4.7 Article

Molecular Characterization of Membranous Nephropathy

期刊

JOURNAL OF THE AMERICAN SOCIETY OF NEPHROLOGY
卷 33, 期 6, 页码 1208-1221

出版社

AMER SOC NEPHROLOGY
DOI: 10.1681/ASN.2021060784

关键词

membranous nephropathy; transcriptional profiling; podocyte; single-cell sequencing; machine learning; scRNA-seq; machine learning

资金

  1. National Institute of Diabetes, Digestive, and Kidney Diseases (NIDDK) [R01 097053, U24DK100845, UH3DK114907, U2CDK114886, K08 DK115891, 3T32DK007053-45S1]
  2. George M. OBrien Michigan Kidney Translational Core Center - NIH/NIDDK
  3. NIH
  4. NCATS [U54DK083912]
  5. NIDDK
  6. University of Michigan
  7. NephCure Kidney International
  8. Halpin Foundation
  9. networks Data Management and Coordinating Center [U2CTR002818]
  10. National Institute of Neurological Disorders and Stroke

向作者/读者索取更多资源

Using gene expression data from the kidney tissue, MN patients can be accurately distinguished from other kidney disease patients. By analyzing the gene expression differences between MN patients and other glomerulonephropathy patients, specific gene modules related to MN can be identified in a kidney-specific functional network, indicating upregulation of podocyte-expressed genes in MN.
Background Molecular characterization of nephropathies may facilitate pathophysiologic insight, develop-ment of targeted therapeutics, and transcriptome-based disease classification. Although membranous nephropathy (MN) is a common cause of adult-onset nephrotic syndrome, the molecular pathways of kid-ney damage in MN require further definition.& nbsp;Methods We applied a machine-learning framework to predict diagnosis on the basis of gene expression from the microdissected kidney tissue of participants in the Nephrotic Syndrome Study Network (NEP-TUNE) cohort. We sought to identify differentially expressed genes between participants with MN versus those of other glomerulonephropathies across the NEPTUNE and European Renal cDNA Bank (ERCB) cohorts, to find MN-specific gene modules in a kidney-specific functional network, and to identify cell-type specificity of MN-specific genes using single-cell sequencing data from reference nephrectomy tissue.& nbsp;Results Glomerular gene expression alone accurately separated participants with MN from those with other nephrotic syndrome etiologies. The top predictive classifier genes from NEPTUNE participants were also differentially expressed in the ERCB participants with MN. We identified a signature of 158 genes that are significantly differentially expressed in MN across both cohorts, finding 120 of these in a validation cohort. This signature is enriched in targets of transcription factor NF -KB. Clustering these MN-specific genes in a kidney-specific functional network uncovered modules with functional enrichments, including in ion transport, cell projection morphogenesis, regulation of adhesion, and wounding response. Expression data from reference nephrectomy tissue indicated 43% of these genes are most highly expressed by podocytes.& nbsp;Conclusions These results suggest that, relative to other glomerulonephropathies, MN has a distinctive molecular signature that includes upregulation of many podocyte-expressed genes, provides a molecular snapshot of MN, and facilitates insight into MN's underlying pathophysiology.

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