Spatial UMAP and Image Cytometry for Topographic Immuno-oncology Biomarker Discovery.

生物标志物 医学 质量细胞仪 肿瘤微环境 癌症研究 免疫系统 癌症
作者
Nicolas A. Giraldo,Sneha Berry,Etienne Becht,Deniz Ates,Kara M. Schenk,Elizabeth L. Engle,Benjamin Green,Peter Nguyen,Abha Soni,Julie E. Stein,Farah Succaria,Aleksandra Ogurtsova,Haiying Xu,Raphael Gottardo,Robert A. Anders,Evan J. Lipson,Ludmila Danilova,Alexander S. Baras,Janis M. Taube
出处
期刊:Cancer immunology research [American Association for Cancer Research]
卷期号:9 (11): 1262-1269
标识
DOI:10.1158/2326-6066.cir-21-0015
摘要

Multiplex immunofluorescence (mIF) can detail spatial relationships and complex cell phenotypes in the tumor microenvironment (TME). However, the analysis and visualization of mIF data can be complex and time-consuming. Here, we used tumor specimens from 93 patients with metastatic melanoma to develop and validate a mIF data analysis pipeline using established flow cytometry workflows (image cytometry). Unlike flow cytometry, spatial information from the TME was conserved at single-cell resolution. A spatial uniform manifold approximation and projection (UMAP) was constructed using the image cytometry output. Spatial UMAP subtraction analysis (survivors vs. nonsurvivors at 5 years) was used to identify topographic and coexpression signatures with positive or negative prognostic impact. Cell densities and proportions identified by image cytometry showed strong correlations when compared with those obtained using gold-standard, digital pathology software (R2 > 0.8). The associated spatial UMAP highlighted “immune neighborhoods” and associated topographic immunoactive protein expression patterns. We found that PD-L1 and PD-1 expression intensity was spatially encoded—the highest PD-L1 expression intensity was observed on CD163+ cells in neighborhoods with high CD8+ cell density, and the highest PD-1 expression intensity was observed on CD8+ cells in neighborhoods with dense arrangements of tumor cells. Spatial UMAP subtraction analysis revealed numerous spatial clusters associated with clinical outcome. The variables represented in the key clusters from the unsupervised UMAP analysis were validated using established, supervised approaches. In conclusion, image cytometry and the spatial UMAPs presented herein are powerful tools for the visualization and interpretation of single-cell, spatially resolved mIF data and associated topographic biomarker development.

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