| Literature DB >> 31409386 |
Gang Wang1,2, Jian Ouyang3, Shen Li2, Hui Wang2, Baofeng Lian3, Zhihong Liu4,5, Lu Xie6.
Abstract
BACKGROUND: Diabetic nephropathy (DN) affects about 40% of diabetes mellitus (DM) patients and is the leading cause of chronic kidney disease (CKD) and end-stage renal disease (ESRD) all over the world, especially in high- and middle-income countries. Most DN has been present for years before it is diagnosed. Currently, the treatment of DN is mainly to prevent or delay disease progression. Although many important molecules have been discovered in hypothesis-driven research over the past two decades, advances in DN management and new drug development have been very limited. Moreover, current animal/cell models could not replicate all the features of human DN, while the development of Epigenetics further demonstrates the complexity of the mechanism of DN progression. To capture the key pathways and molecules that actually affect DN progression from numerous published studies, we collected and analyzed human DN prognostic markers (independent risk factors for DN progression).Entities:
Keywords: Bioinformatics analysis; Database; Diabetic nephropathy; Prognostic marker; Progression; Risk factor
Mesh:
Substances:
Year: 2019 PMID: 31409386 PMCID: PMC6693179 DOI: 10.1186/s12967-019-2016-y
Source DB: PubMed Journal: J Transl Med ISSN: 1479-5876 Impact factor: 5.531
Genes, proteins and microRNAs verified in T1DN and T2DN, respectively
| T1DN | Common | T2DN | |
|---|---|---|---|
| Gene | AGER, ATP5MC3, BDKRB2, CASP3, CAT, CCR5, CNDP1, COX5A, CTGF, CYP11B2, ENPP1, FLT4, GPX1, HPSE, LIPC, NPHS1, NPPA, PARP1, SLC2A1, SOD1, SOD2, TGFBR2, TRPC6, UQCRC1, CDH13, CYBA | ACE | ADIPOQ, AKR1B1, APOE, CCL2, CETP, GSTT1, IL10, ITGA2, LTA, NOS3, PON1, PON2, PRKCB, SLC12A3, TKT, FN3K, EP300, HP |
| microRNA | miR-126, miR-196a, miR-9 | ||
| Protein | CRP, CTGF, MBL2, TNFRSF11B, UMOD | ADIPOQ, CST3, TNNT2, TNFRSF1A, FABP1, HBB | CLU, COL18A1, CP, FGF21, HP, ICAM1, IL6, TNFRSF1B, CD59, CFHR2, C4A, MCAM, LGALS3, AVP, NPPB, RBP4, SAA1, TNF, VCAM1, VWF, C8A, AOC3, FGF23, SERPINF1, VEGFA, ALB, CCL2 |
Fig. 1Specimen sources of prognostic proteins and their observed increase/decrease associated with worse prognosis of DN. Blue arrow represents protein change in blood, green arrow is for urine specimen, and orange arrow for kidney tissue
Fig. 2Grouping based on the end point events and corresponding clinical parameters. a End point events and corresponding clinical parameters. b Grouping of DN prognostic genes and proteins according to the end point events involved in different studies
Fig. 3KEGG enrichment analysis of DN prognostic genes and proteins corresponding to different end point events. TNF signaling pathway, PI3K-Akt signaling pathway, NF-kappa B signaling pathway, MAPK signaling pathway, HIF-1 signaling pathway and FoxO signaling pathway all belong to “Signal transduction” pathways
Fig. 4Overview of regulatory relationships among DN prognostic molecules in enriched signal transduction pathways. Solid line represents molecular interaction or relation. Dotted line represents indirect link, state change or unknown reaction. Red line represents link in the cytoplasm. Molecule in the rectangle represents gene product, mostly protein but including RNA
Fig. 5Protein expression and location of DN prognostic molecules in renal tissues using the HPA [24]. The asterisk (*) denotes specific protein expression in kidney. Bold indicates high protein expression, and proteins expressed in both glomeruli and tubules are in red
Fig. 6Web interfaces of the dbPKD. a The browse interface of dbPKD for prognostic markers in blood. b The search interface for a gene symbol. c The analysis interface which includes three modules: survival analysis, enrichment analysis and Venn analysis. d The download page of dbPKD with url and description