Li Haiyan, Lan Hao, Li Menglong, Pu Xuemei, Guo Yanzhi
College of Chemistry, Sichuan University, Chengdu, China.
Front Pharmacol. 2023 Mar 6;14:1119789. doi: 10.3389/fphar.2023.1119789. eCollection 2023.
Papillary thyroid cancer (PTC) is the most common endocrine malignancy. However, different PTC variants reveal high heterogeneity at histological, cytological, molecular and clinicopathological levels, which complicates the precise diagnosis and management of PTC. Alternative splicing (AS) has been reported to be potential cancer biomarkers and therapeutic targets. Here, we aim to find a more sophisticated molecular subclassification and characterization for PTC by integrating AS profiling. Based on six differentially expressed alternative splicing (DEAS) events, a new molecular subclassification was proposed to reclassify PTC into three new groups named as Cluster0, Cluster1 and Cluster2 respectively. An prediction was performed for accurate recognition of new groups with the average accuracy of 91.2%. Moreover, series of analyses were implemented to explore the differences of clinicopathology, molecular and immune characteristics across them. It suggests that there are remarkable differences among them, but Cluster2 was characterized by poor prognosis, higher immune heterogeneity and more sensitive to anti-PD1 therapy. The splicing correlation networks proved the complicated regulation relationships between AS events and splicing factors (SFs). An independent prognostic indicator for PTC overall survival (OS) was established. Finally, three compounds (orantinib, tyrphostin-AG-1295 and AG-370) were discovered to be the potential therapeutic agents. Overall, the six DEAS events are not only potential biomarkers for precise diagnosis of PTC, but also the probable prognostic predictors. This research would be expected to highlight the effect of AS events on PTC characterization and also provide new insights into refining precise subclassification and improving medical therapy for PTC patients.
甲状腺乳头状癌(PTC)是最常见的内分泌恶性肿瘤。然而,不同的PTC变体在组织学、细胞学、分子和临床病理水平上表现出高度异质性,这使得PTC的精确诊断和管理变得复杂。据报道,可变剪接(AS)是潜在的癌症生物标志物和治疗靶点。在此,我们旨在通过整合AS图谱为PTC找到更精细的分子亚分类和特征描述。基于六个差异表达的可变剪接(DEAS)事件,提出了一种新的分子亚分类方法,将PTC重新分为三个新组,分别命名为Cluster0、Cluster1和Cluster2。进行了预测以准确识别新组,平均准确率为91.2%。此外,还进行了一系列分析,以探讨它们在临床病理、分子和免疫特征方面的差异。结果表明,它们之间存在显著差异,但Cluster2的特点是预后较差、免疫异质性较高且对抗PD1治疗更敏感。剪接相关网络证明了AS事件与剪接因子(SFs)之间复杂的调控关系。建立了PTC总生存期(OS)的独立预后指标。最后,发现三种化合物(奥拉替尼、 tyrphostin-AG-1295和AG-370)是潜在的治疗药物。总体而言,这六个DEAS事件不仅是PTC精确诊断的潜在生物标志物,也是可能的预后预测指标。这项研究有望突出AS事件对PTC特征描述的影响,也为完善PTC的精确亚分类和改善PTC患者的医学治疗提供新的见解。