Henger Anna, Kretzler Matthias, Doran Peter, Bonrouhi Mahnaz, Schmid Holger, Kiss Eva, Cohen Clemens D, Madden Stephen, Porubsky Stefan, Gröne Elisabeth F, Schlöndorff Detlef, Nelson Peter J, Gröne Hermann-Josef
Medical Policlinic, University of Munich, Munich, Germany.
Kidney Int. 2004 Mar;65(3):904-17. doi: 10.1111/j.1523-1755.2004.00499.x.
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.
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.
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.
This study suggests the feasibility of gene expression-based disease categorization in human nephropathies based on the extraction of marker gene sets.
肾病的基因表达谱分析可能有助于制定复杂肾脏疾病的诊断策略,并深入了解肾脏疾病的分子发病机制。为了测试基于分子的肾脏疾病分类,我们比较了对照肾和肾积水肾之间的差异基因表达谱,这些肾积水肾表现出不同程度的炎症和纤维化。
使用专门针对参与细胞间接触、基质周转和炎症的基因的小型宏阵列分析了9个肾积水肾和3个对照肾的RNA表达谱。同时,通过光学显微镜和定量免疫组织化学参数确定肾小管间质炎症、纤维化和肾小管萎缩的程度。
层次聚类和自组织图生成了一个基因表达树状图,有三个不同的节点,分别代表对照组、四个炎症程度高的肾和五个纤维化评分高的肾。为了评估标记集的临床适用性,在常规肾活检的肾小管间质样本中检测了九个基因(6Ckine、IL-8、MMP-9、MMP-3、MMP-7、尿激酶R、CXCR5、整合素-β4和多效生长因子)的表达。七个mRNA标记在活检人群的炎症和纤维化中显示出差异调节。临床随访显示基因表达数据与肾脏疾病进展之间存在严格的相关性,并允许根据基因表达谱将活检分为进展性或稳定性疾病病程。
本研究表明基于标记基因集的提取,在人类肾病中基于基因表达进行疾病分类是可行的。