POSEA: A novel algorithm to evaluate the performance of multi-object instance image segmentation

Author:

Wang Nianchao,Hu Linghao,Walsh Alex J.ORCID

Abstract

Many techniques and software packages have been developed to segment individual cells within microscopy images, necessitating a robust method to evaluate images segmented into a large number of unique objects. Currently, segmented images are often compared with ground-truth images at a pixel level; however, this standard pixel-level approach fails to compute errors due to pixels incorrectly assigned to adjacent objects. Here, we define a per-object segmentation evaluation algorithm (POSEA) that calculates segmentation accuracy metrics for each segmented object relative to a ground truth segmented image. To demonstrate the performance of POSEA, precision, recall, and f-measure metrics are computed and compared with the standard pixel-level evaluation for simulated images and segmented fluorescence microscopy images of three different cell samples. POSEA yields lower accuracy metrics than the standard pixel-level evaluation due to correct accounting of misclassified pixels of adjacent objects. Therefore, POSEA provides accurate evaluation metrics for objects with pixels incorrectly assigned to adjacent objects and is robust for use across a variety of applications that require evaluation of the segmentation of unique adjacent objects.

Funder

CPRIT

NIH R35

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

Reference46 articles.

1. Single-cell network biology for resolving cellular heterogeneity in human diseases;J. Cha;Experimental & molecular medicine,2020

2. Single-cell RNA-seq reveals fibroblast heterogeneity and increased mesenchymal fibroblasts in human fibrotic skin diseases;C.-C. Deng;Nature Communications,2021

3. What can cell biology tell us about heterogeneity in lysosomal storage diseases;V. Gieselmann;Acta Paediatrica,2005

4. Tumor heterogeneity: causes and consequences;A. Marusyk;Biochimica et Biophysica Acta (BBA)-Reviews on Cancer,,2010

5. Tumour heterogeneity and resistance to cancer therapies;I. Dagogo-Jack;Nature reviews Clinical oncology,2018

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