Du Jing, Zhao Yaqian, Dong Jie, Li Peng, Hu Yan, Fan Hailang, Zhang Feifan, Sun Lanlan, Zhang Dake, Zhang Yuhua
Cancer Center, Department of Gastroenterology, Zhejiang Provincial People's Hospital (Affiliated People's Hospital), Hangzhou Medical College, Hangzhou, 310014, Zhejiang, China.
Key Laboratory of Biomechanics and Mechanobiology, Ministry of Education, Beijing Advanced Innovation Center for Biomedical Engineering, School of Engineering Medicine, Beihang University, Beijing, 100191, China.
Clin Epigenetics. 2024 Dec 21;16(1):188. doi: 10.1186/s13148-024-01800-0.
Pancreatic adenocarcinoma (PDAC) exhibits a complex microenvironment with diverse cell populations influencing patient prognosis. Single-cell RNA sequencing (scRNA-seq) was used to identify prognosis-related cell types, and DNA methylation (DNAm)-based models were developed to predict outcomes based on their cellular characteristics.
We integrated scRNA-seq, bulk data, and clinical information to identify key cell populations associated with prognosis. The TCGA dataset was used for validation, and cell composition was inferred from DNAm data. Prognostic models were constructed based on cell-type-specific DNAm markers, and genomic features were compared across risk groups. Nomograms were created to assess treatment responses in different risk levels.
Epithelial and T cells were major prognostic factors. Genomic analysis showed that epithelial cells in PDAC followed a malignant trajectory. DNAm data from TCGA confirmed the association of higher epithelial and T cell proportions with worse prognosis. Prognostic models based on DNAm markers of these cells effectively predicted patient survival, especially 5-year overall survival (AUC = 0.834). High-risk group with epithelial cell model showed altered pathways (tight junctions, NOTCH, and P53 signaling), while high-risk group with T cell model had changes in glycolysis, hypoxia, and NOTCH signaling, with more KRAS or TP53 mutations. Low-risk groups in the T cell model displayed stronger antitumor immune responses. Treatment predictions and nomograms were developed for clinical use.
scRNA-seq and DNAm data integration enabled the creation of predictive models based on epithelial and T cell-specific methylation patterns, offering robust prognosis prediction for PDAC patients.
胰腺腺癌(PDAC)呈现出复杂的微环境,其中多种细胞群体影响患者预后。单细胞RNA测序(scRNA-seq)用于识别与预后相关的细胞类型,并基于DNA甲基化(DNAm)建立模型,以根据细胞特征预测预后。
我们整合了scRNA-seq、批量数据和临床信息,以识别与预后相关的关键细胞群体。使用TCGA数据集进行验证,并从DNAm数据推断细胞组成。基于细胞类型特异性DNAm标记构建预后模型,并比较不同风险组的基因组特征。创建列线图以评估不同风险水平的治疗反应。
上皮细胞和T细胞是主要的预后因素。基因组分析表明,PDAC中的上皮细胞呈恶性发展轨迹。来自TCGA的DNAm数据证实,较高的上皮细胞和T细胞比例与较差的预后相关。基于这些细胞的DNAm标记的预后模型有效地预测了患者的生存情况,尤其是5年总生存率(AUC = 0.834)。上皮细胞模型的高风险组显示通路改变(紧密连接、NOTCH和P53信号通路),而T细胞模型的高风险组在糖酵解、缺氧和NOTCH信号通路方面有变化,且KRAS或TP53突变更多。T细胞模型的低风险组显示出更强的抗肿瘤免疫反应。开发了用于临床的治疗预测和列线图。
scRNA-seq和DNAm数据整合能够基于上皮细胞和T细胞特异性甲基化模式创建预测模型,为PDAC患者提供可靠的预后预测。