Abstract 2108: High prevalence of immune exclusion in cancer as determined by pathologist assessment and image analysis

Cancer Research(2023)

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Abstract Background: Immune infiltrated tumors have high levels of lymphocytes contacting tumor cells and are more responsive to checkpoint inhibitors. Tumors with few lymphocytes in contact with tumor cells can be divided into desert or excluded phenotypes based on lymphocyte absence/paucity or restriction to the peritumoral stroma, respectively. Standard methods to systematically identify and characterize immune exclusion for patient stratification are lacking. Methods: Slides from colorectal (CRC), non-small cell lung (NSCLC), ovarian (OC), pancreatic (PDAC), and triple-negative breast cancers (TNBC), and leiomyosarcoma (LMS) and undifferentiated pleomorphic sarcoma (UPS) were stained with multiplex IHC (mIHC) for CD8 and panCK. Pathologist assessment (PA) was done to classify the tumors as: desert, with a paucity of CD8 T cells; excluded, with CD8 T cells not penetrating the tumor parenchyma; and infiltrated, with CD8 T cells within the tumor parenchyma. For the carcinomas, adjacent sections were stained with a multiplex immunofluorescence (mIF) panel containing CD8 and a tumor cell marker. Image analysis (IA) was performed on the mIF images to quantify CD8 cell density in the tumor parenchyma and stroma to categorize immune phenotypes. Results: Immune phenotypes were classified for 143 samples based on PA of mIHC images and 103 samples by IA of mIF images (see Table 1). Immune exclusion as determined by both PA and IA was highest in CRC, PDAC, and TNBC. IA differed from PA in 25 (24.3%) cases. Pathologist review of the discordant cases revealed discrepancies were generally due to tumor heterogeneity, thresholding, assessment of cells at the tumor-stroma boundaries, necrosis, and artifacts. Conclusion: Immune exclusion is highly prevalent in the examined carcinoma types. IA-based approaches, guided by pathologist input, offer promise to quantitatively determine tumor immune phenotypes in a quick and systematic way to guide patients to the most effective therapy. Table 1. Pathologist Assessment Classification Image Analysis Classification Tumor Type n Desert (%) Excluded (%) Infiltrated % Desert (%) Excluded (%) Infiltrated % CRC 20 3 (15.0) 14 (70.0) 3 (15.0) 6 (30.0) 11 (55.0) 3 (15.0) NSCLC 21 6 (28.6) 12 (57.1) 3 (14.3) 6 (28.6) 9 (42.9) 6 (28.6) OC 20 3 (15.0) 9 (45.0) 8 (40.0) 9 (45.0) 3 (15.0) 8 (40.0) PDAC 21 6 (28.6) 14 (66.7) 1 (4.8) 7 (33.3) 12 (57.1) 2 (9.5) TNBC 21 3 (14.3) 15 (71.4) 3 (14.3) 4 (19.0) 10 (47.6) 7 (33.3) LMS 20 3 (15.0) 1 (5.0) 16 (80.0) NA NA NA UPS 20 4 (20.0) 1 (5.0) 15 (75.0) NA NA NA Total 143/103 28 (19.6) 66 (46.2) 49 (34.3) 32 (31.1) 45 (43.7) 26 (25.2) Citation Format: Florent Peyraud, Fredrick D. Gootkind, Antoine Italiano, Alban Bessede, Jean-Philippe Guegan, Xinwei Sher, Thomas Schürpf, Guy T. Clifton, Laura A. Dillon. High prevalence of immune exclusion in cancer as determined by pathologist assessment and image analysis [abstract]. In: Proceedings of the American Association for Cancer Research Annual Meeting 2023; Part 1 (Regular and Invited Abstracts); 2023 Apr 14-19; Orlando, FL. Philadelphia (PA): AACR; Cancer Res 2023;83(7_Suppl):Abstract nr 2108.
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关键词
immune exclusion,cancer,pathologist assessment,high prevalence
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