Department of Breast, Jiangmen Central Hospital, Jiangmen, Guangdong, China.
The Sixth Affiliated Hospital of Jinan University(Dongguan Eastern Central Hospital), Dongguan, China.
BMC Cancer. 2024 Apr 1;24(1):402. doi: 10.1186/s12885-024-12182-0.
Among the most common forms of cancer worldwide, breast cancer posed a serious threat to women. Recent research revealed a lack of oxygen, known as hypoxia, was crucial in forming breast cancer. This research aimed to create a robust signature with hypoxia-related genes to predict the prognosis of breast cancer patients. The function of hypoxia genes was further studied through cell line experiments.
In the bioinformatic part, transcriptome and clinical information of breast cancer were obtained from The Cancer Genome Atlas(TCGA). Hypoxia-related genes were downloaded from the Genecards Platform. Differentially expressed hypoxia-related genes (DEHRGs) were identified. The TCGA filtered data was evenly split, ensuring a 1:1 distribution between the training and testing sets. Prognostic-related DEHRGs were identified through Cox regression. The signature was established through the training set. Then, it was validated using the test set and external validation set GSE131769 from Gene Expression Omnibus (GEO). The nomogram was created by incorporating the signature and clinicopathological characteristics. The predictive value of the nomogram was evaluated by C-index and receiver operating characteristiccurve. Immune microenvironment and mutation burden were also examined. In the experiment part, the function of the two most significant hypoxia-related genes were further explored by cell-line experiments.
In the bioinformatic part, 141 up-regulated and 157 down-regulated DEHRGs were screened out. A prognostic signature was constructed containing nine hypoxia genes (ALOX15B, CA9, CD24, CHEK1, FOXM1, HOTAIR, KCNJ11, NEDD9, PSME2) in the training set. Low-risk patients exhibited a much more favorable prognosis than higher-risk ones (P < 0.001). The signature was double-validated in the test set and GSE131769 (P = 0.006 and P = 0.001). The nomogram showed excellent predictive value with 1-year OS AUC: 0.788, 3-year OS AUC: 0.783, and 5-year OS AUC: 0.817. Patients in the high-risk group had a higher tumor mutation burden when compared to the low-risk group. In the experiment part, the down-regulation of PSME2 inhibited cell growth ability and clone formation capability of breast cancer cells, while the down-regulation of KCNJ11 did not have any functions.
Based on 9 DEHRGs, a reliable signature was established through the bioinformatic method. It could accurately predict the prognosis of breast cancer patients. Cell line experiment indicated that PSME2 played a protective role. Summarily, we provided a new insight to predict the prognosis of breast cancer by hypoxia-related genes.
在全球最常见的癌症类型中,乳腺癌对女性构成了严重威胁。最近的研究表明,缺氧(称为缺氧)是形成乳腺癌的关键因素。本研究旨在创建一个包含与缺氧相关基因的稳健特征,以预测乳腺癌患者的预后。通过细胞系实验进一步研究了缺氧基因的功能。
在生物信息学部分,从癌症基因组图谱(TCGA)中获取乳腺癌的转录组和临床信息。从 Genecards 平台下载与缺氧相关的基因。鉴定差异表达的与缺氧相关的基因(DEHRGs)。对 TCGA 过滤数据进行均匀分割,确保训练集和测试集之间 1:1 的分布。通过 Cox 回归识别预后相关的 DEHRGs。通过训练集建立特征。然后,使用测试集和来自基因表达综合数据库(GEO)的外部验证集 GSE131769 进行验证。通过纳入特征和临床病理特征创建列线图。通过 C 指数和接收器操作特征曲线评估列线图的预测价值。还检查了免疫微环境和突变负担。在实验部分,通过细胞系实验进一步探索了两个最重要的与缺氧相关基因的功能。
在生物信息学部分,筛选出 141 个上调和 157 个下调的 DEHRGs。在训练集中构建了一个包含 9 个与缺氧相关基因(ALOX15B、CA9、CD24、CHEK1、FOXM1、HOTAIR、KCNJ11、NEDD9、PSME2)的预后特征。低风险患者的预后明显优于高风险患者(P<0.001)。该特征在测试集和 GSE131769 中得到了双重验证(P=0.006 和 P=0.001)。列线图具有出色的预测价值,1 年 OS AUC:0.788、3 年 OS AUC:0.783 和 5 年 OS AUC:0.817。与低风险组相比,高风险组的肿瘤突变负担更高。在实验部分,PSME2 的下调抑制了乳腺癌细胞的生长能力和克隆形成能力,而 KCNJ11 的下调则没有任何功能。
通过生物信息学方法,基于 9 个 DEHRGs 建立了一个可靠的特征,可以准确预测乳腺癌患者的预后。细胞系实验表明 PSME2 发挥了保护作用。总之,我们通过与缺氧相关的基因为预测乳腺癌的预后提供了新的见解。