Bioinformatics and systems biology to identify underlying common pathogenesis of diabetic kidney disease and stenosis of arteriovenous fistula

Abstract Background Diabetic nephropathy is an important cause of end-stage renal disease. Arteriovenous fistula (AVF) stenosis is closely associated with hyperglycemia. However, studies exploring biomarkers linking these two diseases are lacking, which may provide insight into the mechanisms underl...

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Main Authors: Mengru Fu, Fei Liu, Chengfa Ren, Qian Wu, Jun Xiao, Ying Wang, Yan Zeng, YuJuan Yang, Yan Yan
Format: Article
Language:English
Published: BMC 2025-07-01
Series:BMC Nephrology
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Online Access:https://doi.org/10.1186/s12882-025-04239-4
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author Mengru Fu
Fei Liu
Chengfa Ren
Qian Wu
Jun Xiao
Ying Wang
Yan Zeng
YuJuan Yang
Yan Yan
author_facet Mengru Fu
Fei Liu
Chengfa Ren
Qian Wu
Jun Xiao
Ying Wang
Yan Zeng
YuJuan Yang
Yan Yan
author_sort Mengru Fu
collection DOAJ
description Abstract Background Diabetic nephropathy is an important cause of end-stage renal disease. Arteriovenous fistula (AVF) stenosis is closely associated with hyperglycemia. However, studies exploring biomarkers linking these two diseases are lacking, which may provide insight into the mechanisms underlying Diabetic kidney disease (DKD) comorbid AVF stenosis. Objective This study investigated the common pathogenesis of DKD and AVF stenosis. Methods Biomarkers were screened by identifying key genes common between DKD and AVF stenosis through differential gene analysis. GO, KEGG and GSEA enrichment analysis of DEGs were performed by cluster profiler. Immuno-infiltration analysis was performed by CIBERSORT. The predictive value of HPGD to distinguish DKD comorbid AVF stenosis was determined by ROC curves. Upstream miRNAs and transcription factors (TFs) of HPGD were predicted using hTFtarget and mirtarbase databases. After specifically knockdown six upstream miRNAs of HPGD in vascular smooth muscle cells (VSMCs), the expression levels of HPGD in each group were analyzed by quantitative reverse transcription PCR (qRT-PCR), and the empty vector was used as the control group. Clinical patient samples were collected to validate HPGD expression in DKD patients with AVF stenosis via qRT-PCR and immunofluorescence. Subsequently, the proliferation ability and the release level of inflammatory cytokines of VSMCs under high glucose culture conditions were evaluated by regulating the expression of HPGD. Results Eleven shared DEGs were identified between DKD and AVF stenosis. Diagnostic efficacy of four hub genes (INHBA, PCK1, ALB, HPGD) was validated through receiver operating characteristic (ROC) curve analysis. qRT-PCR and immunofluorescence analyses showed that HPGD expression in the veins of patients with DKD combined with AVF stenosis was significantly decreased compared to the control group. Regulatory network analysis identified 691 TFs and 72 miRNAs modulating hub gene expression. Specific knockdown of six predicted upstream miRNAs of HPGD resulted in a significant increase in HPGD expression, with the hsa-miR-486-5p knockdown group showing the most pronounced effect. Overexpression of HPGD inhibited the proliferation of VSMCs and the release of inflammatory factors under high-glucose culture conditions. Significantly reduced infiltration of memory activated CD4 T cells was observed in AVF stenosis compared to normal veins. Pearson correlation analysis indicated that HPGD is positively correlated with resting mast cells, M1 macrophages, and M2 macrophages, while it is negatively correlated with naïve B cells and resting CD4 memory T cells. Conclusion HPGD may be a biomarker of DKD comorbid AVF stenosis. The targeted therapy of HPGD may prevent the occurrence of AVF stenosis in DKD patients, which is worthy of further study.
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spelling doaj-art-25ab3b113fe145dd90ca0fe91a13eabe2025-08-20T04:01:25ZengBMCBMC Nephrology1471-23692025-07-0126111710.1186/s12882-025-04239-4Bioinformatics and systems biology to identify underlying common pathogenesis of diabetic kidney disease and stenosis of arteriovenous fistulaMengru Fu0Fei Liu1Chengfa Ren2Qian Wu3Jun Xiao4Ying Wang5Yan Zeng6YuJuan Yang7Yan Yan8Department of Nephrology, The First Affiliated Hospital, Jiangxi Medical College, Nanchang UniversityDepartment of Nephrology, The First Affiliated Hospital, Jiangxi Medical College, Nanchang UniversityDepartment of Nephrology, Ganzhou People’s Hospital Affiliated to Nanchang UniversityDepartment of Nephrology, The First Affiliated Hospital, Jiangxi Medical College, Nanchang UniversityDepartment of Nephrology, The First Affiliated Hospital, Jiangxi Medical College, Nanchang UniversityDepartment of Nephrology, The First Affiliated Hospital, Jiangxi Medical College, Nanchang UniversityDepartment of Nephrology, The First Affiliated Hospital, Jiangxi Medical College, Nanchang UniversityDepartment of Nephrology, The First Affiliated Hospital, Jiangxi Medical College, Nanchang UniversityDepartment of Nephrology, The First Affiliated Hospital, Jiangxi Medical College, Nanchang UniversityAbstract Background Diabetic nephropathy is an important cause of end-stage renal disease. Arteriovenous fistula (AVF) stenosis is closely associated with hyperglycemia. However, studies exploring biomarkers linking these two diseases are lacking, which may provide insight into the mechanisms underlying Diabetic kidney disease (DKD) comorbid AVF stenosis. Objective This study investigated the common pathogenesis of DKD and AVF stenosis. Methods Biomarkers were screened by identifying key genes common between DKD and AVF stenosis through differential gene analysis. GO, KEGG and GSEA enrichment analysis of DEGs were performed by cluster profiler. Immuno-infiltration analysis was performed by CIBERSORT. The predictive value of HPGD to distinguish DKD comorbid AVF stenosis was determined by ROC curves. Upstream miRNAs and transcription factors (TFs) of HPGD were predicted using hTFtarget and mirtarbase databases. After specifically knockdown six upstream miRNAs of HPGD in vascular smooth muscle cells (VSMCs), the expression levels of HPGD in each group were analyzed by quantitative reverse transcription PCR (qRT-PCR), and the empty vector was used as the control group. Clinical patient samples were collected to validate HPGD expression in DKD patients with AVF stenosis via qRT-PCR and immunofluorescence. Subsequently, the proliferation ability and the release level of inflammatory cytokines of VSMCs under high glucose culture conditions were evaluated by regulating the expression of HPGD. Results Eleven shared DEGs were identified between DKD and AVF stenosis. Diagnostic efficacy of four hub genes (INHBA, PCK1, ALB, HPGD) was validated through receiver operating characteristic (ROC) curve analysis. qRT-PCR and immunofluorescence analyses showed that HPGD expression in the veins of patients with DKD combined with AVF stenosis was significantly decreased compared to the control group. Regulatory network analysis identified 691 TFs and 72 miRNAs modulating hub gene expression. Specific knockdown of six predicted upstream miRNAs of HPGD resulted in a significant increase in HPGD expression, with the hsa-miR-486-5p knockdown group showing the most pronounced effect. Overexpression of HPGD inhibited the proliferation of VSMCs and the release of inflammatory factors under high-glucose culture conditions. Significantly reduced infiltration of memory activated CD4 T cells was observed in AVF stenosis compared to normal veins. Pearson correlation analysis indicated that HPGD is positively correlated with resting mast cells, M1 macrophages, and M2 macrophages, while it is negatively correlated with naïve B cells and resting CD4 memory T cells. Conclusion HPGD may be a biomarker of DKD comorbid AVF stenosis. The targeted therapy of HPGD may prevent the occurrence of AVF stenosis in DKD patients, which is worthy of further study.https://doi.org/10.1186/s12882-025-04239-4Diabetic kidney diseaseStenosis of arteriovenous fistulaHPGD
spellingShingle Mengru Fu
Fei Liu
Chengfa Ren
Qian Wu
Jun Xiao
Ying Wang
Yan Zeng
YuJuan Yang
Yan Yan
Bioinformatics and systems biology to identify underlying common pathogenesis of diabetic kidney disease and stenosis of arteriovenous fistula
BMC Nephrology
Diabetic kidney disease
Stenosis of arteriovenous fistula
HPGD
title Bioinformatics and systems biology to identify underlying common pathogenesis of diabetic kidney disease and stenosis of arteriovenous fistula
title_full Bioinformatics and systems biology to identify underlying common pathogenesis of diabetic kidney disease and stenosis of arteriovenous fistula
title_fullStr Bioinformatics and systems biology to identify underlying common pathogenesis of diabetic kidney disease and stenosis of arteriovenous fistula
title_full_unstemmed Bioinformatics and systems biology to identify underlying common pathogenesis of diabetic kidney disease and stenosis of arteriovenous fistula
title_short Bioinformatics and systems biology to identify underlying common pathogenesis of diabetic kidney disease and stenosis of arteriovenous fistula
title_sort bioinformatics and systems biology to identify underlying common pathogenesis of diabetic kidney disease and stenosis of arteriovenous fistula
topic Diabetic kidney disease
Stenosis of arteriovenous fistula
HPGD
url https://doi.org/10.1186/s12882-025-04239-4
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