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 May 1;15:1369289. doi: 10.3389/fimmu.2024.1369289. eCollection 2024.
This study aims to identify precise biomarkers for breast cancer to improve patient outcomes, addressing the limitations of traditional staging in predicting treatment responses.
Our analysis encompassed data from over 7,000 breast cancer patients across 14 datasets, which included in-house clinical data and single-cell data from 8 patients (totaling 43,766 cells). We utilized an integrative approach, applying 10 machine learning algorithms in 54 unique combinations to analyze 100 existing breast cancer signatures. Immunohistochemistry assays were performed for empirical validation. The study also investigated potential immunotherapies and chemotherapies.
Our research identified five consistent glutamine metabolic reprogramming (GMR)-related genes from multi-center cohorts, forming the foundation of a novel GMR-model. This model demonstrated superior accuracy in predicting recurrence and mortality risks compared to existing clinical and molecular features. Patients classified as high-risk by the model exhibited poorer outcomes. IHC validation in 30 patients reinforced these findings, suggesting the model's broad applicability. Intriguingly, the model indicates a differential therapeutic response: low-risk patients may benefit more from immunotherapy, whereas high-risk patients showed sensitivity to specific chemotherapies like BI-2536 and ispinesib.
The GMR-model marks a significant leap forward in breast cancer prognosis and the personalization of treatment strategies, offering vital insights for the effective management of diverse breast cancer patient populations.
本研究旨在确定乳腺癌的精确生物标志物,以改善患者的预后,解决传统分期在预测治疗反应方面的局限性。
我们的分析涵盖了来自 14 个数据集的超过 7000 名乳腺癌患者的数据,其中包括内部临床数据和 8 名患者的单细胞数据(共 43766 个细胞)。我们采用了综合方法,应用 10 种机器学习算法在 54 种独特组合中分析了 100 种现有的乳腺癌特征。进行了免疫组织化学检测以进行实证验证。该研究还调查了潜在的免疫疗法和化学疗法。
我们的研究从多中心队列中确定了五个一致的谷氨酰胺代谢重编程(GMR)相关基因,为新的 GMR 模型奠定了基础。与现有临床和分子特征相比,该模型在预测复发和死亡率风险方面具有更高的准确性。模型分类为高危的患者预后较差。对 30 名患者的 IHC 验证证实了这些发现,表明该模型具有广泛的适用性。有趣的是,该模型表明存在不同的治疗反应:低危患者可能从免疫疗法中获益更多,而高危患者对 BI-2536 和异长春花碱等特定化疗药物敏感。
GMR 模型标志着乳腺癌预后和治疗策略个性化的重大飞跃,为有效管理不同乳腺癌患者群体提供了重要的见解。