癌症研究
转化(遗传学)
转录组
可药性
生物
腺癌
恶性转化
癌症
基因
遗传学
基因表达
作者
Yan Li,Tongji Xie,Shouzheng Wang,Jing Wang,Xuezhi Hao,Yan Wang,Xingsheng Hu,Lin Wang,Junling Li,Jianming Ying,Puyuan Xing
标识
DOI:10.1038/s41392-024-01981-3
摘要
Abstract Small-cell lung cancer (SCLC) transformation accounts for 3–14% of resistance in EGFR -TKI relapsed lung adenocarcinomas (LUADs), with unknown molecular mechanisms and optimal treatment strategies. We performed transcriptomic analyses (including bulk and spatial transcriptomics) and multiplex immunofluorescence on pre-treated samples from LUADs without transformation after EGFR -TKI treatment (LUAD-NT), primary SCLCs (SCLC-P) and LUADs with transformation after EGFR -TKI treatment (before transformation: LUAD-BT; after transformation: SCLC-AT). Our study found that LUAD-BT exhibited potential transcriptomic characteristics for transformation compared with LUAD-NT. We identified several pathways that shifted during transformation, and the transformation might be promoted by epigenetic alterations (such as HDAC10 , HDAC1 , DNMT3A ) within the tumor cells instead of within the tumor microenvironment. For druggable pathways, transformed-SCLC were proved to be less dependent on EGF signaling but more relied on FGF signaling, while VEGF - VEGFR pathway remained active, indicating potential treatments after transformation. We also found transformed-SCLC showed an immuno-exhausted status which was associated with the duration of EGFR -TKI before transformation. Besides, SCLC-AT exhibited distinct molecular subtypes from SCLC-P. Moreover, we constructed an ideal 4-marker model based on transcriptomic and IHC data to predict SCLC transformation, which obtained a sensitivity of 100% and 87.5%, a specificity of 95.7% and 100% in the training and test cohorts, respectively. We provided insights into the molecular mechanisms of SCLC transformation and the differences between SCLC-AT and SCLC-P, which might shed light on prevention strategies and subsequent therapeutic strategies for SCLC transformation in the future.
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