在3P医学背景下,基于101组合机器学习计算框架对透明细胞肾细胞癌免疫原性细胞死亡相关特征进行多组学鉴定。

Multi-omics identification of an immunogenic cell death-related signature for clear cell renal cell carcinoma in the context of 3P medicine and based on a 101-combination machine learning computational framework.

作者信息

Liu Jinsong, Shi Yanjia, Zhang Yuxin

机构信息

School of Medicine & Holistic Integrative Medicine, Nanjing University of Chinese Medicine, Nanjing, 210023 China.

出版信息

EPMA J. 2023 May 31;14(2):275-305. doi: 10.1007/s13167-023-00327-3. eCollection 2023 Jun.

Abstract

BACKGROUND

Clear cell renal cell carcinoma (ccRCC) is a prevalent urological malignancy associated with a high mortality rate. The lack of a reliable prognostic biomarker undermines the efficacy of its predictive, preventive, and personalized medicine (PPPM/3PM) approach. Immunogenic cell death (ICD) is a specific type of programmed cell death that is tightly associated with anti-cancer immunity. However, the role of ICD in ccRCC remains unclear.

METHODS

Based on AddModuleScore, single-sample gene set enrichment analysis (ssGSEA), and weighted gene co-expression network (WGCNA) analyses, ICD-related genes were screened at both the single-cell and bulk transcriptome levels. We developed a novel machine learning framework that incorporated 10 machine learning algorithms and their 101 combinations to construct a consensus immunogenic cell death-related signature (ICDRS). ICDRS was evaluated in the training, internal validation, and external validation sets. An ICDRS-integrated nomogram was constructed to provide a quantitative tool for predicting prognosis in clinical practice. Multi-omics analysis was performed, including genome, single-cell transcriptome, and bulk transcriptome, to gain a more comprehensive understanding of the prognosis signature. We evaluated the response of risk subgroups to immunotherapy and screened drugs that target specific risk subgroups for personalized medicine. Finally, the expression of ICD-related genes was validated by qRT-PCR.

RESULTS

We identified 131 ICD-related genes at both the single-cell and bulk transcriptome levels, of which 39 were associated with overall survival (OS). A consensus ICDRS was constructed based on a 101-combination machine learning computational framework, demonstrating outstanding performance in predicting prognosis and clinical translation. ICDRS can also be used to predict the occurrence, development, and metastasis of ccRCC. Multivariate analysis verified it as an independent prognostic factor for OS, progression-free survival (PFS), and disease-specific survival (DSS) of ccRCC. The ICDRS-integrated nomogram provided a quantitative tool in clinical practice. Moreover, we observed distinct biological functions, mutation landscapes, and immune cell infiltration in the tumor microenvironment between the high- and low-risk groups. Notably, the immunophenoscore (IPS) score showed a significant difference between risk subgroups, suggesting a better response to immunotherapy in the high-risk group. Potential drugs targeting specific risk subgroups were also identified.

CONCLUSION

Our study constructed an immunogenic cell death-related signature that can serve as a promising tool for prognosis prediction, targeted prevention, and personalized medicine in ccRCC. Incorporating ICD into the PPPM framework will provide a unique opportunity for clinical intelligence and new management approaches.

SUPPLEMENTARY INFORMATION

The online version contains supplementary material available at 10.1007/s13167-023-00327-3.

摘要

背景

透明细胞肾细胞癌(ccRCC)是一种常见的泌尿系统恶性肿瘤,死亡率高。缺乏可靠的预后生物标志物削弱了其预测、预防和个性化医疗(PPPM/3PM)方法的有效性。免疫原性细胞死亡(ICD)是一种与抗癌免疫密切相关的特定程序性细胞死亡类型。然而,ICD在ccRCC中的作用仍不清楚。

方法

基于AddModuleScore、单样本基因集富集分析(ssGSEA)和加权基因共表达网络(WGCNA)分析,在单细胞和批量转录组水平筛选ICD相关基因。我们开发了一种新颖的机器学习框架,该框架结合了10种机器学习算法及其101种组合,以构建一个共识免疫原性细胞死亡相关特征(ICDRS)。在训练集、内部验证集和外部验证集中对ICDRS进行评估。构建了一个整合ICDRS的列线图,为临床实践中的预后预测提供定量工具。进行了多组学分析,包括基因组、单细胞转录组和批量转录组,以更全面地了解预后特征。我们评估了风险亚组对免疫治疗的反应,并筛选了针对特定风险亚组的药物用于个性化医疗。最后,通过qRT-PCR验证了ICD相关基因的表达。

结果

我们在单细胞和批量转录组水平上鉴定了131个ICD相关基因,其中39个与总生存期(OS)相关。基于101种组合的机器学习计算框架构建了一个共识ICDRS,在预测预后和临床转化方面表现出色。ICDRS还可用于预测ccRCC的发生、发展和转移。多变量分析证实它是ccRCC的OS、无进展生存期(PFS)和疾病特异性生存期(DSS)的独立预后因素。整合ICDRS的列线图在临床实践中提供了定量工具。此外,我们观察到高风险组和低风险组之间在肿瘤微环境中的生物学功能、突变图谱和免疫细胞浸润存在明显差异。值得注意的是,免疫表型评分(IPS)在风险亚组之间存在显著差异,表明高风险组对免疫治疗的反应更好。还确定了针对特定风险亚组的潜在药物。

结论

我们的研究构建了一个免疫原性细胞死亡相关特征,可作为ccRCC预后预测、靶向预防和个性化医疗的有前景工具。将ICD纳入PPPM框架将为临床智能和新的管理方法提供独特机会。

补充信息

在线版本包含可在10.1007/s13167-023-00327-3获取的补充材料。

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