Department of Gynecology and Obstetrics, Xijing Hospital, Fourth Military Medical University, 710032, Shaanxi Xi'an, China.
Dokl Biochem Biophys. 2023 Jun;510(1):110-122. doi: 10.1134/S1607672923600082. Epub 2023 Aug 15.
Metabolism-associated genes (MAGs) are important regulators of tumor progression and can affect a variety of physiological processes. In this study, we focused on the relationship between MAGs and Ovarian cancer (OC) prognosis.
Metabolism-related genes were extracted from the Cancer Genome Atlas (TCGA) database. Through univariate COX and lasso regression models, a dynamic risk model based on MAGs was established. Compared with other clinical factors, demonstrated the ability of the model to predict the prognosis of patients with OC. The clinical samples were used to verify the expression of these MAGs.
A metabolism-associated gene signature was constructed by LASSO Cox regression analysis in OC, which was composed of 3-MAGs (PTGIS, AOC3, and IDO1). The signature was used to classify the OC patients into high-risk and low-risk groups. The overall survival of the low-risk group was significantly better than that of the high-risk group. The analysis of the therapeutic effect of bevacizumab showed that bevacizumab was not conducive to improving the prognosis of the low-risk group.
We constructed a prognostic model of MAGs in OC, which can be used to predict the prognosis of OC patients and may have a good guiding significance in the individualized treatment of patients.
代谢相关基因(MAGs)是肿瘤进展的重要调节因子,可影响多种生理过程。本研究聚焦于 MAGs 与卵巢癌(OC)预后的关系。
从癌症基因组图谱(TCGA)数据库中提取代谢相关基因。通过单变量 COX 和lasso 回归模型,建立了基于 MAGs 的动态风险模型。与其他临床因素相比,该模型能够更好地预测 OC 患者的预后。利用临床样本验证这些 MAGs 的表达。
通过 OC 的 LASSO Cox 回归分析构建了一个代谢相关基因特征,该特征由 3 个 MAGs(PTGIS、AOC3 和 IDO1)组成。该特征可将 OC 患者分为高危和低危组。低危组的总生存期明显优于高危组。贝伐珠单抗治疗效果分析表明,贝伐珠单抗不利于改善低危组的预后。
我们构建了一个 OC 中 MAGs 的预后模型,可用于预测 OC 患者的预后,在患者个体化治疗中可能具有良好的指导意义。