根据泛素化蛋白酶体基因对肺鳞癌患者进行临床相关分层,实现 3P 医疗方法

IF 6.5 2区 医学 Q1 Medicine Epma Journal Pub Date : 2024-03-04 DOI:10.1007/s13167-024-00352-w
Jingru Yang, Serge Yannick Ouedraogo, Jingjing Wang, Zhijun Li, Xiaoxia Feng, Zhen Ye, Shu Zheng, Na Li, Xianquan Zhan
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引用次数: 0

摘要

相关性蛋白酶体是调节蛋白质命运和消除错误折叠蛋白质的重要机制,在细胞过程中发挥着重要作用。就肺癌而言,蛋白酶体的调控功能与疾病的病理生理学密切相关,揭示了细胞内的多重联系。因此,以蛋白酶体抑制剂为手段,研究其在癌变和转移过程中的潜在通路,对于深入了解其分子机制、发现新的治疗靶点以改善其治疗效果,以及在预测、预防和个性化医学(PPPM;3P 医学)框架内建立有效的生物标记物以用于肺鳞癌的患者分层、预测性诊断、预后评估和个性化治疗至关重要。方法本研究确定了肺鳞癌(LUSC)中差异表达的蛋白酶体基因(DEPGs),并通过卡普兰-梅耶分析和ROC曲线验证了基因特征。该研究利用 WGCNA 分析确定了蛋白酶体共表达基因模块及其与免疫系统的相互作用。NMF分析根据蛋白酶体基因表达模式划分了不同的LUSC亚型,而ssGSEA分析则量化了免疫基因组的丰度,并对LUSC样本中的免疫亚型进行了分类。此外,该研究还考察了不同风险评分组、NMF 群组和免疫群组的临床病理属性、免疫检查点、免疫评分、免疫细胞组成和突变状态之间的相关性。结果该研究利用 DEPGs 为 LUSC 建立了一个 11 种蛋白酶体基因特征预后模型,该模型将样本分为高风险组和低风险组,两组样本的总生存率差异显著。NMF分析确定了与总生存期相关的六个不同的LUSC群。此外,ssGSEA分析根据具有临床意义的免疫细胞浸润丰度将LUSC样本分为四种免疫亚型。在高风险和低风险评分组之间共鉴定出145个DEGs,这些DEGs具有显著的生物学效应。此外,研究还发现PSMD11依赖于泛素-蛋白酶体系统的降解,从而促进了LUSC的进展。该研究强调了蛋白酶体在 LUSC 过程中的关键作用,如药物敏感性、免疫微环境和突变状态。这些数据将有助于对 LUSC 患者进行临床相关的分层,以采用个性化的 3P 医疗方法。此外,我们还建议将泛素化蛋白酶体系统应用于多层次诊断中,包括多组学、液体活检、慢性炎症和转移性疾病的预测和靶向预防,以及线粒体健康相关的生物标记物,以促进葡京线上投注平台3PM实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Clinically relevant stratification of lung squamous carcinoma patients based on ubiquitinated proteasome genes for 3P medical approach

Relevance

The proteasome is a crucial mechanism that regulates protein fate and eliminates misfolded proteins, playing a significant role in cellular processes. In the context of lung cancer, the proteasome’s regulatory function is closely associated with the disease’s pathophysiology, revealing multiple connections within the cell. Therefore, studying proteasome inhibitors as a means to identify potential pathways in carcinogenesis and metastatic progression is crucial in in-depth insight into its molecular mechanism and discovery of new therapeutic target to improve its therapy, and establishing effective biomarkers for patient stratification, predictive diagnosis, prognostic assessment, and personalized treatment for lung squamous carcinoma in the framework of predictive, preventive, and personalized medicine (PPPM; 3P medicine).

Methods

This study identified differentially expressed proteasome genes (DEPGs) in lung squamous carcinoma (LUSC) and developed a gene signature validated through Kaplan–Meier analysis and ROC curves. The study used WGCNA analysis to identify proteasome co-expression gene modules and their interactions with the immune system. NMF analysis delineated distinct LUSC subtypes based on proteasome gene expression patterns, while ssGSEA analysis quantified immune gene-set abundance and classified immune subtypes within LUSC samples. Furthermore, the study examined correlations between clinicopathological attributes, immune checkpoints, immune scores, immune cell composition, and mutation status across different risk score groups, NMF clusters, and immunity clusters.

Results

This study utilized DEPGs to develop an eleven-proteasome gene-signature prognostic model for LUSC, which divided samples into high-risk and low-risk groups with significant overall survival differences. NMF analysis identified six distinct LUSC clusters associated with overall survival. Additionally, ssGSEA analysis classified LUSC samples into four immune subtypes based on the abundance of immune cell infiltration with clinical relevance. A total of 145 DEGs were identified between high-risk and low-risk score groups, which had significant biological effects. Moreover, PSMD11 was found to promote LUSC progression by depending on the ubiquitin–proteasome system for degradation.

Conclusions

Ubiquitinated proteasome genes were effective in developing a prognostic model for LUSC patients. The study emphasized the critical role of proteasomes in LUSC processes, such as drug sensitivity, immune microenvironment, and mutation status. These data will contribute to the clinically relevant stratification of LUSC patients for personalized 3P medical approach. Further, we also recommend the application of the ubiquitinated proteasome system in multi-level diagnostics including multi-omics, liquid biopsy, prediction and targeted prevention of chronic inflammation and metastatic disease, and mitochondrial health-related biomarkers, for LUSC 3PM practice.

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来源期刊
Epma Journal
Epma Journal Medicine-Biochemistry (medical)
CiteScore
11.30
自引率
23.10%
发文量
0
期刊介绍: PMA Journal is a journal of predictive, preventive and personalized medicine (PPPM). The journal provides expert viewpoints and research on medical innovations and advanced healthcare using predictive diagnostics, targeted preventive measures and personalized patient treatments. The journal is indexed by PubMed, Embase and Scopus.
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