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MIRIAM: A machine and deep learning single-cell segmentation and quantification pipeline for multi-dimensional tissue images.


ABSTRACT: Increasingly, highly multiplexed tissue imaging methods are used to profile protein expression at the single-cell level. However, a critical limitation is the lack of robust cell segmentation tools for tissue sections. We present Multiplexed Image Resegmentation of Internal Aberrant Membranes (MIRIAM) that combines (a) a pipeline for cell segmentation and quantification that incorporates machine learning-based pixel classification to define cellular compartments, (b) a novel method for extending incomplete cell membranes, and (c) a deep learning-based cell shape descriptor. Using human colonic adenomas as an example, we show that MIRIAM is superior to widely utilized segmentation methods and provides a pipeline that is broadly applicable to different imaging platforms and tissue types.

SUBMITTER: McKinley ET 

PROVIDER: S-EPMC9167255 | biostudies-literature | 2022 Jun

REPOSITORIES: biostudies-literature

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MIRIAM: A machine and deep learning single-cell segmentation and quantification pipeline for multi-dimensional tissue images.

McKinley Eliot T ET   Shao Justin J   Ellis Samuel T ST   Heiser Cody N CN   Roland Joseph T JT   Macedonia Mary C MC   Vega Paige N PN   Shin Susie S   Coffey Robert J RJ   Lau Ken S KS  

Cytometry. Part A : the journal of the International Society for Analytical Cytology 20220207 6


Increasingly, highly multiplexed tissue imaging methods are used to profile protein expression at the single-cell level. However, a critical limitation is the lack of robust cell segmentation tools for tissue sections. We present Multiplexed Image Resegmentation of Internal Aberrant Membranes (MIRIAM) that combines (a) a pipeline for cell segmentation and quantification that incorporates machine learning-based pixel classification to define cellular compartments, (b) a novel method for extending  ...[more]

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