Clinical Medical College, Southwest Medical University, Luzhou, China.
School of Stomatology, Southwest Medical University, Luzhou, China.
Front Endocrinol (Lausanne). 2022 Dec 8;13:1056310. doi: 10.3389/fendo.2022.1056310. eCollection 2022.
Uveal melanoma (UVM) is the most common primary intraocular malignancy in adults and is highly metastatic, resulting in a poor patient prognosis. Sphingolipid metabolism plays an important role in tumor development, diagnosis, and prognosis. This study aimed to establish a reliable signature based on sphingolipid metabolism genes (SMGs), thus providing a new perspective for assessing immunotherapy response and prognosis in patients with UVM.
In this study, SMGs were used to classify UVM from the TCGA-UVM and GEO cohorts. Genes significantly associated with prognosis in UVM patients were screened using univariate cox regression analysis. The most significantly characterized genes were obtained by machine learning, and 4-SMGs prognosis signature was constructed by stepwise multifactorial cox. External validation was performed in the GSE84976 cohort. The level of immune infiltration of 4-SMGs in high- and low-risk patients was analyzed by platforms such as CIBERSORT. The prediction of 4-SMGs on immunotherapy and immune checkpoint blockade (ICB) response in UVM patients was assessed by ImmuCellAI and TIP portals.
4-SMGs were considered to be strongly associated with the prognosis of UVM and were good predictors of UVM prognosis. Multivariate analysis found that the model was an independent predictor of UVM, with patients in the low-risk group having higher overall survival than those in the high-risk group. The nomogram constructed from clinical characteristics and risk scores had good prognostic power. The high-risk group showed better results when receiving immunotherapy.
4-SMGs signature and nomogram showed excellent predictive performance and provided a new perspective for assessing pre-immune efficacy, which will facilitate future precision immuno-oncology studies.
葡萄膜黑色素瘤(UVM)是成人中最常见的原发性眼内恶性肿瘤,具有高度转移性,导致患者预后不良。鞘脂代谢在肿瘤的发生、诊断和预后中起着重要作用。本研究旨在建立基于鞘脂代谢基因(SMGs)的可靠特征,从而为评估 UVM 患者的免疫治疗反应和预后提供新的视角。
本研究使用 SMGs 将 TCGA-UVM 和 GEO 队列中的 UVM 进行分类。使用单因素 cox 回归分析筛选与 UVM 患者预后显著相关的基因。通过机器学习获得最具特征的基因,并通过逐步多因素 cox 构建 4-SMGs 预后特征。在 GSE84976 队列中进行外部验证。通过 CIBERSORT 等平台分析 4-SMGs 在高风险和低风险患者中的免疫浸润水平。通过 ImmuCellAI 和 TIP 门户评估 4-SMGs 对 UVM 患者免疫治疗和免疫检查点阻断(ICB)反应的预测。
4-SMGs 被认为与 UVM 的预后密切相关,是 UVM 预后的良好预测因子。多变量分析发现该模型是 UVM 的独立预测因子,低风险组患者的总生存率高于高风险组。从临床特征和风险评分构建的列线图具有良好的预后预测能力。高风险组在接受免疫治疗时效果更好。
4-SMGs 特征和列线图表现出优异的预测性能,为评估免疫前疗效提供了新的视角,将有助于未来的精准免疫肿瘤学研究。