BACKGROUND: Gene expression profiling of nephropathies may facilitate development of diagnostic strategies for complex renal diseases as well as provide insight into the molecular pathogenesis of kidney diseases. To test molecular based renal disease categorization, differential gene expression profiles were compared between control and hydronephrotic kidneys showing varying degrees of inflammation and fibrosis. METHODS: RNA expression profiles from 9 hydronephrotic and 3 control kidneys were analyzed using small macroarrays dedicated to genes involved in cell-cell contact, matrix turnover, and inflammation. In parallel, the degree of tubulointerstitial inflammation, fibrosis, and tubular atrophy using light microscopy and quantitative immunohistochemical parameters was determined. RESULTS: Hierarchic clustering and self-organizing maps led to a gene expression dendrogram with three distinct nodes representing the control group, four kidneys with high inflammation, and five kidneys giving high fibrosis scores. To evaluate the clinical applicability of the marker set, the expression of nine genes (6Ckine, IL-8, MMP-9, MMP-3, MMP-7, urokinase R, CXCR5, integrin-beta4, and pleiotrophin) was tested in tubulointerstitial samples from routine renal biopsies. Seven mRNA markers showed differential regulation in inflammation and fibrosis in the biopsy population. Clinical follow-up revealed stringent correlation between gene expression data and progression of renal disease, and allowed segregation of the biopsies into progressive or stable disease course based on gene expression profiles. CONCLUSION: This study suggests the feasibility of gene expression-based disease categorization in human nephropathies based on the extraction of marker gene sets.
BACKGROUND: Gene expression profiling of nephropathies may facilitate development of diagnostic strategies for complex renal diseases as well as provide insight into the molecular pathogenesis of kidney diseases. To test molecular based renal disease categorization, differential gene expression profiles were compared between control and hydronephrotic kidneys showing varying degrees of inflammation and fibrosis. METHODS: RNA expression profiles from 9 hydronephrotic and 3 control kidneys were analyzed using small macroarrays dedicated to genes involved in cell-cell contact, matrix turnover, and inflammation. In parallel, the degree of tubulointerstitial inflammation, fibrosis, and tubular atrophy using light microscopy and quantitative immunohistochemical parameters was determined. RESULTS: Hierarchic clustering and self-organizing maps led to a gene expression dendrogram with three distinct nodes representing the control group, four kidneys with high inflammation, and five kidneys giving high fibrosis scores. To evaluate the clinical applicability of the marker set, the expression of nine genes (6Ckine, IL-8, MMP-9, MMP-3, MMP-7, urokinase R, CXCR5, integrin-beta4, and pleiotrophin) was tested in tubulointerstitial samples from routine renal biopsies. Seven mRNA markers showed differential regulation in inflammation and fibrosis in the biopsy population. Clinical follow-up revealed stringent correlation between gene expression data and progression of renal disease, and allowed segregation of the biopsies into progressive or stable disease course based on gene expression profiles. CONCLUSION: This study suggests the feasibility of gene expression-based disease categorization in humannephropathies based on the extraction of marker gene sets.
Authors: Laura H Mariani; Sebastian Martini; Laura Barisoni; Pietro A Canetta; Jonathan P Troost; Jeffrey B Hodgin; Matthew Palmer; Avi Z Rosenberg; Kevin V Lemley; Hui-Ping Chien; Jarcy Zee; Abigail Smith; Gerald B Appel; Howard Trachtman; Stephen M Hewitt; Matthias Kretzler; Serena M Bagnasco Journal: Nephrol Dial Transplant Date: 2018-02-01 Impact factor: 5.992
Authors: Heather N Reich; Carol Landolt-Marticorena; Paul C Boutros; Rohan John; Joan Wither; Paul R Fortin; Stuart Yang; James W Scholey; Andrew M Herzenberg Journal: J Mol Diagn Date: 2011-03 Impact factor: 5.568
Authors: Anna Solberg; Lena Holmdahl; Peter Falk; Ingrid Palmgren; Marie-Louise Ivarsson Journal: Int J Colorectal Dis Date: 2008-03-18 Impact factor: 2.571
Authors: Heather N Reich; David Tritchler; Daniel C Cattran; Andrew M Herzenberg; Felix Eichinger; Anissa Boucherot; Anna Henger; Celine C Berthier; Viji Nair; Clemens D Cohen; James W Scholey; Matthias Kretzler Journal: PLoS One Date: 2010-10-18 Impact factor: 3.240