Qian Yichun, Chen Wei, Chen Xinyuan, Cheng Shuai, Liu Fangzhou
Department of Head and Neck Surgery, Jiangsu Cancer Hospital & Jiangsu Institute of Cancer Research & The Affiliated Cancer Hospital of Nanjing Medical University, No. 42 Baiziting, Xuanwu District, Nanjing, 210009, Jiangsu, China.
Discov Oncol. 2025 Aug 6;16(1):1486. doi: 10.1007/s12672-025-03348-8.
Thyroid cancer pathogenesis involves complex interactions between genetic predisposition and alterations in the tumor microenvironment. The causal relationships between inflammatory gene variants and thyroid cancer risk remain poorly understood, as does the cellular heterogeneity within the tumor ecosystem. This study aimed to investigate the causal associations between inflammatory protein genes and thyroid cancer risk, and to characterize the cellular composition and differentiation trajectories within the thyroid cancer microenvironment.
We employed a two-pronged approach combining Mendelian randomization (MR) analysis and single-cell RNA sequencing (scRNA-seq). MR analyses were conducted using genetic variants associated with the expression of inflammatory proteins (4EBP1_EIF4EBP1, ADA_ADA, ARTN_ARTN, AXIN1_AXIN1, and Beta-NGF_NGF) as instrumental variables to assess their causal effects on thyroid cancer risk. Multiple MR methods (MR Egger, weighted median, inverse variance weighted, simple mode, and weighted mode) were used to enhance robustness. For the cellular characterization, scRNA-seq was performed on thyroid cancer samples, followed by dimensionality reduction, clustering analysis, cell type annotation, and pseudotime trajectory inference.
MR analyses revealed a significant positive causal association between AXIN1_AXIN1 expression and thyroid cancer risk (weighted median: OR = 1.396, p < 0.05; inverse variance weighted: OR = 1.291, p < 0.05), while ADA_ADA showed protective effects (simple mode: OR = 0.731, p < 0.05). The scRNA-seq analysis identified six major cell populations within the thyroid cancer microenvironment: epithelial cells, T cells, natural killer cells, fibroblasts, stromal cells, and macrophages. Pseudotime analysis revealed distinct differentiation trajectories with natural killer cells and macrophages appearing in early pseudotime, while epithelial cells and fibroblasts demonstrated multiple developmental states. Gene expression profiling identified four distinct cellular states with unique molecular signatures, including immune/inflammatory, stromal, and vascular components.
Our findings suggest that inflammatory protein genes, particularly AXIN1, have causal effects on thyroid cancer risk, providing potential targets for risk prediction and intervention.
甲状腺癌的发病机制涉及遗传易感性与肿瘤微环境改变之间的复杂相互作用。炎症基因变异与甲状腺癌风险之间的因果关系仍知之甚少,肿瘤生态系统中的细胞异质性也是如此。本研究旨在探讨炎症蛋白基因与甲状腺癌风险之间的因果关联,并描述甲状腺癌微环境中的细胞组成和分化轨迹。
我们采用了双管齐下的方法,将孟德尔随机化(MR)分析与单细胞RNA测序(scRNA-seq)相结合。使用与炎症蛋白(4EBP1_EIF4EBP1、ADA_ADA、ARTN_ARTN、AXIN1_AXIN1和Beta-NGF_NGF)表达相关的基因变异作为工具变量进行MR分析,以评估它们对甲状腺癌风险的因果效应。使用多种MR方法(MR Egger、加权中位数、逆方差加权、简单模式和加权模式)来增强稳健性。对于细胞表征,对甲状腺癌样本进行scRNA-seq,随后进行降维、聚类分析、细胞类型注释和伪时间轨迹推断。
MR分析显示AXIN1_AXIN1表达与甲状腺癌风险之间存在显著的正因果关联(加权中位数:OR = 1.396,p < 0.05;逆方差加权:OR = 1.291,p < 0.05),而ADA_ADA显示出保护作用(简单模式:OR = 0.731,p < 0.05)。scRNA-seq分析确定了甲状腺癌微环境中的六个主要细胞群体:上皮细胞、T细胞、自然杀伤细胞、成纤维细胞、基质细胞和巨噬细胞。伪时间分析揭示了不同的分化轨迹,自然杀伤细胞和巨噬细胞出现在早期伪时间,而上皮细胞和成纤维细胞表现出多种发育状态。基因表达谱分析确定了四种具有独特分子特征的不同细胞状态,包括免疫/炎症、基质和血管成分。
我们的研究结果表明,炎症蛋白基因,特别是AXIN1,对甲状腺癌风险有因果效应,为风险预测和干预提供了潜在靶点。