仿形(计算机编程)
生物
肺癌
计算生物学
生物标志物
生物标志物发现
疾病
基因表达谱
生物信息学
癌症研究
精密医学
疾病监测
分子生物标志物
肺
肺病
肺病
作者
Mingchao Xie,Miljenka Vuko,Shashank Saran,Siyu Liu,Andrew G. Chambers,Hana Baakza,Helen K. Angell,Felicia Ng,Carl M. Gay,Robert J. Cardnell,Felix J. Segerer,Alma Andoni,Jaime Rodriguez‐Canales,Paul Waring,Markus Schick,J. Carl Barrett,Lauren A. Byers,Giulia Fabbri
标识
DOI:10.1186/s12943-025-02514-4
摘要
BACKGROUND: Greater understanding of differential therapeutic sensitivity, specifically to immunotherapy, in small-cell lung cancer (SCLC) is required. METHODS: We explored SCLC heterogeneity through integrated molecular characterization of tumor tissue samples from 159 treatment-naive patients, utilizing genetic, epigenetic, transcriptional, and proteomic profiling, immunohistochemistry staining for multiple biologically relevant markers including transcriptional subtype-defining proteins, and spatial immune profiling using multiplex immunofluorescence. RESULTS: Multi-omics analysis confirmed high heterogeneity across/within neuroendocrine and non-neuroendocrine subtypes. Methylomics analysis identified four methylome clusters that may enhance subtype prediction, prognosis, and longitudinal monitoring of subtype evolution. Immunohistochemistry analysis showed high MHC-I expression in non-neuroendocrine subtypes, which have greatest potential benefit from adding immunotherapy to chemotherapy; high DLL3 expression associated with neuroendocrine subtypes and an immune-cold tumor microenvironment. Multiplex immunofluorescence demonstrated associations of MHC-I with spatial arrangement and phenotypic features of immune cells in the tumor microenvironment of high-MHC-I-expressing SCLC, providing mechanistic rationale for MHC-I as a potential biomarker of immunotherapy response. CONCLUSIONS: This multimodal profiling analysis provides further insights into the biologic complexity of SCLC and highlights potential therapeutic vulnerabilities of distinct disease subtypes.
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