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胰腺癌临床病理和基因组因素的病理组学和生物信息学分析用于预后评估。

Pathomic and bioinformatics analysis of clinical-pathological and genomic factors for pancreatic cancer prognosis.

机构信息

Department of Emergency, Ningbo Medical Centre Lihuili Hospital, The affiliated hospital of Ningbo University, Ningbo, 315040, Zhejiang, China.

Department of Gastroenterology, Affiliated Hospital of Youjiang Medical University for Nationalities, Baise, 533000, Guangxi, China.

出版信息

Sci Rep. 2024 Nov 13;14(1):27769. doi: 10.1038/s41598-024-79619-1.

Abstract

Pancreatic cancer exhibits a high degree of malignancy with a poor prognosis, lacking effective prognostic targets. Utilizing histopathological methodologies, this study endeavors to predict the expression of pathological features in pancreatic ductal adenocarcinoma (PAAD) and investigate their underlying molecular mechanisms. Pathological images, transcriptomic, and clinical data from TCGA-PAAD were collected for survival analysis. Image segmentation using unsupervised machine learning was employed to extract features, perform clustering, and establish models. The prognostic value of pathological features and associated clinical risk factors were evaluated; the correlation between pathological features and molecular mechanisms, gene mutations, and immune infiltration was analyzed. By clustering 45 effective pathological features, we divided PAAD patients into two groups: cluster 1 and cluster 2. Significant associations with poor prognosis were found for cluster 2 in both the training group (n = 113) and validation group (n = 75) (p = 0.006), with pathological stages II-IV identified as potential synergistic risk factors (HR = 2.421, 95% CI = 1.263-4.639, p = 0.008). Subsequently, through multi-omics correlation analysis, we further revealed a close association between cluster 2 and the oxidative phosphorylation mechanism. Within the cluster 2 group, 28 oxidative phosphorylation genes exhibited reduced expression, CDKN2A gene mutations were upregulated, and there was significant downregulation of Tregs infiltration and related immune gene expression. The pathomic model constructed using machine learning serves as a valuable prognostic target for PAAD. The histopathological features cluster 2 are closely associated with the downregulation of oxidative phosphorylation levels and Tregs immune infiltration.

摘要

胰腺癌恶性程度高,预后差,缺乏有效的预后靶点。本研究利用组织病理学方法,预测胰腺导管腺癌(PAAD)的病理特征表达,并探讨其潜在的分子机制。从 TCGA-PAAD 中收集了病理图像、转录组和临床数据进行生存分析。使用无监督机器学习对图像进行分割,以提取特征、进行聚类和建立模型。评估了病理特征及相关临床风险因素的预后价值;分析了病理特征与分子机制、基因突变和免疫浸润的相关性。通过对 45 个有效的病理特征进行聚类,我们将 PAAD 患者分为两组:聚类 1 和聚类 2。在训练组(n=113)和验证组(n=75)中,聚类 2 与预后不良均有显著相关性(p=0.006),病理分期 II-IV 被确定为潜在的协同风险因素(HR=2.421,95%CI=1.263-4.639,p=0.008)。随后,通过多组学相关性分析,我们进一步揭示了聚类 2 与氧化磷酸化机制的密切关联。在聚类 2 组中,28 个氧化磷酸化基因表达下调,CDKN2A 基因突变上调,Treg 浸润和相关免疫基因表达显著下调。基于机器学习构建的病理模型为 PAAD 提供了一个有价值的预后靶点。聚类 2 的组织病理学特征与氧化磷酸化水平下调和 Treg 免疫浸润密切相关。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7c7f/11557977/c34f0e93b3a6/41598_2024_79619_Fig6_HTML.jpg

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