Machine learning-based identification of an immunotherapy-related signature to enhance outcomes and immunotherapy responses in melanoma

IF 5.7 2区 医学 Q1 IMMUNOLOGY Frontiers in Immunology Pub Date : 2024-09-18 DOI:10.3389/fimmu.2024.1451103
Zaidong Deng, Jie Liu, Yanxun V. Yu, Youngnam N. Jin
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Abstract

BackgroundImmunotherapy has revolutionized skin cutaneous melanoma treatment, but response variability due to tumor heterogeneity necessitates robust biomarkers for predicting immunotherapy response.MethodsWe used weighted gene co-expression network analysis (WGCNA), consensus clustering, and 10 machine learning algorithms to develop the immunotherapy-related gene model (ITRGM) signature. Multi-omics analyses included bulk and single-cell RNA sequencing of melanoma patients, mouse bulk RNA sequencing, and pathology sections of melanoma patients.ResultsWe identified 66 consensus immunotherapy prognostic genes (CITPGs) using WGCNA and differentially expressed genes (DEGs) from two melanoma cohorts. The CITPG-high group showed better prognosis and enriched immune activities. DEGs between CITPG-high and CITPG-low groups in the TCGA-SKCM cohort were analyzed in three additional melanoma cohorts using univariate Cox regression, resulting in 44 consensus genes. Using 101 machine learning algorithm combinations, we constructed the ITRGM signature based on seven model genes. The ITRGM outperformed 37 published signatures in predicting immunotherapy prognosis across the training cohort, three testing cohorts, and a meta-cohort. It effectively stratified patients into high-risk or low-risk groups for immunotherapy response. The low-risk group, with high levels of model genes, correlated with increased immune characteristics such as tumor mutation burden and immune cell infiltration, indicating immune-hot tumors with a better prognosis. The ITRGM’s relationship with the tumor immune microenvironment was further validated in our experiments using pathology sections with GBP5, an important model gene, and CD8 IHC analysis. The ITRGM also predicted better immunotherapy response in eight cohorts, including urothelial carcinoma and stomach adenocarcinoma, indicating broad applicability.ConclusionsThe ITRGM signature is a stable and robust predictor for stratifying melanoma patients into ‘immune-hot’ and ‘immune-cold’ tumors, enhancing prognosis and response to immunotherapy.
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基于机器学习识别免疫疗法相关特征,提高黑色素瘤的治疗效果和免疫疗法反应
背景免疫疗法彻底改变了皮肤黑色素瘤的治疗,但肿瘤异质性导致的反应变异需要强有力的生物标志物来预测免疫疗法反应。方法我们使用加权基因共表达网络分析(WGCNA)、共识聚类和10种机器学习算法来开发免疫疗法相关基因模型(ITRGM)特征。多组学分析包括黑色素瘤患者的批量和单细胞RNA测序、小鼠批量RNA测序以及黑色素瘤患者的病理切片。结果我们利用WGCNA和两个黑色素瘤队列中的差异表达基因(DEG)确定了66个共识免疫治疗预后基因(CITPG)。CITPG高的组预后更好,免疫活性更丰富。在另外三个黑色素瘤队列中使用单变量考克斯回归分析了TCGA-SKCM队列中CITPG高组和CITPG低组之间的DEGs,得出了44个共识基因。我们使用 101 种机器学习算法组合,在 7 个模型基因的基础上构建了 ITRGM 特征。在预测训练队列、三个测试队列和一个荟萃队列中的免疫疗法预后方面,ITRGM优于37个已发表的特征。它有效地将患者分为免疫疗法反应的高风险组和低风险组。低风险组的模型基因水平较高,与肿瘤突变负荷和免疫细胞浸润等免疫特征的增加相关,表明免疫热肿瘤的预后较好。在我们的实验中,使用带有重要模型基因 GBP5 的病理切片和 CD8 IHC 分析进一步验证了 ITRGM 与肿瘤免疫微环境的关系。结论ITRGM特征是将黑色素瘤患者分为 "免疫热 "和 "免疫冷 "肿瘤的稳定而可靠的预测指标,可改善预后和免疫治疗反应。
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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来源期刊
CiteScore
9.80
自引率
11.00%
发文量
7153
审稿时长
14 weeks
期刊介绍: Frontiers in Immunology is a leading journal in its field, publishing rigorously peer-reviewed research across basic, translational and clinical immunology. This multidisciplinary open-access journal is at the forefront of disseminating and communicating scientific knowledge and impactful discoveries to researchers, academics, clinicians and the public worldwide. Frontiers in Immunology is the official Journal of the International Union of Immunological Societies (IUIS). Encompassing the entire field of Immunology, this journal welcomes papers that investigate basic mechanisms of immune system development and function, with a particular emphasis given to the description of the clinical and immunological phenotype of human immune disorders, and on the definition of their molecular basis.
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