Integrative multi-omics analysis for identifying novel therapeutic targets and predicting immunotherapy efficacy in lung adenocarcinoma.

IF 4.6 Q1 ONCOLOGY
癌症耐药(英文) Pub Date : 2025-01-14 eCollection Date: 2025-01-01 DOI:10.20517/cdr.2024.91
Zilu Chen, Kun Mei, Foxing Tan, Yuheng Zhou, Haolin Du, Min Wang, Renjun Gu, Yan Huang
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引用次数: 0

Abstract

Aim: Lung adenocarcinoma (LUAD), the most prevalent subtype of non-small cell lung cancer (NSCLC), presents significant clinical challenges due to its high mortality and limited therapeutic options. The molecular heterogeneity and the development of therapeutic resistance further complicate treatment, underscoring the need for a more comprehensive understanding of its cellular and molecular characteristics. This study sought to delineate novel cellular subpopulations and molecular subtypes of LUAD, identify critical biomarkers, and explore potential therapeutic targets to enhance treatment efficacy and patient prognosis. Methods: An integrative multi-omics approach was employed to incorporate single-cell RNA sequencing (scRNA-seq), bulk transcriptomic analysis, and genome-wide association study (GWAS) data from multiple LUAD patient cohorts. Advanced computational approaches, including Bayesian deconvolution and machine learning algorithms, were used to comprehensively characterize the tumor microenvironment, classify LUAD subtypes, and develop a robust prognostic model. Results: Our analysis identified eleven distinct cellular subpopulations within LUAD, with epithelial cells predominating and exhibiting high mutation frequencies in Tumor Protein 53 (TP53) and Titin (TTN) genes. Two molecular subtypes of LUAD [consensus subtype (CS)1 and CS2] were identified, each showing distinct immune landscapes and clinical outcomes. The CS2 subtype, characterized by increased immune cell infiltration, demonstrated a more favorable prognosis and higher sensitivity to immunotherapy. Furthermore, a multi-omics-driven machine learning signature (MOMLS) identified ribonucleotide reductase M1 (RRM1) as a critical biomarker associated with chemotherapy response. Based on this model, several potential therapeutic agents targeting different subtypes were proposed. Conclusion: This study presents a comprehensive multi-omics framework for understanding the molecular complexity of LUAD, providing insights into cellular heterogeneity, molecular subtypes, and potential therapeutic targets. Differential sensitivity to immunotherapy among various cellular subpopulations was identified, paving the way for future immunotherapy-focused research.

综合多组学分析用于确定肺腺癌的新型治疗靶点并预测免疫疗法的疗效。
肺腺癌(LUAD)是非小细胞肺癌(NSCLC)中最常见的亚型,由于其高死亡率和有限的治疗选择而面临重大的临床挑战。分子异质性和治疗耐药的发展进一步使治疗复杂化,强调需要更全面地了解其细胞和分子特征。本研究旨在描述LUAD的新细胞亚群和分子亚型,鉴定关键生物标志物,探索潜在的治疗靶点,以提高治疗效果和患者预后。方法:采用综合多组学方法整合来自多个LUAD患者队列的单细胞RNA测序(scRNA-seq),大量转录组学分析和全基因组关联研究(GWAS)数据。先进的计算方法,包括贝叶斯反卷积和机器学习算法,用于全面表征肿瘤微环境,分类LUAD亚型,并建立稳健的预后模型。结果:我们的分析确定了LUAD中11个不同的细胞亚群,上皮细胞占主导地位,并且在肿瘤蛋白53 (TP53)和Titin (TTN)基因中表现出高突变频率。确定了LUAD的两种分子亚型[共识亚型(CS)1和CS2],每种亚型都表现出不同的免疫景观和临床结果。CS2亚型以免疫细胞浸润增加为特征,预后较好,对免疫治疗的敏感性较高。此外,多组学驱动的机器学习签名(MOMLS)鉴定出核糖核苷酸还原酶M1 (RRM1)是与化疗反应相关的关键生物标志物。基于该模型,提出了几种针对不同亚型的潜在治疗药物。结论:本研究为了解LUAD的分子复杂性提供了一个全面的多组学框架,提供了对细胞异质性、分子亚型和潜在治疗靶点的见解。确定了不同细胞亚群对免疫治疗的差异敏感性,为未来的免疫治疗研究铺平了道路。
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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CiteScore
6.60
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