キタハラ シュウジ   KITAHARA Shuji
  北原 秀治
   所属   医学研究科 医学研究科 (医学部医学科をご参照ください)
   職種   特任准教授
論文種別 原著
言語種別 英語
査読の有無 査読なし
表題 A tumor microenvironment-based classification of gastric cancer for more effective diagnosis and treatment.
掲載誌名 正式名:Surgical oncology
略  称:Surg Oncol
ISSNコード:09607404/18793320
掲載区分国外
巻・号・頁 63,pp.102298
国際共著 国際共著
著者・共著者 Simona O. Dima†, Andrei Sorop, Shuji Kitahara, Namrata Setia, Mihaela Chivu-Economescu, Lilia Matei, Vlad Herlea, Nicolae C. Pechianu, Takenori Inomata, Aya Matsui, Anna Khachatryan, Shuichi Aoki, Gregory Y. Lauwers, Irinel Popescu*, Dan G. Dud*
発行年月 2025/12
概要 With approximately one million diagnosed cases and over 700,000 deaths recorded annually, gastric cancer (GC) is the third most common cause of cancer-related deaths worldwide. GC is a heterogeneous tumor. Thus, optimal management requires biomarkers of prognosis, treatment selection, and treatment response. The Cancer Genome Atlas program sub-classified GC into molecular subtypes, providing a framework for treatment personalization using traditional chemotherapies or biologics. Here, we report a comprehensive study of GC vascular and immune tumor microenvironment (TME)-based on stage and molecular subtypes of the disease and their correlation with outcomes. Using tissues and blood circulating biomarkers and a molecular classification, we identified cancer cell and tumor archetypes, which show that the TME evolves with the disease stage and is a major determinant of prognosis. Moreover, our TME-based subtyping strategy allowed the identification of archetype-specific prognostic biomarkers such as CDH1-mutant GC and circulating IL-6 that provided information beyond and independent of TMN staging, MSI status, and consensus molecular subtyping. The results show that integrating molecular subtyping with TME-specific biomarkers could contribute to improved patient prognostication and may provide a basis for treatment stratification, including for contemporary anti-angiogenesis and immunotherapy approaches.
DOI 10.1016/j.suronc.2025.102298
PMID 41033926