Qu GenYi, Liu Lu, Yi Lai, Tang Cheng, Yang Guang, Chen Dan, Xu Yong
Department of Urology, ZhuZhou central Hospital, ZhuZhou, China.
Department of Ultrasound, ZhuZhou central Hospital, ZhuZhou, China.
Front Genet. 2023 Jan 4;13:1040421. doi: 10.3389/fgene.2022.1040421. eCollection 2022.
In order to predict the prognosis in patients with clear cell renal cell carcinoma (ccRCC) so as to understand cancer lipid metabolism and sensitivity to immune-targeting drugs, model algorithms were used to establish a risk coefficient model of long non-coding RNAs (lncRNAs) associated with lipid metabolism. The transcriptome data were retrieved from TCGA, and lncRNAs associated with lipid metabolism were obtained through Pearson correlation and differential expression analyses. Differentially expressed lipid metabolism-related lncRNAs and lipid metabolism-related lncRNA pairs were obtained using the R language software. The minimum absolute shrinkage method and the selector operation regression method were used to construct the model and draw the receiver operator characteristic curve. High-risk patients were differentiated from low-risk patients through the cut-off value, and the correlation analyses of the high-risk subgroup and low-risk subgroup were performed. This research discovered that 25 pairs of lncRNAs were associated with the lipid metabolism of ccRCC, and 12 of these pairs were utilized to build the model. In combination with clinical data, the areas under the 1-, 3- and 5-year survival curves of ccRCC patients were 0.809, 0.764 and 0.792, separately. The cut-off value was used to perform subgroup analysis. The results showed that high-risk patients had poor prognosis. The results of Cox multivariate regressive analyses revealed that age and risk score were independent prediction factors of ccRCC prognosis. In addition, immune cell infiltration, the levels of gene expression at immune checkpoints, and high-risk patients more susceptible to sunitinib-targeted treatment were assessed by the risk model. Our team identified new prognostic markers of ccRCC and established risk models that could assess the prognosis of ccRCC patients and help determine which type of patients were more susceptible to sunitinib. These discoveries are vital for the optimization of risk stratification and personalized management.
为了预测透明细胞肾细胞癌(ccRCC)患者的预后,以了解癌症脂质代谢及对免疫靶向药物的敏感性,采用模型算法建立了与脂质代谢相关的长链非编码RNA(lncRNA)风险系数模型。从TCGA检索转录组数据,通过Pearson相关性分析和差异表达分析获得与脂质代谢相关的lncRNA。使用R语言软件获得差异表达的脂质代谢相关lncRNA和脂质代谢相关lncRNA对。采用最小绝对收缩法和选择算子回归法构建模型并绘制受试者工作特征曲线。通过临界值区分高风险患者和低风险患者,并对高风险亚组和低风险亚组进行相关性分析。本研究发现25对lncRNA与ccRCC的脂质代谢相关,其中12对用于构建模型。结合临床数据,ccRCC患者1年、3年和5年生存曲线下面积分别为0.809、0.764和0.792。用临界值进行亚组分析。结果显示高风险患者预后较差。Cox多因素回归分析结果显示年龄和风险评分是ccRCC预后的独立预测因素。此外,通过风险模型评估免疫细胞浸润、免疫检查点基因表达水平以及高风险患者对舒尼替尼靶向治疗更敏感的情况。我们团队确定了ccRCC新的预后标志物,并建立了可评估ccRCC患者预后并有助于确定哪些类型患者对舒尼替尼更敏感的风险模型。这些发现对于优化风险分层和个性化管理至关重要。