Jiang Jie, Zhan Xinli, Xu Guoyong, Liang Tuo, Yu Chaojie, Liao Shian, Chen Liyi, Huang Shengsheng, Sun Xuhua, Yi Ming, Zhang Zide, Yao Yuanlin, Liu Chong
The First Clinical Affiliated Hospital of Guangxi Medical University, Nanning, Guangxi Province, China.
Aging (Albany NY). 2021 Jul 7;13(13):17516-17535. doi: 10.18632/aging.203242.
Owing to the poor prognosis of Ewing's sarcoma, reliable prognostic biomarkers are highly warranted for clinical diagnosis of the disease.
A combination of the weighted correlation network analysis and differentially expression analysis was used for initial screening; glycolysis-related genes were extracted and subjected to univariate Cox, LASSO regression, and multivariate Cox analyses to construct prognostic models. The immune cell composition of each sample was analysed using CIBERSORT software. Immunohistochemical analysis was performed for assessing the differential expression of modelled genes in Ewing's sarcoma and paraneoplastic tissues.
A logistic regression model constructed for the prognosis of Ewing's sarcoma exhibited that the patient survival rate in the high-risk group is much lower than in the low-risk group. CIBERSORT analysis exhibited a strong correlation of Ewing's sarcoma with naïve B cells, CD8 T cells, activated NK cells, and M0 macrophages (P < 0.05). Immunohistochemical analysis confirmed the study findings.
and can be used as prognostic biomarkers to predict the prognosis of Ewing's sarcoma, and a close association of Ewing's sarcoma with naïve B cells, CD8 T cells, activated NK cells, and M0 macrophages provides a novel approach to the disease immunotherapy.
由于尤因肉瘤预后较差,可靠的预后生物标志物对于该疾病的临床诊断非常必要。
采用加权基因共表达网络分析和差异表达分析相结合的方法进行初步筛选;提取糖酵解相关基因并进行单变量Cox、LASSO回归和多变量Cox分析以构建预后模型。使用CIBERSORT软件分析每个样本的免疫细胞组成。进行免疫组织化学分析以评估建模基因在尤因肉瘤和瘤旁组织中的差异表达。
为尤因肉瘤预后构建的逻辑回归模型显示,高危组患者的生存率远低于低危组。CIBERSORT分析显示尤因肉瘤与幼稚B细胞、CD8 T细胞、活化NK细胞和M0巨噬细胞有很强的相关性(P < 0.05)。免疫组织化学分析证实了研究结果。
[此处原文缺失具体基因名称]可作为预后生物标志物来预测尤因肉瘤的预后,并且尤因肉瘤与幼稚B细胞、CD8 T细胞、活化NK细胞和M0巨噬细胞的密切关联为该疾病的免疫治疗提供了一种新方法。