Shi Jin-Yu, Che Xin, Wen Rui, Hou Si-Jia, Xi Yu-Jia, Feng Yi-Qian, Wang Ling-Xiao, Liu Shi-Jia, Lv Wen-Hao, Zhang Ya-Fen
Department of Breast Surgery, The Fifth Hospital of Shanxi Medical University, Taiyuan 030000, Shanxi Province, China.
The Fifth Clinical Medical College, Shanxi Medical University, Taiyuan 030000, Shanxi Province, China.
World J Clin Oncol. 2024 Mar 24;15(3):391-410. doi: 10.5306/wjco.v15.i3.391.
Ferroptosis has recently been associated with multiple degenerative diseases. Ferroptosis induction in cancer cells is a feasible method for treating neoplastic diseases. However, the association of iron proliferation-related genes with prognosis in HER2+ breast cancer (BC) patients is unclear.
To identify and evaluate fresh ferroptosis-related biomarkers for HER2+ BC.
First, we obtained the mRNA expression profiles and clinical information of HER2+ BC patients from the TCGA and METABRIC public databases. A four-gene prediction model comprising , , , and was subsequently developed in the TCGA cohort and confirmed in the METABRIC cohort. Patients were stratified into high-risk and low-risk groups based on their median risk score, an independent predictor of overall survival (OS). Based on these findings, immune infiltration, mutations, and medication sensitivity were analyzed in various risk groupings. Additionally, we assessed patient prognosis by combining the tumor mutation burden (TMB) with risk score. Finally, we evaluated the expression of critical genes by analyzing single-cell RNA sequencing (scRNA-seq) data from malignant normal epithelial cells.
We found that the higher the risk score was, the worse the prognosis was ( < 0.05). We also found that the immune cell infiltration, mutation, and drug sensitivity were different between the different risk groups. The high-risk subgroup was associated with lower immune scores and high TMB. Moreover, we found that the combination of the TMB and risk score could stratify patients into three groups with distinct prognoses. HRisk-HTMB patients had the worst prognosis, whereas LRisk-LTMB patients had the best prognosis ( < 0.0001). Analysis of the scRNA-seq data showed that , , and were significantly differentially expressed, whereas was not, suggesting that these genes are expressed mainly in cancer epithelial cells ( < 0.01).
Our model helps guide the prognosis of HER2+ breast cancer patients, and its combination with the TMB can aid in more accurate assessment of patient prognosis and provide new ideas for further diagnosis and treatment.
铁死亡最近与多种退行性疾病相关。诱导癌细胞发生铁死亡是治疗肿瘤性疾病的一种可行方法。然而,铁增殖相关基因与HER2+乳腺癌(BC)患者预后的关联尚不清楚。
识别和评估HER2+ BC的新的铁死亡相关生物标志物。
首先,我们从TCGA和METABRIC公共数据库中获取HER2+ BC患者的mRNA表达谱和临床信息。随后在TCGA队列中开发了一个由 、 、 和 组成的四基因预测模型,并在METABRIC队列中进行了验证。根据患者的中位风险评分将其分为高风险和低风险组,中位风险评分是总生存期(OS)的独立预测因子。基于这些发现,分析了不同风险分组中的免疫浸润、突变和药物敏感性。此外,我们通过将肿瘤突变负担(TMB)与风险评分相结合来评估患者预后。最后,我们通过分析来自恶性和正常上皮细胞的单细胞RNA测序(scRNA-seq)数据来评估关键基因的表达。
我们发现风险评分越高,预后越差(<0.05)。我们还发现不同风险组之间的免疫细胞浸润、突变和药物敏感性存在差异。高风险亚组与较低的免疫评分和高TMB相关。此外,我们发现TMB与风险评分的组合可将患者分为三组,预后截然不同。高风险-高TMB患者预后最差,而低风险-低TMB患者预后最好(<0.0001)。对scRNA-seq数据的分析表明, 、 和 有显著差异表达,而 没有,这表明这些基因主要在癌上皮细胞中表达(<0.01)。
我们的模型有助于指导HER2+乳腺癌患者的预后评估,其与TMB的结合可有助于更准确地评估患者预后,并为进一步的诊断和治疗提供新思路。