Identification of a novel ADCC-related gene signature for predicting the prognosis and therapy response in lung adenocarcinoma.

IF 4.8 3区 医学 Q2 CELL BIOLOGY
Inflammation Research Pub Date : 2024-05-01 Epub Date: 2024-03-20 DOI:10.1007/s00011-024-01871-y
Liangyu Zhang, Xun Zhang, Maohao Guan, Jianshen Zeng, Fengqiang Yu, Fancai Lai
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引用次数: 0

Abstract

Background: Previous studies have largely neglected the role of ADCC in LUAD, and no study has systematically compiled ADCC-associated genes to create prognostic signatures.

Methods: In this study, 1564 LUAD patients, 2057 NSCLC patients, and more than 5000 patients with various cancer types from diverse cohorts were included. R package ConsensusClusterPlus was utilized to classify patients into different subtypes. A number of machine-learning algorithms were used to construct the ADCCRS. GSVA and ClusterProfiler were used for enrichment analyses, and IOBR was used to quantify immune cell infiltration level. GISTIC2.0 and maftools were used to analyze the CNV and SNV data. The Oncopredict package was used to predict drug information based on the GDSC1. Three immunotherapy cohorts were used to evaluate patient response to immunotherapy. The Seurat package was used to process single-cell data, the AUCell package was used to calculate cells' geneset activity scores, and the Scissor algorithm was used to identify ADCCRS-associated cells.

Results: Through unsupervised clustering, two distinct subtypes of LUAD were identified, each exhibiting distinct clinical characteristics. The ADCCRS, consisted of 16 genes, was constructed by integrated machine-learning methods. The prognostic power of ADCCRS was validated in 28 independent datasets. Further, ADCCRS shows better predictive abilities than 102 previously published signatures in predicting LUAD patients' survival. A nomogram incorporating ADCCRS and clinical features was constructed, demonstrating high predictive performance. ADCCRS positively correlates with patients' gene mutation, and integrated analysis of bulk and single-cell transcriptome data revealed the association of ADCCRS with TME modulators. Cells representing high-ADCCRS phenotype exhibited more malignant features. LUAD patients with high ADCCRS levels exhibited sensitivity to chemotherapy and targeted therapy, while displaying resistance to immunotherapy. In pan-cancer analysis, ADCCRS still exhibited significant prognostic value and was found to be a risk factor for most cancer patients.

Conclusions: ADCCRS offers a critical prognostic insight for patients with LUAD, shedding light on the tumor microenvironment and forecasting treatment responsiveness.

Abstract Image

鉴定用于预测肺腺癌预后和治疗反应的新型 ADCC 相关基因特征。
背景:以往的研究在很大程度上忽视了ADCC在LUAD中的作用:以往的研究在很大程度上忽视了ADCC在LUAD中的作用,也没有研究系统地整理ADCC相关基因以创建预后特征:本研究纳入了 1564 例 LUAD 患者、2057 例 NSCLC 患者以及来自不同队列的 5000 多例不同癌症类型的患者。利用R软件包ConsensusClusterPlus将患者分为不同的亚型。一些机器学习算法被用于构建 ADCCRS。GSVA和ClusterProfiler用于富集分析,IOBR用于量化免疫细胞浸润水平。GISTIC2.0 和 maftools 用于分析 CNV 和 SNV 数据。Oncopredict 软件包用于根据 GDSC1 预测药物信息。三个免疫疗法队列用于评估患者对免疫疗法的反应。Seurat软件包用于处理单细胞数据,AUCell软件包用于计算细胞的基因组活性得分,Scissor算法用于识别ADCCRS相关细胞:结果:通过无监督聚类,确定了LUAD的两种不同亚型,每种亚型都表现出不同的临床特征。综合机器学习方法构建了由16个基因组成的ADCCRS。在 28 个独立数据集中验证了 ADCCRS 的预后能力。此外,ADCCRS在预测LUAD患者生存率方面的预测能力优于之前发表的102个特征。结合 ADCCRS 和临床特征构建的提名图显示了很高的预测能力。ADCCRS与患者的基因突变呈正相关,对大体和单细胞转录组数据的综合分析表明了ADCCRS与TME调节因子的关联。代表高ADCCRS表型的细胞表现出更多恶性特征。ADCCRS水平高的LUAD患者对化疗和靶向治疗敏感,而对免疫疗法有抵抗力。在泛癌症分析中,ADCCRS仍具有重要的预后价值,是大多数癌症患者的风险因素:ADCCRS为LUAD患者的预后提供了重要依据,揭示了肿瘤微环境并预测了治疗反应性。
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来源期刊
Inflammation Research
Inflammation Research 医学-免疫学
CiteScore
9.90
自引率
1.50%
发文量
134
审稿时长
3-8 weeks
期刊介绍: Inflammation Research (IR) publishes peer-reviewed papers on all aspects of inflammation and related fields including histopathology, immunological mechanisms, gene expression, mediators, experimental models, clinical investigations and the effect of drugs. Related fields are broadly defined and include for instance, allergy and asthma, shock, pain, joint damage, skin disease as well as clinical trials of relevant drugs.
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