Toward reproducible, scalable, and robust data analysis across multiplex tissue imaging platforms

面向跨多重组织成像平台的可重复、可扩展和稳健的数据分析

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作者:Erik A Burlingame ,Jennifer Eng ,Guillaume Thibault ,Koei Chin ,Joe W Gray ,Young Hwan Chang

Abstract

The emergence of megascale single-cell multiplex tissue imaging (MTI) datasets necessitates reproducible, scalable, and robust tools for cell phenotyping and spatial analysis. We developed open-source, graphics processing unit (GPU)-accelerated tools for intensity normalization, phenotyping, and microenvironment characterization. We deploy the toolkit on a human breast cancer (BC) tissue microarray stained by cyclic immunofluorescence and present the first cross-validation of breast cancer cell phenotypes derived by using two different MTI platforms. Finally, we demonstrate an integrative phenotypic and spatial analysis revealing BC subtype-specific features.

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