Huang Yue, Sun Chengzhi, Gao Xiangyuan, Zhai Siqi, Wang Guosheng, Zhang Fan
Department of Epidemiology and Biostatistics, School of Public Health, Shandong Second Medical University, Weifang, 261053, People's Republic of China.
State Key Laboratory of Urban Water Resource and Environment, School of Chemistry and Chemical Engineering, Harbin Institute of Technology, Harbin, 150001, People's Republic of China.
Discov Oncol. 2025 Aug 11;16(1):1531. doi: 10.1007/s12672-025-03317-1.
Pancreatic ductal adenocarcinoma (PDAC) presents significant diagnostic challenges at early stages due to the absence of specific symptoms and the rapid progression of the disease. Consequently, there is an urgent imperative to investigate the mechanisms underlying early detection and the biological processes that drive cancer progression. In response to this need, we conducted a paired design study employing differential protein analysis, Mendelian randomization (MR), and single-cell analysis to identify distinctive features associated with early-stage PDAC (E-PDAC). Our initial analysis in the RJ cohort identified 1,068 E-PDAC-related proteins from differential protein analysis. Subsequently, we employed a random forest approach to pinpoint 25 E-PDAC-specific proteins. These proteins informed the development of 13 machine learning models aimed at predicting E-PDAC risk, which demonstrated an area under the curve (AUC) of approximately 0.9 in the discovery cohort and approximately 0.8 in external validation. Furthermore, MR and single-cell analysis were utilized to explore causal relationships and the composition of the tumor microenvironment. Through MR, we identified STX7 as a risk factor (odds ratio = 1.26; confidence interval: 1.03-1.54; p = 0.02), with LUM exhibiting a dual role (pro-tumorigenic in proteomic analysis but anti-tumorigenic in MR analysis). Single-cell analysis revealed that LUM primarily aids in the generation of fibroblasts and T/B cells, serving as pro-tumorigenic and antitumorigenic agents, respectively. Our research offers valuable insights into protein biomarkers, cell types, and communication in E-PDAC, suggesting potential targets to improve screening efficiency.
胰腺导管腺癌(PDAC)在早期阶段面临重大诊断挑战,因为缺乏特异性症状且疾病进展迅速。因此,迫切需要研究早期检测的潜在机制以及驱动癌症进展的生物学过程。为满足这一需求,我们进行了一项配对设计研究,采用差异蛋白质分析、孟德尔随机化(MR)和单细胞分析来识别与早期PDAC(E-PDAC)相关的独特特征。我们在RJ队列中的初步分析通过差异蛋白质分析确定了1068种与E-PDAC相关的蛋白质。随后,我们采用随机森林方法确定了25种E-PDAC特异性蛋白质。这些蛋白质为旨在预测E-PDAC风险的13种机器学习模型的开发提供了依据,这些模型在发现队列中的曲线下面积(AUC)约为0.9,在外部验证中约为0.8。此外,利用MR和单细胞分析来探索因果关系和肿瘤微环境的组成。通过MR,我们确定STX7为一个风险因素(优势比=1.26;置信区间:1.03-1.54;p=0.02),而LUM表现出双重作用(在蛋白质组学分析中具有促肿瘤作用,但在MR分析中具有抗肿瘤作用)。单细胞分析表明,LUM主要有助于成纤维细胞和T/B细胞的生成,分别作为促肿瘤和抗肿瘤因子。我们的研究为E-PDAC中的蛋白质生物标志物、细胞类型和细胞通讯提供了有价值的见解,提出了提高筛查效率的潜在靶点。