通过空间数据整合揭示胰腺癌发生过程中的 PanIN 和 CAF 转变。

Cell systems Pub Date : 2024-08-21 Epub Date: 2024-08-07 DOI:10.1016/j.cels.2024.07.001
Alexander T F Bell, Jacob T Mitchell, Ashley L Kiemen, Melissa Lyman, Kohei Fujikura, Jae W Lee, Erin Coyne, Sarah M Shin, Sushma Nagaraj, Atul Deshpande, Pei-Hsun Wu, Dimitrios N Sidiropoulos, Rossin Erbe, Jacob Stern, Rena Chan, Stephen Williams, James M Chell, Lauren Ciotti, Jacquelyn W Zimmerman, Denis Wirtz, Won Jin Ho, Neeha Zaidi, Elizabeth Thompson, Elizabeth M Jaffee, Laura D Wood, Elana J Fertig, Luciane T Kagohara
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摘要

本研究介绍了一种新的成像、空间转录组学(ST)和单细胞 RNA 序列整合管道,用于描述肿瘤发生过程中肿瘤细胞状态的转变。我们应用半监督分析管道研究了可发展为胰腺导管腺癌(PDAC)的恶性胰腺上皮内瘤(PanINs)。对福尔马林固定和石蜡包埋(FFPE)样本的严格诊断限制了人类 PanINs 在其微环境中的单细胞表征。我们利用全转录组 FFPE ST 对匹配的低级别(LG)和高级别(HG)PanIN 病变进行了罕见的队列研究,以跟踪进展情况并绘制与单细胞 PDAC 数据集相对应的细胞表型图。我们证明,癌相关成纤维细胞(CAFs),包括抗原递呈CAFs,位于PanINs附近。我们进一步观察到,在 PanIN 进展过程中,与 CAF 相关的炎症信号转导向细胞增殖过渡。我们利用单细胞高维成像蛋白质组学和转录组学技术验证了这些发现。总之,我们的空间多组学半监督学习框架可广泛应用于各种癌症类型,以破译癌变的时空动态。
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PanIN and CAF transitions in pancreatic carcinogenesis revealed with spatial data integration.

This study introduces a new imaging, spatial transcriptomics (ST), and single-cell RNA-sequencing integration pipeline to characterize neoplastic cell state transitions during tumorigenesis. We applied a semi-supervised analysis pipeline to examine premalignant pancreatic intraepithelial neoplasias (PanINs) that can develop into pancreatic ductal adenocarcinoma (PDAC). Their strict diagnosis on formalin-fixed and paraffin-embedded (FFPE) samples limited the single-cell characterization of human PanINs within their microenvironment. We leverage whole transcriptome FFPE ST to enable the study of a rare cohort of matched low-grade (LG) and high-grade (HG) PanIN lesions to track progression and map cellular phenotypes relative to single-cell PDAC datasets. We demonstrate that cancer-associated fibroblasts (CAFs), including antigen-presenting CAFs, are located close to PanINs. We further observed a transition from CAF-related inflammatory signaling to cellular proliferation during PanIN progression. We validate these findings with single-cell high-dimensional imaging proteomics and transcriptomics technologies. Altogether, our semi-supervised learning framework for spatial multi-omics has broad applicability across cancer types to decipher the spatiotemporal dynamics of carcinogenesis.

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