Abstract 1716: Mapping the cellular architecture of the tumor microenvironment by integrating hyperplex immunofluorescence and automated image analysis

Cancer Research(2022)

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摘要
Abstract The tumor microenvironment (TME) is composed of malignant cells and the surrounding healthy counterpart. The precise identification of the TME components is crucial to understanding how this microecosystem remodels during tumorigenesis and responds to treatment in order to identify its vulnerabilities and treatment opportunities (1). In the past decade, significant efforts have been made to describe the TME using RNA-based technologies (2,3). These approaches shed light on the tumor heterogeneity and variable response to treatment. However, RNA-based biomarker expression profiling has limited relevance as it might not always accurately reflect the actual protein levels (4). In addition, the increasing number of protein biomarkers available led to the development of new technologies that allow the analysis of dozens of proteins on a single tissue slide (5). The COMET™ platform is an automated instrument that allows the detection of up to 40 antigens on a single slide using sequential immunofluorescence staining (6). By integrating multiplex immunofluorescence technology, we profiled the expression of 40 protein biomarkers across a tissue microarray composed of primary lung tumors and their corresponding metastatic lymph nodes. The combination of the hyperplex panel with an automated image and data analysis pipeline based on an unsupervised machine learning clustering algorithm allowed for the identification of several classes of immune cells with preferential accumulation sites. We identified distinct myeloid cells that coexist within the TME but infiltrate to a higher extent either the primary tumor or the metastatic loci. Harnessing the same approach, we also observed a higher frequency of T regulatory cells in the primary tumors. Subsequently, newly identified population frequencies determined by unsupervised clustering was confirmed by a complementary approach of supervised single-cell analysis. Our data highlights the potential that microfluidics-based multiplex technology brings into the fields of both digital pathology and immuno-oncology, thanks to its single-cell resolution and the simultaneous detection of multiple protein biomarkers. We demonstrate here how the combination of hyperplex images obtained using the COMET™ platform, along with machine learning clustering analysis, results in an easy workflow for analyzing the complex TME and obtaining a single-cell atlas of tissue specimens. 1.Binnewies M, et al. Nat Med 2018; 24(5):541-550. 2.Lau D, et al. Trends Cancer 2019; 5(3):149-156. 3.Vries NL, et al. Front Oncol 2020. 4.Vogel C, Marcotte EM. Nat Rev Gen 2012; 13:227-232. 5.Lewis SM, et al. Nat Methods 2021; 18:997-1012. 6.Migliozzi D, et al. Microsyst Nanoeng 2019; 5:59. Citation Format: Pedro Machado Almeida, François Rivest, Quentin Juppet, Joanna Kowal, Benjamin Pelz, Marco Cassano, Deniz Eroglu, Diego Dupouy. Mapping the cellular architecture of the tumor microenvironment by integrating hyperplex immunofluorescence and automated image analysis [abstract]. In: Proceedings of the American Association for Cancer Research Annual Meeting 2022; 2022 Apr 8-13. Philadelphia (PA): AACR; Cancer Res 2022;82(12_Suppl):Abstract nr 1716.
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关键词
hyperplex immunofluorescence,tumor microenvironment,cellular architecture
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