Department of Surgical Oncology, The First Affiliated Hospital, Zhejiang University School of Medicine, 79# Qingchun Road, Hangzhou, 310003, China.
Institute of Drug Metabolism and Pharmaceutical Analysis and Zhejiang Provincial Key Laboratory of Anti-Cancer Drug Research, College of Pharmaceutical Sciences, Zhejiang University, Hangzhou, China.
Gastric Cancer. 2023 Jul;26(4):504-516. doi: 10.1007/s10120-023-01379-0. Epub 2023 Mar 17.
Peritoneal metastasis (PM) frequently occurs in patients with gastric cancer (GC) and is a major cause of mortality. Risk stratification for PM can optimize decision making in GC treatment.
A total of 25 GC patients (13 with synchronous, 6 with metachronous PM and 6 PM-free) were included in this study. Quantitative proteomics by high-depth tandem mass tags labeling and whole-exome sequencing were conducted in primary GC and PM samples. Proteomic signature and prognostic model were established by machine learning algorithms in PM and PM-free GC, then validated in two external cohorts. Tumor-infiltrating immune cells in GC were analyzed by CIBERSORT.
Heterogeneity between paired primary and PM samples was observed at both genomic and proteomic levels. Compared to primary GC, proteome of PM samples was enriched in RNA binding and extracellular exosomes. 641 differently expressed proteins (DEPs) between primary GC of PM group and PM-free group were screened, which were enriched in extracellular exosome and cell adhesion pathways. Subsequently, a ten-protein signature was derived based on DEPs by machine learning. This signature was significantly associated with patient prognosis in internal cohort and two external proteomic datasets of diffuse and mixed type GC. Tumor-infiltrating immune cell analysis showed that the signature was associated with immune microenvironment of GC.
We characterized proteomic features that were informative for PM progression of GC. A protein signature associated with immune microenvironment and patient outcome was derived, and it could guide risk stratification and individualized treatment.
腹膜转移(PM)经常发生在胃癌(GC)患者中,是导致死亡的主要原因。PM 的风险分层可以优化 GC 治疗的决策。
本研究共纳入 25 例 GC 患者(13 例伴同步性 PM,6 例伴异时性 PM,6 例无 PM)。对原发性 GC 和 PM 样本进行高深度串联质量标签标记和全外显子测序的定量蛋白质组学分析。通过机器学习算法在 PM 和无 PM 的 GC 中建立蛋白质组学特征和预后模型,并在两个外部队列中进行验证。通过 CIBERSORT 分析 GC 中的肿瘤浸润免疫细胞。
配对的原发性和 PM 样本在基因组和蛋白质组水平均存在异质性。与原发性 GC 相比,PM 样本的蛋白质组在 RNA 结合和细胞外囊泡中富集。筛选出原发性 GC 与无 PM 组之间的 641 个差异表达蛋白(DEPs),这些蛋白在细胞外囊泡和细胞黏附途径中富集。随后,通过机器学习从 DEPs 中得出一个由十个蛋白组成的特征。该特征与内部队列和两个弥漫性和混合性 GC 的外部蛋白质组数据集的患者预后显著相关。肿瘤浸润免疫细胞分析表明,该特征与 GC 的免疫微环境有关。
我们描述了对 GC 腹膜转移进展有信息价值的蛋白质组学特征。得出了一个与免疫微环境和患者预后相关的蛋白质特征,可以指导风险分层和个体化治疗。