Department of Basic Medicine, Anhui Medical College, No. 632 of Furong Road, Shushan District, Hefei, 230601 Anhui, China.
Department of Urology, The First Affiliated Hospital of Anhui Medical University; Institute of Urology, Anhui Medical University; Anhui Province Key Laboratory of Genitourinary Diseases, Anhui Medical University, Hefei 230032, China.
Biomed Res Int. 2022 May 19;2022:8740408. doi: 10.1155/2022/8740408. eCollection 2022.
Adrenocortical carcinoma (ACC) is a rare and poor prognosis malignancy. Necroptosis is a special type of cell apoptosis, which is regulated in caspase-independent pathways and mainly induced through the activation of receptor-interacting protein kinase 1, receptor-interacting protein kinase 3, and mixed lineage kinase domain-like pseudokinase. A precise predictive tool based on necroptosis is needed to improve the level of diagnosis and treatment.
Four ACC cohorts were enrolled in this study. The Cancer Genome Atlas ACC (TCGA-ACC) cohort was used as the training cohort; three datasets (GSE19750, GSE33371, and GSE49278) from Gene Expression Omnibus (GEO) platform were combined as the GEO testing cohort after removing of batch effect. Forty-nine necroptosis-associated genes were obtained from a prior study and further filtered by least absolute shrinkage and selection operator Cox regression analysis; corresponding coefficients were used to calculate the necroptosis-associated gene score (NAGs). Patients in the TCGA-ACC cohort were equally divided into two groups with the mean value of NAGs. We investigated the associations between NAGs groups and clinicopathological feature distribution and overall survival (OS) in ACC, the molecular mechanisms, and the value of NAGs in therapy prediction. A nomogram risk model was established to quantify risk stratification for ACC patients. Finally, the results were confirmed in the GEO-combined cohort.
Patients in the TCGA-ACC cohort were divided into high and low NAGs groups. The high NAGs group had more fatal cases and advanced stage patients than the low NAGs group ( < 0.001, hazard ratio (HR) = 13.97, 95% confidence interval (95% CI): 4.168-46.844; survival rate: low NAGs, 7.69% vs. high NAGs, 61.53%). NAGs were validated to be negatively correlated with OS ( = -0.48, < 0.001) and act as an independent factor in ACC with high discriminative efficacy ( < 0.001, HR = 11.76, 95% CI: 2.86-48.42). In addition, a high predictive efficacy nomogram risk model was established combining NAGs with tumor stage. Higher mutation rates were observed in the high NAGs group, and the mutation of TP53 may lead to a high T cell infiltration level among the NAGs groups. Patients belonged to the high NAGs are more sensitive to the chemotherapy of cisplatin, gemcitabine, paclitaxel, and etoposide (all < 0.05). Ultimately, the same statistical algorithms were conducted in the GEO-combined cohort, and the crucial role of NAGs prediction value was further validated.
We constructed a necroptosis-associated gene signature, revealed the prognostic value between ACC and it, systematically explored the molecular alterations among patients with different NAGs, and manifested the value of drug sensitivity prediction in ACC.
肾上腺皮质癌(adrenocortical carcinoma,ACC)是一种罕见且预后不良的恶性肿瘤。细胞坏死是一种特殊的细胞凋亡类型,它通过非胱天蛋白酶途径调节,主要通过受体相互作用蛋白激酶 1、受体相互作用蛋白激酶 3 和混合谱系激酶结构域样伪激酶的激活来诱导。需要基于细胞坏死的精确预测工具来提高诊断和治疗水平。
本研究纳入了四个 ACC 队列。癌症基因组图谱 ACC(TCGA-ACC)队列被用作训练队列;三个来自基因表达综合数据库(GEO)平台的数据集(GSE19750、GSE33371 和 GSE49278)在去除批次效应后被合并作为 GEO 测试队列。从先前的研究中获得了 49 个与细胞坏死相关的基因,并通过最小绝对收缩和选择算子 Cox 回归分析进一步筛选;相应的系数用于计算与细胞坏死相关的基因评分(NAGs)。TCGA-ACC 队列中的患者被平均分为两组,以 NAGs 的平均值为界。我们研究了 NAGs 组与 ACC 临床病理特征分布和总生存期(OS)之间的关系、分子机制以及 NAGs 在治疗预测中的价值。建立了列线图风险模型来量化 ACC 患者的风险分层。最后,在 GEO 合并队列中进行了验证。
TCGA-ACC 队列中的患者被分为高和低 NAGs 组。高 NAGs 组的致命病例和晚期患者多于低 NAGs 组(<0.001,风险比(HR)=13.97,95%置信区间(95%CI):4.168-46.844;生存率:低 NAGs,7.69% vs. 高 NAGs,61.53%)。NAGs 被验证与 OS 呈负相关(=-0.48,<0.001),并且在 ACC 中是独立的预后因素(<0.001,HR=11.76,95%CI:2.86-48.42)。此外,还建立了一个结合 NAGs 和肿瘤分期的高预测效能列线图风险模型。高 NAGs 组观察到更高的突变率,TP53 的突变可能导致 NAGs 组中 T 细胞浸润水平升高。属于高 NAGs 组的患者对顺铂、吉西他滨、紫杉醇和依托泊苷的化疗更敏感(均<0.05)。最终,在 GEO 合并队列中进行了相同的统计算法,进一步验证了 NAGs 预测价值的关键作用。
我们构建了一个与细胞坏死相关的基因特征,揭示了 ACC 之间的预后价值,系统地探索了不同 NAGs 患者之间的分子改变,并在 ACC 中表现出药物敏感性预测的价值。