Ling Yuanguo, Teng Wei, Long Niya, Qiu Wenjin, Wei Ruting, Hou Yunan, Jiang Lishi, Liu Jian, Zhou Xingwang, Chu Liangzhao
Department of Neurosurgery, The Affiliated Hospital of Guizhou Medical University, Guiyang, Guizhou, China.
Department of Clinical Medicine, Guizhou Medical University, Guiyang, Guizhou, China.
J Cell Mol Med. 2024 Dec;28(23):e70181. doi: 10.1111/jcmm.70181.
Glioma is the most common primary tumour in central nervous system, characterized by high invasiveness, a high recurrence rate and extremely poor prognosis. Machine learning based on cancer functional state helps to combine multi-omics methods to screen for key gene, such as CENPA, that influences the phenotype of glioma and patients' prognosis. Based on 14 CFS, glioma was divided into three subtypes. Bioinformatics and machine learning methods were utilized to develop an enhanced prognostic prediction signature based on three subtypes. We selected CENPA as a hub biomarker and conducted in vitro experiments such as IHC, western blot, Coip, transwell, cck8, flow cytometry, scratch assay, qPCR, AlphaFold, MOE and in vivo experiments. We identified three subtypes of glioma based on the 14 CFS. The C subtype exhibits poor clinical outcomes, increased carbohydrate and nucleotide metabolism, high infiltration of immune cells, high CNV and tumour mutation burden (p < 0.05). The differential expression of gene between three subtypes were used to construct a novel signature with improved performance in prognostic prediction via machine learning. CENPA was selected as the hub gene, in vitro experiments such as ihc, western blot and qPCR showed that CENPA had high expression in tissues and cell lines (p < 0.05). The scratch assay, edu, cck8, flow cytometry and transwell after CENPA knockdown or overexpression had significant effects on the functions of glioma. Meanwhile, CENPA was regulated by EZH2 and influenced downstream wnt pathway, affecting phosphorylation of two sites, Ser675 and Ser552, on β-catenin. The effect of CENPA knockdown was reversed by drug CHIR-99021. Animal experiments indicated that the tumour volume of control and overexpression group increased faster, especially the overexpression group, which was significantly faster (p < 0.001). Machine learning based on CFS is beneficial for the selection of key genes and disease assessment. In glioma, CENPA is positively correlated with WHO grading at both the gene and protein levels, and high CENPA affects patients' poor prognosis. Regulating CENPA can affect functions of glioma, and these phenomena may act through the EZH2/CENPA/β-catenin signalling axis. CENPA knockdown can be reversed by the drug CHIR-99021. CENPA may become one of the therapeutic targets in glioma.
胶质瘤是中枢神经系统最常见的原发性肿瘤,具有高侵袭性、高复发率和极差的预后。基于癌症功能状态的机器学习有助于结合多组学方法筛选关键基因,如影响胶质瘤表型和患者预后的CENPA。基于14种癌症功能状态(CFS),胶质瘤被分为三个亚型。利用生物信息学和机器学习方法,基于这三个亚型开发了一种增强的预后预测特征。我们选择CENPA作为核心生物标志物,并进行了免疫组化(IHC)、蛋白质免疫印迹、免疫共沉淀(Coip)、Transwell小室实验、细胞计数试剂盒8(cck8)、流式细胞术、划痕实验、定量聚合酶链反应(qPCR)、AlphaFold、分子操作环境(MOE)等体外实验以及体内实验。我们基于14种CFS确定了胶质瘤的三个亚型。C亚型表现出较差的临床结果、碳水化合物和核苷酸代谢增加、免疫细胞高浸润、高拷贝数变异(CNV)和肿瘤突变负担(p < 0.05)。利用三个亚型之间基因的差异表达,通过机器学习构建了一种在预后预测中性能得到改善的新型特征。选择CENPA作为核心基因,免疫组化、蛋白质免疫印迹和定量聚合酶链反应等体外实验表明,CENPA在组织和细胞系中高表达(p < 0.05)。CENPA敲低或过表达后的划痕实验、5-乙炔基-2'-脱氧尿苷(edu)、细胞计数试剂盒8、流式细胞术和Transwell小室实验对胶质瘤的功能有显著影响。同时,CENPA受EZH2调控并影响下游Wnt通路,影响β-连环蛋白上Ser675和Ser552两个位点的磷酸化。药物CHIR-99021可逆转CENPA敲低的作用。动物实验表明,对照组和过表达组的肿瘤体积增长更快,尤其是过表达组,显著更快(p < 0.001)。基于CFS的机器学习有利于关键基因的选择和疾病评估。在胶质瘤中,CENPA在基因和蛋白质水平上均与世界卫生组织(WHO)分级呈正相关,高表达的CENPA影响患者的不良预后。调节CENPA可影响胶质瘤的功能,这些现象可能通过EZH2/CENPA/β-连环蛋白信号轴起作用。CENPA敲低可被药物CHIR-99021逆转。CENPA可能成为胶质瘤的治疗靶点之一。