Tajti Ferenc, Kuppe Christoph, Antoranz Asier, Ibrahim Mahmoud M, Kim Hyojin, Ceccarelli Francesco, Holland Christian H, Olauson Hannes, Floege Jürgen, Alexopoulos Leonidas G, Kramann Rafael, Saez-Rodriguez Julio
Faculty of Medicine, RWTH Aachen University, Joint Research Centre for Computational Biomedicine (JRC-COMBINE), Aachen, Germany.
Division of Nephrology and Clinical Immunology, RWTH Aachen University, Aachen, Germany.
Kidney Int Rep. 2019 Nov 13;5(2):211-224. doi: 10.1016/j.ekir.2019.11.005. eCollection 2020 Feb.
To develop effective therapies and identify novel early biomarkers for chronic kidney disease, an understanding of the molecular mechanisms orchestrating it is essential. We here set out to understand how differences in chronic kidney disease (CKD) origin are reflected in gene expression. To this end, we integrated publicly available human glomerular microarray gene expression data for 9 kidney disease entities that account for most of CKD worldwide. Our primary goal was to demonstrate the possibilities and potential on data analysis and integration to the nephrology community.
We integrated data from 5 publicly available studies and compared glomerular gene expression profiles of disease with that of controls from nontumor parts of kidney cancer nephrectomy tissues. A major challenge was the integration of the data from different sources, platforms, and conditions that we mitigated with a bespoke stringent procedure.
We performed a global transcriptome-based delineation of different kidney disease entities, obtaining a transcriptomic diffusion map of their similarities and differences based on the genes that acquire a consistent differential expression between each kidney disease entity and nephrectomy tissue. We derived functional insights by inferring the activity of signaling pathways and transcription factors from the collected gene expression data and identified potential drug candidates based on expression signature matching. We validated representative findings by immunostaining in human kidney biopsies indicating, for example, that the transcription factor FOXM1 is significantly and specifically expressed in parietal epithelial cells in rapidly progressive glomerulonephritis (RPGN) whereas not expressed in control kidney tissue. Furthermore, we found drug candidates by matching the signature on expression of drugs to that of the CKD entities, in particular, the Food and Drug Administration-approved drug nilotinib.
These results provide a foundation to comprehend the specific molecular mechanisms underlying different kidney disease entities that can pave the way to identify biomarkers and potential therapeutic targets. To facilitate further use, we provide our results as a free interactive Web application: https://saezlab.shinyapps.io/ckd_landscape/. However, because of the limitations of the data and the difficulties in its integration, any specific result should be considered with caution. Indeed, we consider this study rather an illustration of the value of functional genomics and integration of existing data.
为了开发有效的治疗方法并识别慢性肾脏病的新型早期生物标志物,了解其背后的分子机制至关重要。我们在此着手了解慢性肾脏病(CKD)起源的差异如何在基因表达中得到体现。为此,我们整合了公开可用的人类肾小球微阵列基因表达数据,这些数据涉及全球大部分CKD的9种肾脏疾病实体。我们的主要目标是向肾脏病学界展示数据分析和整合的可能性与潜力。
我们整合了来自5项公开研究的数据,并将疾病的肾小球基因表达谱与肾癌肾切除术组织非肿瘤部分的对照样本进行比较。一个主要挑战是整合来自不同来源、平台和条件的数据,我们通过定制的严格程序来缓解这一问题。
我们基于转录组对不同肾脏疾病实体进行了全面描绘,根据在每个肾脏疾病实体与肾切除术组织之间呈现一致差异表达的基因,获得了它们异同的转录组扩散图。我们通过从收集的基因表达数据推断信号通路和转录因子的活性来获得功能见解,并基于表达特征匹配识别潜在的药物候选物。我们通过在人类肾脏活检组织中的免疫染色验证了代表性发现,例如,转录因子FOXM1在快速进展性肾小球肾炎(RPGN)的壁层上皮细胞中显著且特异性表达,而在对照肾脏组织中未表达。此外,我们通过将药物表达特征与CKD实体的特征进行匹配来发现药物候选物,特别是美国食品药品监督管理局批准的药物尼洛替尼。
这些结果为理解不同肾脏疾病实体背后的特定分子机制奠定了基础,这可为识别生物标志物和潜在治疗靶点铺平道路。为便于进一步使用,我们将结果作为一个免费的交互式网络应用程序提供:https://saezlab.shinyapps.io/ckd_landscape/。然而,由于数据的局限性及其整合的困难,任何具体结果都应谨慎考虑。实际上,我们认为这项研究更多地是对功能基因组学价值和现有数据整合的一种例证。