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代谢相关生物标志物、分子分类和免疫浸润在糖尿病溃疡中的验证。

Metabolism-related biomarkers, molecular classification, and immune infiltration in diabetic ulcers with validation.

机构信息

Department of Dermatology, Yueyang Hospital of Integrated Traditional Chinese and Western Medicine, Shanghai University of Traditional Chinese Medicine, Shanghai, China.

Institute of Dermatology, Shanghai Academy of Traditional Chinese Medicine, shanghai, China.

出版信息

Int Wound J. 2023 Nov;20(9):3498-3513. doi: 10.1111/iwj.14223. Epub 2023 May 28.

Abstract

Diabetes mellitus (DM) can lead to diabetic ulcers (DUs), which are the most severe complications. Due to the need for more accurate patient classifications and diagnostic models, treatment and management strategies for DU patients still need improvement. The difficulty of diabetic wound healing is caused closely related to biological metabolism and immune chemotaxis reaction dysfunction. Therefore, the purpose of our study is to identify metabolic biomarkers in patients with DU and construct a molecular subtype-specific prognostic model that is highly accurate and robust. RNA-sequencing data for DU samples were obtained from the Gene Expression Omnibus (GEO) database. DU patients and normal individuals were compared regarding the expression of metabolism-related genes (MRGs). Then, a novel diagnostic model based on MRGs was constructed with the random forest algorithm, and classification performance was evaluated utilizing receiver operating characteristic (ROC) analysis. The biological functions of MRGs-based subtypes were investigated using consensus clustering analysis. A principal component analysis (PCA) was conducted to determine whether MRGs could distinguish between subtypes. We also examined the correlation between MRGs and immune infiltration. Lastly, qRT-PCR was utilized to validate the expression of the hub MRGs with clinical validations and animal experimentations. Firstly, 8 metabolism-related hub genes were obtained by random forest algorithm, which could distinguish the DUs from normal samples validated by the ROC curves. Secondly, DU samples could be consensus clustered into three molecular classifications by MRGs, verified by PCA analysis. Thirdly, associations between MRGs and immune infiltration were confirmed, with LYN and Type 1 helper cell significantly positively correlated; RHOH and TGF-β family remarkably negatively correlated. Finally, clinical validations and animal experiments of DU skin tissue samples showed that the expressions of metabolic hub genes in the DU groups were considerably upregulated, including GLDC, GALNT6, RHOH, XDH, MMP12, KLK6, LYN, and CFB. The current study proposed an auxiliary MRGs-based DUs model while proposing MRGs-based molecular clustering and confirmed the association with immune infiltration, facilitating the diagnosis and management of DU patients and designing individualized treatment plans.

摘要

糖尿病(DM)可导致糖尿病溃疡(DUs),这是最严重的并发症。由于需要更准确的患者分类和诊断模型,DU 患者的治疗和管理策略仍需改进。糖尿病伤口愈合困难的原因与生物代谢和免疫趋化反应功能障碍密切相关。因此,我们的研究目的是鉴定 DU 患者的代谢生物标志物,并构建一个高度准确和稳健的分子亚型特异性预后模型。从基因表达综合(GEO)数据库中获取 DU 样本的 RNA 测序数据。比较 DU 患者和正常个体代谢相关基因(MRGs)的表达。然后,利用随机森林算法构建基于 MRGs 的新型诊断模型,并利用接收者操作特征(ROC)分析评估分类性能。利用共识聚类分析研究基于 MRGs 的亚型的生物学功能。进行主成分分析(PCA)以确定 MRGs 是否可以区分亚型。我们还检查了 MRGs 与免疫浸润之间的相关性。最后,利用 qRT-PCR 对临床验证和动物实验验证的 MRGs 进行了验证。首先,通过随机森林算法获得 8 个代谢相关的关键基因,通过 ROC 曲线验证可以区分 DU 与正常样本。其次,通过 PCA 分析验证,MRGs 可以将 DU 样本共识聚类为三个分子分类。第三,证实了 MRGs 与免疫浸润之间的关联,其中 LYN 和 1 型辅助细胞呈显著正相关;RHOH 和 TGF-β家族呈显著负相关。最后,DU 皮肤组织样本的临床验证和动物实验显示,DU 组代谢关键基因的表达显著上调,包括 GLDC、GALNT6、RHOH、XDH、MMP12、KLK6、LYN 和 CFB。本研究提出了一个辅助基于 MRGs 的 DUs 模型,同时提出了基于 MRGs 的分子聚类,并证实了与免疫浸润的关联,有助于 DU 患者的诊断和管理,并设计个体化治疗方案。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e59f/10588317/9a68e216f041/IWJ-20-3498-g008.jpg

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