 97 | ||
| CCNE1 | 22 | hsa-mir-93-5p | 95 | ||
| FOXK1 | 22 | ||||
| SNRPD1 | 21 | ||||
| BAX | 21 | ||||
| TAOK1 | 21 | ||||
| CRCP | 21 | ||||
| BAX | 21 | ||||
| TBL1XR1 | 20 | ||||
| HSP90AB1 | 20 | ||||
| Klf4 | 19 | ||||
| HNRNPA2B1 | 19 |