Luo Ruixiang, Huang Mengjun, Wang Yinhuai
Department of Urology, The Second Xiangya Hospital, Central South University, Changsha, Hunan 410011, China.
Evid Based Complement Alternat Med. 2021 Nov 22;2021:6894278. doi: 10.1155/2021/6894278. eCollection 2021.
Prostate cancer (PC) is one of the most critical cancers affecting men's health worldwide. The development of many cancers involves dysregulation or mutations in key transcription factors. This study established a transcription factor-based risk model to predict the prognosis of PC and potential therapeutic drugs.
In this study, RNA-sequencing data were downloaded and analyzed using The Cancer Genome Atlas dataset. A total of 145 genes related to the overall survival rate of PC patients were screened using the univariate Cox analysis. The Kdmist clustering method was used to classify prostate adenocarcinoma (PRAD), thereby determining the cluster related to the transcription factors. The support vector machine-recursive feature elimination method was used to identify genes related to the types of transcription factors and the key genes specifically upregulated or downregulated were screened. These genes were further analyzed using Lasso to establish a model. Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) were used for the functional analysis. The TIMER algorithm was used to quantify the abundance of immune cells in PRAD samples. The chemotherapy response of each GBM patient was predicted based on the public pharmacogenomic database, Genomics of Drug Sensitivity in Cancer (GDSC, http://www.cancerrxgene.org). The R package "pRRophetic" was applied to drug sensitivity (IC50) value prediction.
We screened 10 genes related to prognosis, including eight low-risk genes and two high-risk genes. The receiver operating characteristic (ROC) curve was 0.946. Patients in the high-risk score group had a poorer prognosis than those in the low-risk score group. The average area under the curve value of the model at different times was higher than 0.8. The risk score was an independent prognostic factor. Compared with the low-risk score group, early growth response-1 (, , , , , , , and expressions in the high-risk score group were decreased, while and expressions were increased. GO and KEGG analyses showed that prognosis was related to various cancer signaling pathways. The proportion of B_cell, T_cell_CD4, and macrophages in the high-risk score group was significantly higher than that in the low-risk score group. A total of 25 classic immune checkpoint genes were screened out to express abnormally high-risk scores, and there were significant differences. Thirty mutant genes were identified; in the high- and low-risk score groups, , , and had the highest mutation frequency, and their mutations were mainly missense mutations. A total of 36 potential drug candidates for the treatment of PC were screened and identified.
Ten genes of both high-and low-risk scores were associated with the prognosis of PC. PC prognosis may be related to immune disorders. , , and may be potential targets for the prognosis of PC.
前列腺癌(PC)是影响全球男性健康的最关键癌症之一。许多癌症的发展涉及关键转录因子的失调或突变。本研究建立了一种基于转录因子的风险模型,以预测PC的预后和潜在治疗药物。
在本研究中,使用癌症基因组图谱数据集下载并分析RNA测序数据。通过单变量Cox分析筛选出145个与PC患者总生存率相关的基因。使用Kdmist聚类方法对前列腺腺癌(PRAD)进行分类,从而确定与转录因子相关的聚类。使用支持向量机递归特征消除方法识别与转录因子类型相关的基因,并筛选出特异性上调或下调的关键基因。使用Lasso对这些基因进行进一步分析以建立模型。使用基因本体论(GO)和京都基因与基因组百科全书(KEGG)进行功能分析。使用TIMER算法量化PRAD样本中免疫细胞的丰度。基于公共药物基因组数据库“癌症药物敏感性基因组学”(GDSC,http://www.cancerrxgene.org)预测每个GBM患者的化疗反应。应用R包“pRRophetic”进行药物敏感性(IC50)值预测。
我们筛选出10个与预后相关的基因,包括8个低风险基因和2个高风险基因。受试者工作特征(ROC)曲线为0.946。高风险评分组患者的预后比低风险评分组患者差。模型在不同时间的平均曲线下面积值高于0.8。风险评分是一个独立的预后因素。与低风险评分组相比,高风险评分组中早期生长反应-1(EGR1)的表达降低,而CD274和PDCD1的表达增加。GO和KEGG分析表明,预后与各种癌症信号通路有关。高风险评分组中B细胞、T细胞CD4和巨噬细胞的比例显著高于低风险评分组。共筛选出25个经典免疫检查点基因表达异常高风险评分,且存在显著差异。鉴定出30个突变基因;在高风险和低风险评分组中,TP53、PIK3CA和PTEN的突变频率最高,且其突变主要为错义突变。共筛选并鉴定出36种治疗PC的潜在候选药物。
高风险和低风险评分共10个基因与PC的预后相关。PC预后可能与免疫紊乱有关。EGR1、CD274和PDCD1可能是PC预后的潜在靶点。