The First Affiliated Hospital of Guangxi Medical University, Nanning, Guangxi, China.
PLoS One. 2023 Feb 3;18(2):e0281439. doi: 10.1371/journal.pone.0281439. eCollection 2023.
Acute kidney injury (AKI) is a serious and frequently observed disease associated with high morbidity and mortality. Weighted gene co-expression network analysis (WGCNA) is a research method that converts the relationship between tens of thousands of genes and phenotypes into the association between several gene sets and phenotypes. We screened potential target genes related to AKI through WGCNA to provide a reference for the diagnosis and treatment of AKI. Key biomolecules of AKI were investigated based on transcriptome analysis. RNA sequencing data from 39 kidney biopsy specimens of AKI patients and 9 normal subjects were downloaded from the GEO database. By WGCNA, the top 20% of mRNAs with the largest variance in the data matrix were used to construct a gene co-expression network with a p-value < 0.01 as a screening condition, showing that the blue module was most closely associated with AKI. Thirty-two candidate biomarker genes were screened according to the threshold values of |MM|≥0.86 and |GS|≥0.4, and PPI and enrichment analyses were performed. The top three genes with the most connected nodes, alanine-glyoxylate aminotransferase 2(AGXT2), serine hydroxymethyltransferase 1(SHMT1) and aconitase 2(ACO2), were selected as the central genes based on the PPI network. A rat AKI model was constructed, and the mRNA and protein expression levels of the central genes in the model and control groups were verified by PCR and immunohistochemistry experiments. The results showed that the relative mRNA expression and protein levels of AGXT2, SHMT1 and ACO2 showed a decrease in the model group. In conclusion, we inferred that there is a close association between AGXT2, SHMT1 and ACO2 genes and the development of AKI, and the down-regulation of their expression levels may induce AKI.
急性肾损伤(AKI)是一种严重且常见的疾病,与高发病率和死亡率相关。加权基因共表达网络分析(WGCNA)是一种将数万基因与表型之间的关系转化为几个基因集与表型之间关联的研究方法。我们通过 WGCNA 筛选与 AKI 相关的潜在靶基因,为 AKI 的诊断和治疗提供参考。基于转录组分析研究 AKI 的关键生物分子。从 GEO 数据库中下载了 39 例 AKI 患者和 9 例正常对照的肾脏活检标本的 RNA 测序数据。通过 WGCNA,使用数据矩阵中具有最大方差的前 20%的 mRNA 构建基因共表达网络,筛选条件为 p 值<0.01,结果显示蓝色模块与 AKI 最密切相关。根据|MM|≥0.86 和 |GS|≥0.4 的阈值筛选出 32 个候选生物标志物基因,并进行 PPI 和富集分析。根据 PPI 网络,选择连接节点最多的前三个基因,丙氨酸-乙醛酸转氨酶 2(AGXT2)、丝氨酸羟甲基转移酶 1(SHMT1)和 aconitase 2(ACO2)作为中心基因。构建大鼠 AKI 模型,通过 PCR 和免疫组织化学实验验证模型组和对照组中心基因的 mRNA 和蛋白表达水平。结果表明,模型组中 AGXT2、SHMT1 和 ACO2 的相对 mRNA 表达和蛋白水平降低。综上所述,我们推断 AGXT2、SHMT1 和 ACO2 基因与 AKI 的发生发展密切相关,其表达水平下调可能诱导 AKI。