Department of Breast Surgery, Key Laboratory of Breast Cancer Diagnosis and Treatment Research of Guangxi Department of Education, Guangxi Medical University Cancer Hospital, Nanning, 530000, China.
Key Laboratory of Breast Cancer Diagnosis and Treatment Research of Guangxi Department of Education, Guangxi Medical University Cancer Hospital, Nanning, 530000, P.R. China.
BMC Cancer. 2023 Jun 23;23(1):583. doi: 10.1186/s12885-023-11012-z.
Breast cancer is a malignant tumour that seriously threatens women's life and health and exhibits high inter-individual heterogeneity, emphasising the need for more in-depth research on its pathogenesis. While internal 7-methylguanosine (m7G) modifications affect RNA processing and function and are believed to be involved in human diseases, little is currently known about the role of m7G modification in breast cancer.
We elucidated the expression, copy number variation incidence and prognostic value of 24 m7G-related genes (m7GRGs) in breast cancer. Subsequently, based on the expression of these 24 m7GRGs, consensus clustering was used to divide tumour samples from the TCGA-BRCA dataset into four subtypes based on significant differences in their immune cell infiltration and stromal scores. Differentially expressed genes between subtypes were mainly enriched in immune-related pathways such as 'Ribosome', 'TNF signalling pathway' and 'Salmonella infection'. Support vector machines and multivariate Cox regression analysis were applied based on these 24 m7GRGs, and four m7GRGs-AGO2, EIF4E3, DPCS and EIF4E-were identified for constructing the prediction model. An ROC curve indicated that a nomogram model based on the risk model and clinical factors had strong ability to predict the prognosis of breast cancer. The prognoses of patients in the high- and low-TMB groups were significantly different (p = 0.03). Moreover, the four-gene signature was able to predict the response to chemotherapy.
In conclusion, we identified four different subtypes of breast cancer with significant differences in the immune microenvironment and pathways. We elucidated prognostic biomarkers associated with breast cancer and constructed a prognostic model involving four m7GRGs. In addition, we predicted the candidate drugs related to breast cancer based on the prognosis model.
乳腺癌是一种严重威胁女性生命健康的恶性肿瘤,表现出高度的个体间异质性,强调需要更深入地研究其发病机制。虽然内部 7-甲基鸟苷(m7G)修饰影响 RNA 处理和功能,并且被认为与人类疾病有关,但目前对于 m7G 修饰在乳腺癌中的作用知之甚少。
我们阐明了 24 个 m7G 相关基因(m7GRGs)在乳腺癌中的表达、拷贝数变异发生率和预后价值。随后,基于这 24 个 m7GRGs 的表达,基于免疫细胞浸润和基质评分的显著差异,使用共识聚类将 TCGA-BRCA 数据集的肿瘤样本分为四个亚型。亚型之间差异表达的基因主要富集在免疫相关途径,如“核糖体”、“TNF 信号通路”和“沙门氏菌感染”。基于这些 24 个 m7GRGs 应用支持向量机和多变量 Cox 回归分析,鉴定出四个 m7GRGs-AGO2、EIF4E3、DPCS 和 EIF4E 用于构建预测模型。ROC 曲线表明,基于风险模型和临床因素的列线图模型具有预测乳腺癌预后的强大能力。高和低 TMB 组患者的预后差异显著(p=0.03)。此外,四基因特征能够预测化疗反应。
总之,我们确定了四种不同的乳腺癌亚型,它们在免疫微环境和途径方面存在显著差异。我们阐明了与乳腺癌相关的预后生物标志物,并构建了涉及四个 m7GRGs 的预后模型。此外,我们还基于预后模型预测了与乳腺癌相关的候选药物。