Liu Wei, Zhu Junkan, Wu Zhen, Yin Yongxiang, Wu Qiao, Wu Yiming, Zheng Jiaojiao, Wang Cong, Chen Hongyan, Qazi Talal Jamil, Wu Jun, Zhang Yuqing, Liu Houbao, Yang Jingmin, Lu Daru, Zhang Xumin, Ai Zhilong
Department of Surgery (Thyroid & Breast), Zhongshan Hospital, Fudan University, Shanghai, China.
School of Basic Medical Sciences, Fudan University, Shanghai, China.
Front Oncol. 2023 Sep 19;13:1269751. doi: 10.3389/fonc.2023.1269751. eCollection 2023.
The overdiagnosing of papillary thyroid carcinoma (PTC) in China necessitates the development of an evidence-based diagnosis and prognosis strategy in line with precision medicine. A landscape of PTC in Chinese cohorts is needed to provide comprehensiveness.
6 paired PTC samples were employed for whole-exome sequencing, RNA sequencing, and data-dependent acquisition mass spectrum analysis. Weighted gene co-expression network analysis and protein-protein interactions networks were used to screen for hub genes. Moreover, we verified the hub genes' diagnostic and prognostic potential using online databases. Logistic regression was employed to construct a diagnostic model, and we evaluated its efficacy and specificity based on TCGA-THCA and GEO datasets.
The basic multiomics landscape of PTC among local patients were drawn. The similarities and differences were compared between the Chinese cohort and TCGA-THCA cohorts, including the identification of PNPLA5 as a driver gene in addition to BRAF mutation. Besides, we found 572 differentially expressed genes and 79 differentially expressed proteins. Through integrative analysis, we identified 17 hub genes for prognosis and diagnosis of PTC. Four of these genes, ABR, AHNAK2, GPX1, and TPO, were used to construct a diagnostic model with high accuracy, explicitly targeting PTC (AUC=0.969/0.959 in training/test sets).
Multiomics analysis of the Chinese cohort demonstrated significant distinctions compared to TCGA-THCA cohorts, highlighting the unique genetic characteristics of Chinese individuals with PTC. The novel biomarkers, holding potential for diagnosis and prognosis of PTC, were identified. Furthermore, these biomarkers provide a valuable tool for precise medicine, especially for immunotherapeutic or nanomedicine based cancer therapy.
中国甲状腺乳头状癌(PTC)的过度诊断使得有必要制定符合精准医学的循证诊断和预后策略。需要了解中国人群中PTC的全貌以提供全面性。
采用6对PTC样本进行全外显子组测序、RNA测序和数据依赖采集质谱分析。使用加权基因共表达网络分析和蛋白质-蛋白质相互作用网络筛选枢纽基因。此外,我们利用在线数据库验证了枢纽基因的诊断和预后潜力。采用逻辑回归构建诊断模型,并基于TCGA-THCA和GEO数据集评估其有效性和特异性。
绘制了本地患者中PTC的基本多组学图谱。比较了中国队列与TCGA-THCA队列之间的异同,包括除BRAF突变外还鉴定出PNPLA5作为驱动基因。此外,我们发现了572个差异表达基因和79个差异表达蛋白质。通过综合分析,我们确定了17个用于PTC预后和诊断的枢纽基因。其中4个基因,ABR、AHNAK2、GPX1和TPO,被用于构建具有高精度的诊断模型,明确针对PTC(训练/测试集中的AUC = 0.969/0.959)。
中国队列的多组学分析显示与TCGA-THCA队列相比有显著差异,突出了中国PTC患者独特的遗传特征。鉴定出了具有PTC诊断和预后潜力的新型生物标志物。此外,这些生物标志物为精准医学提供了有价值的工具,特别是对于基于免疫治疗或纳米医学的癌症治疗。