基于铜死亡调节基因模式的计算机分析的新型分子分型方案优化了肝细胞癌的生存预测和治疗

Novel Molecular Subtyping Scheme Based on In Silico Analysis of Cuproptosis Regulator Gene Patterns Optimizes Survival Prediction and Treatment of Hepatocellular Carcinoma.

作者信息

Jiang Heng, Chen Hao, Wang Yao, Qian Yeben

机构信息

Department of General Surgery, The First Affiliated Hospital of Anhui Medical University, Hefei 230022, China.

Department of Emergency Surgery, The First Affiliated Hospital of Anhui Medical University, Hefei 230022, China.

出版信息

J Clin Med. 2023 Sep 5;12(18):5767. doi: 10.3390/jcm12185767.

Abstract

BACKGROUND

The liver plays an important role in maintaining copper homeostasis. Copper ion accumulation was elevated in HCC tissue samples. Copper homeostasis is implicated in cancer cell proliferation and angiogenesis. The potential of copper homeostasis as a new theranostic biomarker for molecular imaging and the targeted therapy of HCC has been demonstrated. Recent studies have reported a novel copper-dependent nonapoptotic form of cell death called cuproptosis, strikingly different from other known forms of cell death. The correlation between cuproptosis and hepatocellular carcinoma (HCC) is not fully understood.

MATERIALS AND METHODS

The transcriptomic data of patients with HCC were retrieved from the Cancer Genome Atlas-Liver Hepatocellular Carcinoma (TCGA-LIHC) and were used as a discovery cohort to construct the prognosis model. The gene expression data of patients with HCC retrieved from the International Cancer Genome Consortium (ICGC) and Gene Expression Omnibus (GEO) databases were used as the validation cohort. The Least Absolute Shrinkage and Selection Operator (LASSO) regression analysis was used to construct the prognosis model. A principal component analysis (PCA) was used to evaluate the overall characteristics of cuproptosis regulator genes and obtain the PC1 and PC2 scores. Unsupervised clustering was performed using the ConsensusClusterPlus R package to identify the molecular subtypes of HCC. Cox regression analysis was performed to identify cuproptosis regulator genes that could predict the prognosis of patients with HCC. The receiver operating characteristics curve and Kaplan-Meier survival analysis were used to understand the role of hub genes in predicting the diagnosis and prognosis of patients, as well as the prognosis risk model. A weighted gene co-expression network analysis (WGCNA) was used for screening the cuproptosis subtype-related hub genes. The functional enrichment analysis was performed using Metascape. The 'glmnet' R package was used to perform the LASSO regression analysis, and the randomForest algorithm was performed using the 'randomForest' R package. The 'pRRophetic' R package was used to estimate the anticancer drug sensitivity based on the data retrieved from the Genomics of Drug Sensitivity in Cancer database. The nomogram was constructed using the 'rms' R package. Pearson's correlation analysis was used to analyze the correlations.

RESULTS

We constructed a six-gene signature prognosis model and a nomogram to predict the prognosis of patients with HCC. The Kaplan-Meier survival analysis revealed that patients with a high-risk score, which was predicted by the six-gene signature model, had poor prognoses (log-rank test < 0.001; HR = 1.83). The patients with HCC were grouped into three distinct cuproptosis subtypes (Cu-clusters A, B, and C) based on the expression pattern of cuproptosis regulator genes. The patients in Cu-cluster B had poor prognosis (log-rank test < 0.001), high genomic instability, and were not sensitive to conventional chemotherapeutic treatment compared to the patients in the other subtypes. Cancer cells in Cu-cluster B exhibited a higher degree of the senescence-associated secretory phenotype (SASP), a marker of cellular senescence. Three representative genes, , , and , were identified in patients in Cu-cluster B using WGCNA and the "randomForest" algorithm. A nomogram was constructed to screen patients in the Cu-cluster B subtype based on three genes: , , and .

CONCLUSION

Publicly available databases and various bioinformatics tools were used to study the heterogeneity of cuproptosis in patients with HCC. Three HCC subtypes were identified, with differences in the survival outcomes, genomic instability, senescence environment, and response to anticancer drugs. Further, three cuproptosis-related genes were identified, which could be used to design personalized therapeutic strategies for HCC.

摘要

背景

肝脏在维持铜稳态中发挥重要作用。肝癌组织样本中铜离子积累增加。铜稳态与癌细胞增殖和血管生成有关。铜稳态作为肝癌分子成像和靶向治疗的新型诊疗生物标志物的潜力已得到证实。最近的研究报道了一种新的铜依赖性非凋亡细胞死亡形式,称为铜死亡,与其他已知的细胞死亡形式显著不同。铜死亡与肝细胞癌(HCC)之间的相关性尚未完全了解。

材料和方法

从癌症基因组图谱-肝细胞癌(TCGA-LIHC)中检索肝癌患者的转录组数据,并用作发现队列来构建预后模型。从国际癌症基因组联盟(ICGC)和基因表达综合数据库(GEO)中检索的肝癌患者基因表达数据用作验证队列。使用最小绝对收缩和选择算子(LASSO)回归分析构建预后模型。主成分分析(PCA)用于评估铜死亡调节基因的总体特征并获得PC1和PC2分数。使用ConsensusClusterPlus R包进行无监督聚类以识别肝癌的分子亚型。进行Cox回归分析以识别可预测肝癌患者预后的铜死亡调节基因。使用受试者工作特征曲线和Kaplan-Meier生存分析来了解枢纽基因在预测患者诊断和预后以及预后风险模型中的作用。使用加权基因共表达网络分析(WGCNA)筛选与铜死亡亚型相关的枢纽基因。使用Metascape进行功能富集分析。使用“glmnet”R包进行LASSO回归分析,并使用“randomForest”R包执行随机森林算法。使用“pRRophetic”R包根据从癌症药物敏感性基因组学数据库中检索的数据估计抗癌药物敏感性。使用“rms”R包构建列线图。使用Pearson相关分析来分析相关性。

结果

我们构建了一个六基因特征预后模型和一个列线图来预测肝癌患者的预后。Kaplan-Meier生存分析显示,由六基因特征模型预测的高风险评分患者预后较差(对数秩检验<0.001;HR = 1.83)。根据铜死亡调节基因的表达模式,将肝癌患者分为三种不同的铜死亡亚型(铜簇A、B和C)。与其他亚型的患者相比,铜簇B中的患者预后较差(对数秩检验<0.001),基因组不稳定性高,并且对传统化疗不敏感。铜簇B中的癌细胞表现出更高程度的衰老相关分泌表型(SASP),这是细胞衰老的标志物。使用WGCNA和“随机森林”算法在铜簇B中的患者中鉴定出三个代表性基因。构建了一个列线图,基于三个基因:、和来筛选铜簇B亚型中的患者。

结论

利用公开可用的数据库和各种生物信息学工具研究了肝癌患者铜死亡的异质性。鉴定出三种肝癌亚型,在生存结果、基因组不稳定性、衰老环境和对抗癌药物的反应方面存在差异。此外,鉴定出三个与铜死亡相关的基因,可用于设计肝癌的个性化治疗策略。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9cf0/10531788/f5bbd1e27635/jcm-12-05767-g001.jpg

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