| Literature DB >> 35515499 |
Zhao Zhuang1, Dajiang Li2, Mengmeng Jiang2, Ye Wang2, Qianqian Cao2, Shenfeng Li3, Ruixue Luan1, Lina Sun1, Shoushi Wang2.
Abstract
The aim of this study is to probe the possible molecular mechanisms underlying the effects of propofol on HT22 cells. HT22 cells treated with different concentrations were sequenced, and then the results of the sequencing were analyzed for dynamic trends. Expression pattern clustering analysis was performed to demonstrate the expression of genes in the significant trend modules in each group of samples. We first chose the genes related to the trend module for WGCNA analysis, then constructed the PPI network of module genes related to propofol treatment group, and screened the key genes. Finally, GSEA analysis was performed on the key genes. Overall, 2,506 genes showed a decreasing trend with increasing propofol concentration, and 1,871 genes showed an increasing trend with increasing propofol concentration. WGCNA analysis showed that among them, turquoise panel genes were negatively correlated with propofol treatment, and genes with Cor R >0.9 in the turquoise panel were selected for PPI network construction. The MCC algorithm screened a total of five key genes (CD86, IL10RA, PTPRC, SPI1, and ITGAM). GSEA analysis showed that CD86, IL10RA, PTPRC, SPI1, and ITGAM are involved in the PRION_DISEASES pathway. Our study showed that propofol sedation can affect mRNA expression in the hippocampus, providing new ideas to identify treatment of nerve injury induced by propofol anesthesia.Entities:
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Year: 2022 PMID: 35515499 PMCID: PMC9064519 DOI: 10.1155/2022/4911773
Source DB: PubMed Journal: Comput Intell Neurosci
Figure 1CCK8 shows the processing effect.
Figure 2Trend analysis. (a) Number of genes in each module. (b) P-value of each module. (c) Bar graph showing the number of genes and P-value of each module.
Figure 3Heat map showing the expression of each gene in each sample. (a) Heatmap of module 0 gene expression in each sample. (b) Heatmap of module 19 gene expression in each sample. (c) Heatmap of module 18 gene expression in each sample. (d) Heatmap of module 12 gene expression in each sample.
Figure 4WGCNA analysis. (a) Heat map of correlations between (a) soft threshold (b) module signature genes and propofol treatment groups.
Figure 5PPI network construction. (a) PPI network building block diagram. (b) 5 key genes obtained from MCC algorithm analysis.
Figure 6GSEA analysis. (a) The first two signaling pathways involved in CD86 low expression. (b) The first two signaling pathways involved in IL10RA low expression. (c) The first two signaling pathways involved in PTPRC low expression. (d) The first two signaling pathways involved in SPI1 low expression. (e) The first two signaling pathways involved in ITGAM low expression.