Jiangsu Breast Disease Center, The First Affiliated Hospital with Nanjing Medical University, Nanjing, China.
Oncol Res. 2023 Apr 10;31(2):157-167. doi: 10.32604/or.2023.027972. eCollection 2023.
Breast cancer has become the most common malignant tumor in the world. It is vital to discover novel prognostic biomarkers despite the fact that the majority of breast cancer patients have a good prognosis because of the high heterogeneity of breast cancer, which causes the disparity in prognosis. Recently, inflammatory-related genes have been proven to play an important role in the development and progression of breast cancer, so we set out to investigate the predictive usefulness of inflammatory-related genes in breast malignancies.
We assessed the connection between Inflammatory-Related Genes (IRGs) and breast cancer by studying the TCGA database. Following differential and univariate Cox regression analysis, prognosis-related differentially expressed inflammatory genes were estimated. The prognostic model was constructed through the Least Absolute Shrinkage and Selector Operation (LASSO) regression based on the IRGs. The accuracy of the prognostic model was then evaluated using the Kaplan-Meier and Receiver Operating Characteristic (ROC) curves. The nomogram model was established to predict the survival rate of breast cancer patients clinically. Based on the prognostic expression, we also looked at immune cell infiltration and the function of immune-related pathways. The CellMiner database was used to research drug sensitivity.
In this study, 7 IRGs were selected to construct a prognostic risk model. Further research revealed a negative relationship between the risk score and the prognosis of breast cancer patients. The ROC curve proved the accuracy of the prognostic model, and the nomogram accurately predicted survival rate. The scores of tumor-infiltrating immune cells and immune-related pathways were utilized to calculate the differences between the low- and high-risk groups, and then explored the relationship between drug susceptibility and the genes that were included in the model.
These findings contributed to a better understanding of the function of inflammatory-related genes in breast cancer, and the prognostic risk model provides a potentially promising prognostic strategy for breast cancer.
乳腺癌已成为全球最常见的恶性肿瘤。尽管大多数乳腺癌患者预后良好,但由于乳腺癌高度异质性导致预后存在差异,因此发现新的预后生物标志物至关重要。最近,炎症相关基因已被证明在乳腺癌的发生和发展中发挥重要作用,因此我们着手研究炎症相关基因在乳腺癌中的预测作用。
我们通过研究 TCGA 数据库来评估炎症相关基因(IRGs)与乳腺癌之间的关系。在进行差异和单因素 Cox 回归分析后,估计了与预后相关的差异表达炎症基因。基于 IRGs,采用最小绝对值收缩和选择算子(LASSO)回归构建预后模型。然后,通过 Kaplan-Meier 和Receiver Operating Characteristic(ROC)曲线评估预后模型的准确性。建立列线图模型以预测乳腺癌患者的临床生存率。基于预后表达,我们还研究了免疫细胞浸润和免疫相关途径的功能。使用 CellMiner 数据库研究药物敏感性。
在这项研究中,选择了 7 个 IRG 来构建预后风险模型。进一步的研究表明,风险评分与乳腺癌患者的预后呈负相关。ROC 曲线证明了预后模型的准确性,列线图准确预测了生存率。通过计算肿瘤浸润免疫细胞和免疫相关途径的评分,来比较低风险组和高风险组之间的差异,然后探讨药物敏感性与模型中包含的基因之间的关系。
这些发现有助于更好地了解炎症相关基因在乳腺癌中的功能,预后风险模型为乳腺癌提供了一种有前途的预后策略。