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通过综合生物信息学分析鉴定并验证用于卵巢癌预后的9基因特征

Identification and validation of a 9-gene signature for the prognosis of ovarian cancer by integrated bioinformatical analysis.

作者信息

Chen Siping, Yang Man, Yang Haikun, Tang Qiaofei, Gu Chunming, Wei Weifeng

机构信息

Department of Reproductive Medicine, Meizhou People's Hospital, Meizhou, China.

Department of Gynecology, Meizhou People's Hospital, Meizhou, China.

出版信息

Ann Transl Med. 2022 Oct;10(19):1059. doi: 10.21037/atm-22-3752.

Abstract

BACKGROUND

Ovarian cancer (OC) is the most lethal malignancy among gynecological cancers worldwide. It is urgent to identify effective biomarkers for the prognosis and diagnosis of OC.

METHODS

We analyzed 4 OC Gene Expression Omnibus (GEO) data sets to detect differentially expressed genes (DEGs). To explore potential correlations between the gene sets and clinical features, we conducted weighted gene co-expression network analysis (WGCNA). Hub genes were identified from the key modules by univariate Cox regression, least absolute shrinkage and selection operator (LASSO), and multivariate Cox regression analyses and risk scores were calculated based on the expressions of the hub genes. Univariate and multivariate Cox regression analyses were conducted to determine the values of the diagnoses for OC patients. We also determined the predictive value of the long non-coding RNA (lncRNA) score in response to immunotherapy and chemotherapeutic drugs.

RESULTS

DEGs were analyzed between the OC and normal ovarian tissues and prognostic modules were identified by a WGCNA. Nine hub genes chose from the prognostic modules were determined the prognostic values in OC. The risk scores were calculated based on the expression of hub genes, and patients with high-risk scores had poor survival. Univariate and multivariate Cox regression analyses showed that the risk score was an independent prognostic factor for OC. Additionally, the levels of hub genes were also found to be related to immune cell infiltration in OC microenvironments. An immunotherapy cohort showed that high-risk scores enhanced the response to anti-programmed death-ligand 1 (PD-L1) immunotherapy and was remarkably correlated with the inflamed immune phenotype, and had significant therapeutic advantages and clinical benefits. Further, patients with high-risk scores were more sensitive to midostaurin.

CONCLUSIONS

We identified the risk score including protein phosphatase, Mg2+/Mn2+ dependent 1K (PPM1K), protein phosphatase 1 catalytic subunit alpha (PPP1CA), exostosin glycosyltransferase 1 (EXT1), RAB GTPase activating protein 1 like (RABGAP1L), mitotic arrest deficient 2 like 1 (MAD2L1), xeroderma pigmentosum complementation group C (XPC), Egl-9 family hypoxia inducible factor 3 (EGLN3), cyclin D1 binding protein 1 (CCNDBP1), and zinc finger protein 25 (ZNF25), and validated their prognostic and predicted values for OC.

摘要

背景

卵巢癌(OC)是全球妇科癌症中最致命的恶性肿瘤。识别用于OC预后和诊断的有效生物标志物迫在眉睫。

方法

我们分析了4个OC基因表达综合数据库(GEO)数据集以检测差异表达基因(DEG)。为了探索基因集与临床特征之间的潜在相关性,我们进行了加权基因共表达网络分析(WGCNA)。通过单变量Cox回归、最小绝对收缩和选择算子(LASSO)以及多变量Cox回归分析从关键模块中识别出枢纽基因,并根据枢纽基因的表达计算风险评分。进行单变量和多变量Cox回归分析以确定OC患者诊断的价值。我们还确定了长链非编码RNA(lncRNA)评分对免疫治疗和化疗药物反应的预测价值。

结果

分析了OC与正常卵巢组织之间的DEG,并通过WGCNA识别出预后模块。从预后模块中选择的9个枢纽基因被确定为OC中的预后价值。根据枢纽基因的表达计算风险评分,高风险评分的患者生存率较差。单变量和多变量Cox回归分析表明,风险评分是OC的独立预后因素。此外,还发现枢纽基因的水平与OC微环境中的免疫细胞浸润有关。一个免疫治疗队列显示,高风险评分增强了对抗程序性死亡配体1(PD-L1)免疫治疗的反应,并且与炎症免疫表型显著相关,具有显著的治疗优势和临床益处。此外,高风险评分的患者对米哚妥林更敏感。

结论

我们识别出包括蛋白磷酸酶Mg2+/Mn2+依赖性1K(PPM1K)、蛋白磷酸酶1催化亚基α(PPP1CA)、外切糖苷酶1(EXT1)、RAB GTP酶激活蛋白1样(RABGAP1L)、有丝分裂阻滞缺陷2样1(MAD2L1)、着色性干皮病互补组C(XPC)、Egl-9家族缺氧诱导因子3(EGLN3)、细胞周期蛋白D1结合蛋白1(CCNDBP1)和锌指蛋白25(ZNF25)的风险评分,并验证了它们对OC的预后和预测价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8d1f/9622505/b9bf0caf7bf6/atm-10-19-1059-f1.jpg

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