Evaluation of Deep Learning Strategies for Nucleus Segmentation in Fluorescence Images

Juan C. Caicedo(Broad Institute), Jonathan Roth(Broad Institute), Allen Goodman(Broad Institute), Tim Becker(Broad Institute), Kyle W. Karhohs(Broad Institute), Matthieu Broisin(Broad Institute), Csaba Molnár(Broad Institute), Claire McQuin(Broad Institute), Shantanu Singh(Broad Institute), Fabian J. Theis(Center for Environmental Health), Anne E. Carpenter(Broad Institute)
Cytometry Part A
July 16, 2019
Cited by 331Open Access
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Abstract

Identifying nuclei is often a critical first step in analyzing microscopy images of cells and classical image processing algorithms are most commonly used for this task. Recent developments in deep learning can yield superior accuracy, but typical evaluation metrics for nucleus segmentation do not satisfactorily capture error modes that are relevant in cellular images. We present an evaluation framework to measure accuracy, types of errors, and computational efficiency; and use it to compare deep learning strategies and classical approaches. We publicly release a set of 23,165 manually annotated nuclei and source code to reproduce experiments and run the proposed evaluation methodology. Our evaluation framework shows that deep learning improves accuracy and can reduce the number of biologically relevant errors by half. © 2019 The Authors. Cytometry Part A published by Wiley Periodicals, Inc. on behalf of International Society for Advancement of Cytometry.


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