Huang Yue, Guo Jing, Han Xueshuai, Zhao Yang, Li Xuejing, Xing Peiqi, Liu Yulou, Sun Yingxuan, Wu Song, Lv Xuan, Zhou Lei, Zhang Yazhuo, Li Chuzhong, Xie Weiyan, Liu Zhaoqi
China National Center for Bioinformation, Beijing, China.
Beijing Institute of Genomics, Chinese Academy of Sciences, Beijing, China.
Nat Commun. 2025 Feb 11;16(1):1552. doi: 10.1038/s41467-025-56821-x.
Pituitary neuroendocrine tumors (PitNETs) are one of the most common intracranial tumors with diverse clinical manifestations. Current pathological classification systems rely primarily on histological hormone staining and transcription factors (TFs) expression. While effective in identifying three major lineages, molecular characteristics based on hormones and TFs lack sufficient resolution to fully capture the complex tumor heterogeneity. Transcriptional diversity by alternative splicing (AS) offered additional insight to address this challenge. Here, we perform bulk and full-length single-cell RNA sequencing to comprehensively investigate AS dysregulation across all PitNET lineages. We reveal pervasive splicing dysregulations that better depict tumor heterogeneity. Additionally, we delineate fundamental splicing heterogeneity at single-cell resolution, confirming bulk findings and refining splicing dysregulation varying among tumor cell types. Notably, we effectively distinguish the silent corticotroph subtype and define a distinct TPIT lineage subtype, which is associated with worse clinical outcomes and increased splicing abnormalities driven by altered ESRP1 expression. In conclusion, our results characterize the subtype specific AS landscape in PitNETs, enhancing the understanding of the PitNETs subtyping.
垂体神经内分泌肿瘤(PitNETs)是最常见的颅内肿瘤之一,临床表现多样。目前的病理分类系统主要依赖于组织学激素染色和转录因子(TFs)表达。虽然在识别三个主要谱系方面有效,但基于激素和TFs的分子特征缺乏足够的分辨率来完全捕捉复杂的肿瘤异质性。通过可变剪接(AS)产生的转录多样性为应对这一挑战提供了额外的见解。在这里,我们进行了批量和全长单细胞RNA测序,以全面研究所有PitNET谱系中的AS失调。我们揭示了普遍存在的剪接失调,能更好地描绘肿瘤异质性。此外,我们在单细胞分辨率下描绘了基本的剪接异质性,证实了批量研究结果,并细化了肿瘤细胞类型之间不同的剪接失调。值得注意的是,我们有效地区分了沉默促肾上腺皮质激素细胞亚型,并定义了一种独特的TPIT谱系亚型,其与更差的临床结果相关,且由ESRP1表达改变导致剪接异常增加。总之,我们的结果描绘了PitNETs中特定亚型的AS图谱,增强了对PitNETs亚型分类的理解。