Research Laboratory Center, Guizhou Provincial People's Hospital, Guiyang, Guizhou, China.
NHC Key Laboratory of Pulmonary Immune-Related Diseases, Guizhou Provincial People's Hospital, Guizhou University, Guiyang, Guizhou, China.
Front Immunol. 2024 Feb 19;15:1332942. doi: 10.3389/fimmu.2024.1332942. eCollection 2024.
Breast cancer (BC) is a leading cause of mortality among women, underscoring the urgent need for improved therapeutic predictio. Developing a precise prognostic model is crucial. The role of Endoplasmic Reticulum Stress (ERS) in cancer suggests its potential as a critical factor in BC development and progression, highlighting the importance of precise prognostic models for tailored treatment strategies.
Through comprehensive analysis of ERS-related gene expression in BC, utilizing both single-cell and bulk sequencing data from varied BC subtypes, we identified eight key ERS-related genes. LASSO regression and machine learning techniques were employed to construct a prognostic model, validated across multiple datasets and compared with existing models for its predictive accuracy.
The developed ERS-model categorizes BC patients into distinct risk groups with significant differences in clinical prognosis, confirmed by robust ROC, DCA, and KM analyses. The model forecasts survival rates with high precision, revealing distinct immune infiltration patterns and treatment responsiveness between risk groups. Notably, we discovered six druggable targets and validated Methotrexate and Gemcitabine as effective agents for high-risk BC treatment, based on their sensitivity profiles and potential for addressing the lack of active targets in BC.
Our study advances BC research by establishing a significant link between ERS and BC prognosis at both the molecular and cellular levels. By stratifying patients into risk-defined groups, we unveil disparities in immune cell infiltration and drug response, guiding personalized treatment. The identification of potential drug targets and therapeutic agents opens new avenues for targeted interventions, promising to enhance outcomes for high-risk BC patients and paving the way for personalized cancer therapy.
乳腺癌(BC)是女性死亡的主要原因,突显了改进治疗预测的迫切需求。开发精确的预后模型至关重要。内质网应激(ERS)在癌症中的作用表明其可能是 BC 发展和进展的关键因素,突出了精确预后模型对于制定针对性治疗策略的重要性。
通过综合分析 BC 中与 ERS 相关的基因表达,利用来自不同 BC 亚型的单细胞和批量测序数据,我们确定了 8 个关键的 ERS 相关基因。使用 LASSO 回归和机器学习技术构建预后模型,在多个数据集上进行验证,并与现有模型进行比较,以评估其预测准确性。
所开发的 ERS 模型将 BC 患者分为具有显著临床预后差异的不同风险组,通过稳健的 ROC、DCA 和 KM 分析得到证实。该模型能够高精度预测生存率,揭示风险组之间不同的免疫浸润模式和治疗反应。值得注意的是,我们发现了 6 个可药物靶向的靶点,并基于其敏感性特征和解决 BC 中缺乏有效靶点的潜力,验证了甲氨蝶呤和吉西他滨作为高危 BC 治疗的有效药物。
本研究通过在分子和细胞水平上建立 ERS 与 BC 预后之间的重要联系,推进了 BC 研究。通过将患者分层为风险定义的组,我们揭示了免疫细胞浸润和药物反应的差异,为个性化治疗提供指导。潜在药物靶点和治疗药物的鉴定为靶向干预开辟了新途径,有望提高高危 BC 患者的治疗效果,并为个性化癌症治疗铺平道路。