Zhu Yu-Ting, Wu Shuang-Yue, Yang Song, Ying Jie, Tian Lu, Xu Hong-Liang, Zhang He-Ping, Yao Hui, Zhang Wei-Yu, Jin Qin-Qin, Yang Yin-Ting, Jiang Xi-Ya, Zhang Nan, Yao Shun, Zhou Shu-Guang, Chen Guo
Department of Gynecology, Maternal and Child Health Hospital Affiliated to Anhui Medical University, Hefei, Anhui 230001, China.
Department of Gynecology, Anhui Province Maternity and Child Healthcare Hospital, Hefei, Anhui 230001, China.
Heliyon. 2023 Jul 26;9(8):e18708. doi: 10.1016/j.heliyon.2023.e18708. eCollection 2023 Aug.
Ovarian serous cystadenocarcinoma (OSC) is the most prevalent histological subtype of ovarian cancer (OV) and presents a serious threat to women's health. Anoikis is an essential component of metastasis, and tumor cells can get beyond it to become viable. The impact of anoikis on OSC, however, has only been the topic of a few studies.
The mRNA sequencing and clinical information of OSC came from The Cancer Genome Atlas Target Genotype-Tissue Expression (TCGA TARGET GTEx) dataset. Anoikis-related genes (ARGs) were collected by Harmonizome and GeneCards websites. Centered on these ARGs, we used unsupervised consensus clustering to explore potential tumor typing and filtered hub ARGs to create a model of predictive signature for OSC patients. Furthermore, we presented clinical specialists with a novel nomogram based on ARGs, revealing the underlying clinical relevance of this signature. Finally, we explored the immune microenvironment among various risk groups.
We identified 24 ARGs associated with the prognosis of OSC and classified OSC patients into three subtypes, and the subtype with the best prognosis was more enriched in immune-related pathways. Seven ARGs (ARHGEF7, NOTCH4, CASP2, SKP2, PAK4, LCK, CCDC80) were chosen to establish a risk model and a nomogram that can provide practical clinical decision support. Risk scores were found to be an independent and significant prognostic factor in OSC patients. The CIBERSORTx result revealed an inflammatory microenvironment is different for risk groups, and the proportion of immune infiltrates of Macrophages M1 is negatively correlated with risk score ( = -0.21, < 0.05). Ultimately, quantitative reverse transcription polymerase chain reaction (RT-PCR) was utilized to validate the expression of the seven pivotal ARGs.
In this study, based on seven ARGs, a risk model and nomogram established can be used for risk stratification and prediction of survival outcomes in patients with OSC, providing a reliable reference for individualized therapy of OSC patients.
卵巢浆液性囊腺癌(OSC)是卵巢癌(OV)最常见的组织学亚型,对女性健康构成严重威胁。失巢凋亡是转移的重要组成部分,而肿瘤细胞能够克服失巢凋亡从而存活。然而,失巢凋亡对OSC的影响仅在少数研究中有所涉及。
OSC的mRNA测序和临床信息来自癌症基因组图谱目标基因型-组织表达(TCGA TARGET GTEx)数据集。通过Harmonizome和GeneCards网站收集失巢凋亡相关基因(ARGs)。以这些ARGs为中心,我们使用无监督一致性聚类来探索潜在的肿瘤分型,并筛选出核心ARGs以创建OSC患者的预测特征模型。此外,我们基于ARGs为临床专家提供了一种新的列线图,揭示了该特征的潜在临床相关性。最后,我们探索了不同风险组之间的免疫微环境。
我们鉴定出24个与OSC预后相关的ARGs,并将OSC患者分为三个亚型,预后最佳的亚型在免疫相关通路中富集程度更高。选择7个ARGs(ARHGEF7、NOTCH4、CASP2、SKP2、PAK4、LCK、CCDC80)建立风险模型和列线图,可为临床决策提供实际支持。发现风险评分是OSC患者独立且显著的预后因素。CIBERSORTx结果显示不同风险组的炎症微环境不同,巨噬细胞M1的免疫浸润比例与风险评分呈负相关(r = -0.21,P < 0.05)。最终,利用定量逆转录聚合酶链反应(RT-PCR)验证了7个关键ARGs的表达。
在本研究中,基于7个ARGs建立的风险模型和列线图可用于OSC患者的风险分层和生存结局预测,为OSC患者的个体化治疗提供可靠参考。