Lei Chuqi, Li Yuan, Yang Huaiyu, Zhang Ke, Lu Wei, Wang Nianchang, Xuan Lixue
Department of Breast Surgical Oncology, National Cancer Center/National Clinical Research Center for Cancer/Cancer Hosipital, Beijing, China.
Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.
Front Mol Biosci. 2024 May 1;11:1394585. doi: 10.3389/fmolb.2024.1394585. eCollection 2024.
Breast cancer is highly heterogeneous, presenting challenges in prognostic assessment. Developing a universally applicable prognostic model could simplify clinical decision-making. This study aims to develop and validate a novel breast cancer prognosis model using coagulation-related genes with broad clinical applicability.
A total of 203 genes related to coagulation were obtained from the KEGG database, and the mRNA data of 1,099 tumor tissue samples and 572 samples of normal tissue were retrieved from the TCGA-BRCA cohort and GTEx databases. The R package "limma" was utilized to detect variations in gene expression related to coagulation between the malignancies and normal tissue. A model was constructed in the TCGA cohort through a multivariable Cox regression analysis, followed by validation using the GSE42568 dataset as the testing set. Constructing a nomogram incorporating clinical factors to enhance the predictive capacity of the model. Utilizing the ESTIMATE algorithm to investigate the immune infiltration levels in groups with deferent risk. Performing drug sensitivity analysis using the "oncoPredict" package.
A risk model consisting of six coagulation-associated genes (SERPINA1, SERPINF2, C1S, CFB, RASGRP1, and TLN2) was created and successfully tested for validation. Identified were 6 genes that serve as protective factors in the model's development. Kaplan-Meier curves revealed a worse prognosis in the high-risk group compared to the low-risk group. The ROC analysis showed that the model accurately forecasted the overall survival (OS) of breast cancer patients at 1, 3, and 5 years. Nomogram accompanied by calibration curves can also provide better guidance for clinical decision-making. The low-risk group is more likely to respond well to immunotherapy, whereas the high-risk group may show improved responses to Gemcitabine treatment. Furthermore, individuals in distinct risk categories displayed different responses to various medications within the identical therapeutic category.
We established a breast cancer prognostic model incorporating six coagulation-associated genes and explored its clinical utility. This model offers valuable insights for clinical decision-making and drug selection in breast cancer patients, contributing to personalized and precise treatment advancements.
乳腺癌具有高度异质性,给预后评估带来挑战。开发一个普遍适用的预后模型可以简化临床决策。本研究旨在利用具有广泛临床适用性的凝血相关基因开发并验证一种新型乳腺癌预后模型。
从KEGG数据库中获取总共203个与凝血相关的基因,并从TCGA-BRCA队列和GTEx数据库中检索1099个肿瘤组织样本和572个正常组织样本的mRNA数据。使用R包“limma”检测恶性肿瘤与正常组织之间与凝血相关的基因表达变化。通过多变量Cox回归分析在TCGA队列中构建模型,随后使用GSE42568数据集作为测试集进行验证。构建包含临床因素的列线图以增强模型的预测能力。利用ESTIMATE算法研究不同风险组中的免疫浸润水平。使用“oncoPredict”包进行药物敏感性分析。
创建了一个由六个凝血相关基因(SERPINA1、SERPINF2、C1S、CFB、RASGRP1和TLN2)组成的风险模型,并成功进行了验证测试。确定了6个在模型开发中起保护作用的基因。Kaplan-Meier曲线显示高风险组的预后比低风险组更差。ROC分析表明,该模型准确预测了乳腺癌患者1年、3年和5年的总生存期(OS)。伴有校准曲线的列线图也可为临床决策提供更好的指导。低风险组对免疫治疗的反应可能更好,而高风险组可能对吉西他滨治疗反应更佳。此外,不同风险类别的个体对同一治疗类别中的各种药物表现出不同的反应。
我们建立了一个包含六个凝血相关基因的乳腺癌预后模型,并探索了其临床应用。该模型为乳腺癌患者的临床决策和药物选择提供了有价值的见解,有助于个性化和精准治疗的进展。