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通过机器学习算法鉴定糖尿病肾病中与氧化应激和炎症反应相关的诊断标志物:来自人类转录组数据和小鼠实验的证据。

Identification of diagnostic markers related to oxidative stress and inflammatory response in diabetic kidney disease by machine learning algorithms: Evidence from human transcriptomic data and mouse experiments.

机构信息

Department of Nephrology, Center of Kidney and Urology, the Seventh Affiliated Hospital, Sun Yat-sen University, Shenzhen, China.

Edmond H. Fischer Translational Medical Research Laboratory, Scientific Research Center, The Seventh Affiliated Hospital, Sun Yat -Sen University, Shenzhen, China.

出版信息

Front Endocrinol (Lausanne). 2023 Mar 7;14:1134325. doi: 10.3389/fendo.2023.1134325. eCollection 2023.

Abstract

INTRODUCTION

Diabetic kidney disease (DKD) is a long-term complication of diabetes and causes renal microvascular disease. It is also one of the main causes of end-stage renal disease (ESRD), which has a complex pathophysiological process. Timely prevention and treatment are of great significance for delaying DKD. This study aimed to use bioinformatics analysis to find key diagnostic markers that could be possible therapeutic targets for DKD.

METHODS

We downloaded DKD datasets from the Gene Expression Omnibus (GEO) database. Overexpression enrichment analysis (ORA) was used to explore the underlying biological processes in DKD. Algorithms such as WGCNA, LASSO, RF, and SVM_RFE were used to screen DKD diagnostic markers. The reliability and practicability of the the diagnostic model were evaluated by the calibration curve, ROC curve, and DCA curve. GSEA analysis and correlation analysis were used to explore the biological processes and significance of candidate markers. Finally, we constructed a mouse model of DKD and diabetes mellitus (DM), and we further verified the reliability of the markers through experiments such as PCR, immunohistochemistry, renal pathological staining, and ELISA.

RESULTS

Biological processes, such as immune activation, T-cell activation, and cell adhesion were found to be enriched in DKD. Based on differentially expressed oxidative stress and inflammatory response-related genes (DEOIGs), we divided DKD patients into C1 and C2 subtypes. Four potential diagnostic markers for DKD, including tenascin C, peroxidasin, tissue inhibitor metalloproteinases 1, and tropomyosin (TNC, PXDN, TIMP1, and TPM1, respectively) were identified using multiple bioinformatics analyses. Further enrichment analysis found that four diagnostic markers were closely related to various immune cells and played an important role in the immune microenvironment of DKD. In addition, the results of the mouse experiment were consistent with the bioinformatics analysis, further confirming the reliability of the four markers.

CONCLUSION

In conclusion, we identified four reliable and potential diagnostic markers through a comprehensive and systematic bioinformatics analysis and experimental validation, which could serve as potential therapeutic targets for DKD. We performed a preliminary examination of the biological processes involved in DKD pathogenesis and provide a novel idea for DKD diagnosis and treatment.

摘要

简介

糖尿病肾病(DKD)是糖尿病的一种长期并发症,可导致肾脏微血管病变。它也是终末期肾病(ESRD)的主要原因之一,其具有复杂的病理生理过程。及时预防和治疗对于延缓 DKD 具有重要意义。本研究旨在使用生物信息学分析找到可能成为 DKD 治疗靶点的关键诊断标志物。

方法

我们从基因表达综合数据库(GEO)下载了 DKD 数据集。过度表达富集分析(ORA)用于探索 DKD 中的潜在生物学过程。使用 WGCNA、LASSO、RF 和 SVM_RFE 等算法筛选 DKD 诊断标志物。通过校准曲线、ROC 曲线和 DCA 曲线评估诊断模型的可靠性和实用性。GSEA 分析和相关性分析用于探索候选标志物的生物学过程和意义。最后,我们构建了 DKD 和糖尿病(DM)的小鼠模型,并通过 PCR、免疫组织化学、肾脏病理染色和 ELISA 等实验进一步验证了标志物的可靠性。

结果

发现 DKD 中存在免疫激活、T 细胞激活和细胞黏附等生物过程的富集。基于差异表达的氧化应激和炎症反应相关基因(DEOIGs),我们将 DKD 患者分为 C1 和 C2 两种亚型。通过多种生物信息学分析,我们确定了 4 个潜在的 DKD 诊断标志物,包括腱蛋白 C、过氧化物酶体、组织抑制剂金属蛋白酶 1 和原肌球蛋白(TNC、PXDN、TIMP1 和 TPM1)。进一步的富集分析发现,这 4 个诊断标志物与各种免疫细胞密切相关,在 DKD 的免疫微环境中发挥着重要作用。此外,小鼠实验的结果与生物信息学分析一致,进一步证实了这 4 个标志物的可靠性。

结论

总之,我们通过全面系统的生物信息学分析和实验验证,确定了 4 个可靠且有潜力的诊断标志物,它们可能成为 DKD 的潜在治疗靶点。我们对 DKD 发病机制中涉及的生物学过程进行了初步检查,为 DKD 的诊断和治疗提供了新的思路。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6a23/10028207/334e44c77db8/fendo-14-1134325-g001.jpg

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