Li Zefeng, Xu Qiuyu, Xiao Fengxu, Cui Yipeng, Jiang Jue, Zhou Qi, Yan Jiangwei, Sun Yu, Li Miao
Department of Medical Ultrasound, The Second Affiliated Hospital, Xi'an Jiaotong University, 157 Xiwu Road, Xi'an, 710004, China.
Key Laboratory of National Health Commission for Forensic Sciences, Xi'an Jiaotong University Health Science Center, 76 Yanta West Road, Xi'an, 710061, China.
Sci Rep. 2025 Jan 3;15(1):677. doi: 10.1038/s41598-024-80728-0.
While ultrasonography effectively diagnoses Hashimoto's thyroiditis (HT), exploring its transcriptomic landscape could reveal valuable insights into disease mechanisms. This study aimed to identify HT-associated RNA signatures and investigate their potential for enhanced molecular characterization. Samples comprising 31 HT patients and 30 healthy controls underwent RNA sequencing of peripheral blood. Differential expression analysis identified transcriptomic features, which were integrated using multi-omics factor analysis. Pathway enrichment, co-expression, and regulatory network analyses were performed. A novel machine-learning model was developed for HT molecular characterization using stacking techniques. HT patients exhibited increased thyroid volume, elevated tissue hardness, and higher antibody levels despite being in the early subclinical stage. Analysis identified 79 HT-associated transcriptomic features (3 mRNA, 6 miRNA, 64 lncRNA, 6 circRNA). Co-expression (77 nodes, 266 edges) and regulatory (18 nodes, 45 edges) networks revealed significant hub genes and modules associated with HT. Enrichment analysis highlighted dysregulation in immune system, cell adhesion and migration, and RNA/protein regulation pathways. The novel stacking-model achieved 95% accuracy and 97% AUC for HT molecular characterization. This study demonstrates the value of transcriptome analysis in uncovering HT-associated signatures, providing insights into molecular changes and potentially guiding future research on disease mechanisms and therapeutic strategies.
虽然超声检查能有效诊断桥本甲状腺炎(HT),但探索其转录组图谱可能会揭示有关疾病机制的宝贵见解。本研究旨在识别与HT相关的RNA特征,并研究它们在增强分子特征描述方面的潜力。对31例HT患者和30例健康对照的样本进行外周血RNA测序。差异表达分析确定了转录组特征,并使用多组学因子分析进行整合。进行了通路富集、共表达和调控网络分析。使用堆叠技术开发了一种用于HT分子特征描述的新型机器学习模型。尽管处于早期亚临床阶段,HT患者的甲状腺体积增大、组织硬度升高且抗体水平更高。分析确定了79个与HT相关的转录组特征(3个mRNA、6个miRNA、64个lncRNA、6个circRNA)。共表达(77个节点,266条边)和调控(18个节点,45条边)网络揭示了与HT相关的重要枢纽基因和模块。富集分析突出了免疫系统、细胞黏附和迁移以及RNA/蛋白质调控通路的失调。新型堆叠模型在HT分子特征描述方面的准确率达到95%,AUC为97%。本研究证明了转录组分析在揭示与HT相关的特征、提供分子变化见解以及潜在指导未来疾病机制和治疗策略研究方面的价值。