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基于代谢途径的亚型分析揭示了弥漫性大 B 细胞淋巴瘤结局相关的独特微环境状态。

Metabolic pathway-based subtyping reveals distinct microenvironmental states associated with diffuse large B-cell lymphoma outcomes.

机构信息

National Key Laboratory of Druggability Evaluation and Systematic Translational Medicine and Department of Lymphoma, Key Laboratory of Cancer Prevention and Therapy, Tianjin Medical University Cancer Institute and Hospital, National Clinical Research Center for Cancer, Tianjin's Clinical Research Center for Cancer, The Sino-US Center for Lymphoma and Leukemia Research, Tianjin, China.

出版信息

Hematol Oncol. 2024 Jul;42(4):e3279. doi: 10.1002/hon.3279.

Abstract

Diffuse large B-cell lymphoma (DLBCL) is a biologically and clinically heterogeneous disease that requires personalized clinical treatment. Assigning patients to different risk categories and cytogenetic abnormality and genetic mutation groups has been widely applied for prognostic stratification of DLBCL. Increasing evidence has demonstrated that dysregulated metabolic processes contribute to the initiation and progression of DLBCL. Metabolic competition within the tumor microenvironment is also known to influence immune cell metabolism. However, metabolism- and immune-related stratification has not been established. Here, 1660 genes involved in 84 metabolic pathways were selected and tested to establish metabolic clusters (MECs) of DLBCL. MECs established based on independent lymphoma datasets distinguished different survival outcomes. The CIBERSORT algorithm and EcoTyper were applied to quantify the relative abundance of immune cell types and identify variation in cell states for 13 lineages comprising the tumor micro environment among different MECs, respectively. Functional characterization showed that MECs were an indicator of the immune microenvironment and correlated with distinctive mutational characteristics and oncogenic signaling pathways. The novel immune-related MECs exhibited promising clinical prognostic value and potential for informing DLBCL treatment decisions.

摘要

弥漫性大 B 细胞淋巴瘤(DLBCL)是一种生物学和临床异质性疾病,需要个性化的临床治疗。将患者分配到不同的风险类别、细胞遗传学异常和基因突变组中,已广泛应用于 DLBCL 的预后分层。越来越多的证据表明,代谢过程的失调有助于 DLBCL 的发生和进展。肿瘤微环境中的代谢竞争也被认为会影响免疫细胞的代谢。然而,尚未建立基于代谢和免疫相关的分层。在这里,选择了涉及 84 种代谢途径的 1660 个基因,以建立 DLBCL 的代谢聚类(MEC)。基于独立的淋巴瘤数据集建立的 MEC 区分了不同的生存结果。CIBERSORT 算法和 EcoTyper 分别用于定量分析 13 种肿瘤微环境谱系的免疫细胞类型的相对丰度,并识别不同 MEC 之间细胞状态的变化。功能特征表明,MEC 是免疫微环境的标志物,与独特的突变特征和致癌信号通路相关。新型免疫相关 MEC 具有有前途的临床预后价值,并有可能为 DLBCL 的治疗决策提供信息。

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