Department of Cancer Genetics, Institute for Cancer Research, Oslo University Hospital, Oslo, Norway.
Department of Natural Sciences and Environmental Health, University of South-Eastern Norway, Bø i Telemark, Norway.
Cancer Res Commun. 2022 Jun 14;2(6):434-446. doi: 10.1158/2767-9764.CRC-21-0100. eCollection 2022 Jun.
Pancreatic cancer remains a disease with unmet clinical needs and inadequate diagnostic, prognostic, and predictive biomarkers. In-depth characterization of the disease proteome is limited. This study thus aims to define and describe protein networks underlying pancreatic cancer and identify protein centric subtypes with clinical relevance. Mass spectrometry-based proteomics was used to identify and quantify the proteome in tumor tissue, tumor-adjacent tissue, and patient-derived xenografts (PDX)-derived cell lines from patients with pancreatic cancer, and tissues from patients with chronic pancreatitis. We identified, quantified, and characterized 11,634 proteins from 72 pancreatic tissue samples. Network focused analysis of the proteomics data led to identification of a tumor epithelium-specific module and an extracellular matrix (ECM)-associated module that discriminated pancreatic tumor tissue from both tumor adjacent tissue and pancreatitis tissue. On the basis of the ECM module, we defined an ECM-high and an ECM-low subgroup, where the ECM-high subgroup was associated with poor prognosis (median survival months: 15.3 . 22.9 months; log-rank test, = 0.02). The ECM-high tumors were characterized by elevated epithelial-mesenchymal transition and glycolytic activities, and low oxidative phosphorylation, E2F, and DNA repair pathway activities. This study offers novel insights into the protein network underlying pancreatic cancer opening up for proteome precision medicine development.
Pancreatic cancer lacks reliable biomarkers for prognostication and treatment of patients. We analyzed the proteome of pancreatic tumors, nonmalignant tissues of the pancreas and PDX-derived cell lines, and identified proteins that discriminate between patients with good and poor survival. The proteomics data also unraveled potential novel drug targets.
胰腺癌仍然是一种临床需求未得到满足、诊断、预后和预测生物标志物不足的疾病。对疾病蛋白质组的深入描述受到限制。因此,本研究旨在定义和描述胰腺癌的蛋白质网络,并确定具有临床相关性的以蛋白质为中心的亚型。基于质谱的蛋白质组学用于鉴定和定量来自胰腺癌患者的肿瘤组织、肿瘤邻近组织和患者来源的异种移植(PDX)衍生细胞系以及慢性胰腺炎患者的组织中的蛋白质组。我们从 72 个胰腺组织样本中鉴定、定量和描述了 11634 种蛋白质。蛋白质组学数据的网络重点分析导致鉴定出一个肿瘤上皮特异性模块和一个细胞外基质(ECM)相关模块,该模块可将胰腺肿瘤组织与肿瘤邻近组织和胰腺炎组织区分开来。基于 ECM 模块,我们定义了一个 ECM-高和一个 ECM-低亚组,其中 ECM-高亚组与预后不良相关(中位生存月数:15.3. 22.9 个月;对数秩检验, = 0.02)。ECM-高肿瘤的特征是上皮-间充质转化和糖酵解活性升高,氧化磷酸化、E2F 和 DNA 修复途径活性降低。本研究为胰腺癌的蛋白质网络提供了新的见解,为蛋白质组精准医学的发展开辟了道路。
胰腺癌缺乏可靠的生物标志物来预测和治疗患者。我们分析了胰腺肿瘤、胰腺非恶性组织和 PDX 衍生细胞系的蛋白质组,鉴定出区分生存良好和生存较差患者的蛋白质。蛋白质组学数据还揭示了潜在的新药物靶点。