转录组
亚型
计算生物学
恶性肿瘤
肿瘤异质性
空间异质性
表型
遗传异质性
基因表达谱
生物
基因签名
肺癌
癌症研究
癌症
病理
基因
遗传学
医学
计算机科学
肿瘤科
基因表达
生态学
程序设计语言
作者
Zicheng Zhang,Xujie Sun,Yutao Liu,Yibo Zhang,Zijian Yang,Jiyan Dong,Nan Wang,Jianming Ying,Meng Zhou,Lin Yang
标识
DOI:10.1002/advs.202402716
摘要
Abstract Small cell lung cancer (SCLC) is a highly aggressive malignancy characterized by rapid growth and early metastasis and is susceptible to treatment resistance and recurrence. Understanding the intra‐tumoral spatial heterogeneity in SCLC is crucial for improving patient outcomes and clinically relevant subtyping. In this study, a spatial whole transcriptome‐wide analysis of 25 SCLC patients at sub‐histological resolution using GeoMx Digital Spatial Profiling technology is performed. This analysis deciphered intra‐tumoral multi‐regional heterogeneity, characterized by distinct molecular profiles, biological functions, immune features, and molecular subtypes within spatially localized histological regions. Connections between different transcript‐defined intra‐tumoral phenotypes and their impact on patient survival and therapeutic response are also established. Finally, a gene signature, termed ITHtyper, based on the prevalence of intra‐tumoral heterogeneity levels, which enables patient risk stratification from bulk RNA‐seq profiles is identified. The prognostic value of ITHtyper is rigorously validated in independent multicenter patient cohorts. This study introduces a preliminary tumor‐centric, regionally targeted spatial transcriptome resource that sheds light on previously unexplored intra‐tumoral spatial heterogeneity in SCLC. These findings hold promise to improve tumor reclassification and facilitate the development of personalized treatments for SCLC patients.
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