Feng Bing, Meng Xinling, Zhou Hui, Chen Liechun, Zou Chun, Liang Lucong, Meng Youshi, Xu Ning, Wang Hao, Zou Donghua
Department of Neurology, The People's Hospital of Guiping, Guigang, Guangxi, 537200, People's Republic of China.
Department of Endocrinology, The People's Hospital of Guiping, Guigang, Guangxi, 537200, People's Republic of China.
Int J Gen Med. 2021 Aug 22;14:4731-4744. doi: 10.2147/IJGM.S327594. eCollection 2021.
Ischemic stroke (IS) is a major cause of severe disability. This study aimed to identify potential biomarkers closely related to IS diagnosis and treatment.
Profiles of gene expression were obtained from datasets GSE16561, GSE22255, GSE112801 and GSE110993. Differentially expressed mRNAs between IS and controls were then subjected to weighted gene co-expression network analysis as well as multiscale embedded gene co-expression network analysis. The intersection of the two sets of module genes was subjected to analyses of functional enrichment and of microRNAs (miRNAs) regulation. Then, the area under receiver operating characteristic curves (AUC) was calculated to assess the ability of genes to discriminate IS patients from controls. IS diagnostic signatures were constructed using least absolute shrinkage and selection operator regression.
A total of 234 common co-expression network genes were found to be potentially associated with IS. Enrichment analysis found that these genes were mainly associated with inflammation and immune response. The aberrantly expressed miRNAs (hsa-miR-651-5p, hsa-miR-138-5p, hsa-miR-9-3p and hsa-miR-374a-3p) in IS had regulatory effects on IS-related genes and were involved in brain-related diseases. We used the criterion AUC > 0.7 to screen out 23 hub genes from IS-related genes in the GSE16561 and GSE22255 datasets. We obtained an 8-gene signature (ADCY4, DUSP1, ATP5F1, DCTN5, EIF3G, ELAVL1, EXOSC7 and PPIE) from the training set of GSE16561 dataset, which we confirmed in the validation set of GSE16561 dataset and in the GSE22255 dataset. The genes in this signature were highly accurate for diagnosing IS. In addition, the 8-gene signature significantly correlated with infiltration by immune cells.
These findings provide new clues to molecular mechanisms and treatment targets in IS. The genes in the signature may be candidate markers and potential gene targets for treatments.
缺血性中风(IS)是导致严重残疾的主要原因。本研究旨在确定与IS诊断和治疗密切相关的潜在生物标志物。
从数据集GSE16561、GSE22255、GSE112801和GSE110993中获取基因表达谱。然后,对IS患者和对照组之间差异表达的mRNA进行加权基因共表达网络分析以及多尺度嵌入式基因共表达网络分析。对两组模块基因的交集进行功能富集分析和微小RNA(miRNA)调控分析。然后,计算受试者工作特征曲线下面积(AUC),以评估基因区分IS患者和对照组的能力。使用最小绝对收缩和选择算子回归构建IS诊断特征。
共发现234个常见的共表达网络基因可能与IS相关。富集分析发现这些基因主要与炎症和免疫反应相关。IS中异常表达的miRNA(hsa-miR-651-5p、hsa-miR-138-5p、hsa-miR-9-3p和hsa-miR-374a-3p)对IS相关基因具有调控作用,并参与脑相关疾病。我们使用AUC>0.7的标准从GSE16561和GSE22255数据集中的IS相关基因中筛选出23个核心基因。我们从GSE16561数据集的训练集中获得了一个8基因特征(ADCY4、DUSP1、ATP5F1、DCTN5、EIF3G、ELAVL1、EXOSC7和PPIE),并在GSE16561数据集的验证集和GSE22255数据集中得到了证实。该特征中的基因对IS的诊断具有高度准确性。此外,8基因特征与免疫细胞浸润显著相关。
这些发现为IS的分子机制和治疗靶点提供了新线索。特征中的基因可能是候选标志物和潜在的治疗基因靶点。