[Bioinformatics analysis of efferocytosis-related genes in diabetic kidney disease and screening of targeted traditional Chinese medicine].

Q3 Pharmacology, Toxicology and Pharmaceutics
Yi Kang, Qian Jin, Xue-Zhe Wang, Meng-Qi Zhou, Hui-Juan Zheng, Dan-Wen Li, Jie Lyu, Yao-Xian Wang
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引用次数: 0

Abstract

This study employed bioinformatics to screen the feature genes related to efferocytosis in diabetic kidney disease(DKD) and explores traditional Chinese medicine(TCM) regulating these feature genes. The GSE96804 and GSE30528 datasets were integrated as the training set, and the intersection of differentially expressed genes and efferocytosis-related genes(ERGs) was identified as DKD-ERGs. Subsequently, correlation analysis, protein-protein interaction(PPI) network construction, enrichment analysis, and immune infiltration analysis were performed. Consensus clustering was conducted on DKD patients based on the expression levels of DKD-ERGs, and the expression levels, immune infiltration characteristics, and gene set variations between different subtypes were explored. Eight machine learning models were constructed and their prediction performance was evaluated. The best-performing model was evaluated by nomograms, calibration curves, and external datasets, followed by the identification of efferocytosis-related feature genes associated with DKD. Finally, potential TCMs that can regulate these feature genes were predicted. The results showed that the training set contained 640 differentially expressed genes, and after intersecting with ERGs, 12 DKD-ERGs were obtained, which demonstrated mutual regulation and immune modulation effects. Consensus clustering divided DKD into two subtypes, C1 and C2. The support vector machine(SVM) model had the best performance, predicting that growth arrest-specific protein 6(GAS6), S100 calcium-binding protein A9(S100A9), C-X3-C motif chemokine ligand 1(CX3CL1), 5'-nucleotidase(NT5E), and interleukin 33(IL33) were the feature genes of DKD. Potential TCMs with therapeutic effects included Astragali Radix, Trionycis Carapax, Sargassum, Rhei Radix et Rhizoma, Curcumae Radix, and Alismatis Rhizoma, which mainly function to clear heat, replenish deficiency, activate blood, resolve stasis, and promote urination and drain dampness. Molecular docking revealed that the key components of these TCMs, including β-sitosterol, quercetin, and sitosterol, exhibited good binding activity with the five target genes. These results indicated that efferocytosis played a crucial role in the development and progression of DKD. The feature genes closely related to both DKD and efferocytosis, such as GAS6, S100A9, CX3CL1, NT5E, and IL33, were identified. TCMs such as Astragali Radix, Trionycis Carapa, Sargassum, Rhei Radix et Rhizoma, Curcumae Radix, and Alismatis Rhizoma may provide a new therapeutic strategy for DKD by regulating efferocytosis.

[糖尿病肾病中胞泡增多相关基因的生物信息学分析及靶向中药的筛选]。
本研究采用生物信息学方法筛选糖尿病肾病(DKD)中与efferocytosis相关的特征基因,并探索中药对这些特征基因的调控作用。整合GSE96804和GSE30528数据集作为训练集,鉴定差异表达基因与efferocytosis相关基因(ERGs)的交集为DKD-ERGs。随后进行相关性分析、蛋白-蛋白相互作用(PPI)网络构建、富集分析和免疫浸润分析。根据DKD- ergs表达水平对DKD患者进行共识聚类,探讨不同亚型之间的表达水平、免疫浸润特征、基因集差异。构建了8个机器学习模型,并对其预测性能进行了评价。通过模态图、校准曲线和外部数据集评估表现最佳的模型,随后鉴定与DKD相关的efferocysis相关特征基因。最后,预测了可能调控这些特征基因的中草药。结果表明,训练集包含640个差异表达基因,与ERGs相交后得到12个DKD-ERGs,表现出相互调控和免疫调节作用。共识聚类将DKD分为C1和C2两个亚型。支持向量机(SVM)模型预测生长抑制特异性蛋白6(GAS6)、S100钙结合蛋白A9(S100A9)、C-X3-C基元趋化因子配体1(CX3CL1)、5′-核苷酸酶(NT5E)和白细胞介素33(IL33)是DKD的特征基因。具有潜在治疗作用的中药有黄芪、三甲、马尾草、大黄、姜黄、泽泻等,主要具有清热补虚、活血化瘀、利尿疏湿的作用。分子对接发现,这些中药的关键成分β-谷甾醇、槲皮素和谷甾醇与5个靶基因均表现出良好的结合活性。这些结果表明,红细胞增生在DKD的发生和发展中起着至关重要的作用。鉴定出与DKD和efferocytosis密切相关的特征基因GAS6、S100A9、CX3CL1、NT5E、IL33等。黄芪、三甲、马尾草、大黄、姜黄、泽泻等中药可能通过调节胞浆功能为DKD提供新的治疗策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Zhongguo Zhongyao Zazhi
Zhongguo Zhongyao Zazhi Pharmacology, Toxicology and Pharmaceutics-Pharmacology, Toxicology and Pharmaceutics (all)
CiteScore
1.50
自引率
0.00%
发文量
581
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