Peng Shansen, Xie Zhouzhou, Jiang Huiming, Zhang Guihao, Chen Nanhui
Meizhou Clinical Institute of Shantou University Medical College, Meizhou, China.
Department of Urology, Meizhou People's Hospital, Meizhou Academy of Medical Sciences, Meizhou, China.
Front Genet. 2024 Jul 25;15:1447139. doi: 10.3389/fgene.2024.1447139. eCollection 2024.
Renal cell carcinoma (RCC) is the most prevalent type of malignant kidney tumor in adults, with clear cell renal cell carcinoma (ccRCC) comprising about 75% of all cases. The SETD2 gene, which is involved in the modification of histone proteins, is often found to have alterations in ccRCC. Yet, our understanding of how these SETD2 mutations affect ccRCC characteristics and behavior within the tumor microenvironment is still not fully understood.
We conducted a detailed analysis of single-cell RNA sequencing (scRNA-seq) data from ccRCC. First, the data was preprocessed using the Python package, "scanpy." High variability genes were pinpointed through Pearson's correlation coefficient. Dimensionality reduction and clustering identification were performed using Principal Component Analysis (PCA) and the Leiden algorithm. Malignant cell identification was conducted with the "InferCNV" R package, while cell trajectories and intercellular communication were depicted using the Python packages "VIA" and "cellphoneDB." We then employed the R package "Deseq2" to determine differentially expressed genes (DEGs) between groups. Using high-dimensional weighted gene correlation network analysis (hdWGCNA), co-expression modules were identified. We intersected these modules with DEGs to establish prognostic models through univariate Cox and the least absolute shrinkage and selection operator (LASSO) method.
We identified 69 and 53 distinctive cell clusters, respectively. These were classified further into 12 unique cell types. This analysis highlighted the presence of an abnormal tumor sub-cluster (MT + group), identified by high mitochondrial-encoded protein gene expression and an indication of unfavorable prognosis. Investigation of cellular interactions spotlighted significant interactions between the MT + group and endothelial cells, macrophaes. In addition, we developed a prognostic model based on six characteristic genes. Notably, risk scores derived from these genes correlated significantly with various clinical features. Finally, a nomogram model was established to facilitate more accurate outcome prediction, incorporating four independent risk factors.
Our findings provide insight into the crucial transcriptomic characteristics of ccRCC associated with SETD2 mutation. We discovered that this mutation-induced subcluster could stimulate M2 polarization in macrophages, suggesting a heightened propensity for metastasis. Moreover, our prognostic model demonstrated effectiveness in forecasting overall survival for ccRCC patients, thus presenting a valuable clinical tool.
肾细胞癌(RCC)是成人中最常见的恶性肾肿瘤类型,其中透明细胞肾细胞癌(ccRCC)约占所有病例的75%。参与组蛋白修饰的SETD2基因在ccRCC中经常发生改变。然而,我们对这些SETD2突变如何影响ccRCC在肿瘤微环境中的特征和行为仍未完全了解。
我们对ccRCC的单细胞RNA测序(scRNA-seq)数据进行了详细分析。首先,使用Python包“scanpy”对数据进行预处理。通过皮尔逊相关系数确定高变异性基因。使用主成分分析(PCA)和莱顿算法进行降维和聚类识别。使用“InferCNV”R包进行恶性细胞识别,同时使用Python包“VIA”和“cellphoneDB”描绘细胞轨迹和细胞间通讯。然后,我们使用R包“Deseq2”确定组间差异表达基因(DEG)。使用高维加权基因共表达网络分析(hdWGCNA)识别共表达模块。我们将这些模块与DEG进行交叉,通过单变量Cox和最小绝对收缩和选择算子(LASSO)方法建立预后模型。
我们分别识别出69个和53个独特的细胞簇。这些细胞簇进一步分为12种独特的细胞类型。该分析突出显示了一个异常肿瘤亚簇(MT +组)的存在,其通过高线粒体编码蛋白基因表达得以识别,且提示预后不良。细胞间相互作用的研究突出了MT +组与内皮细胞、巨噬细胞之间的显著相互作用。此外,我们基于六个特征基因开发了一个预后模型。值得注意的是,源自这些基因的风险评分与各种临床特征显著相关。最后,建立了一个列线图模型,纳入四个独立风险因素,以促进更准确的预后预测。
我们的研究结果为与SETD2突变相关的ccRCC的关键转录组特征提供了见解。我们发现这种突变诱导的亚簇可刺激巨噬细胞中的M2极化,提示转移倾向增加。此外,我们的预后模型在预测ccRCC患者的总生存期方面显示出有效性,从而提供了一种有价值的临床工具。