Literature DB >> 30211975

Object-Oriented Segmentation of Cell Nuclei in Fluorescence Microscopy Images.

Can Fahrettin Koyuncu1, Rengul Cetin-Atalay2, Cigdem Gunduz-Demir1,3.   

Abstract

Cell nucleus segmentation remains an open and challenging problem especially to segment nuclei in cell clumps. Splitting a cell clump would be straightforward if the gradients of boundary pixels in-between the nuclei were always higher than the others. However, imperfections may exist: inhomogeneities of pixel intensities in a nucleus may cause to define spurious boundaries whereas insufficient pixel intensity differences at the border of overlapping nuclei may cause to miss some true boundary pixels. In contrast, these imperfections are typically observed at the pixel-level, causing local changes in pixel values without changing the semantics on a large scale. In response to these issues, this article introduces a new nucleus segmentation method that relies on using gradient information not at the pixel level but at the object level. To this end, it proposes to decompose an image into smaller homogeneous subregions, define edge-objects at four different orientations to encode the gradient information at the object level, and devise a merging algorithm, in which the edge-objects vote for subregion pairs along their orientations and the pairs are iteratively merged if they get sufficient votes from multiple orientations. Our experiments on fluorescence microscopy images reveal that this high-level representation and the design of a merging algorithm using edge-objects (gradients at the object level) improve the segmentation results.
© 2018 International Society for Advancement of Cytometry.

Entities:  

Keywords:  fluorescence microscopy imaging; nucleus detection; nucleus segmentation; object-based representation

Mesh:

Year:  2018        PMID: 30211975     DOI: 10.1002/cyto.a.23594

Source DB:  PubMed          Journal:  Cytometry A        ISSN: 1552-4922            Impact factor:   4.355


  2 in total

1.  Whole-cell segmentation of tissue images with human-level performance using large-scale data annotation and deep learning.

Authors:  Noah F Greenwald; Geneva Miller; Erick Moen; Alex Kong; Adam Kagel; Thomas Dougherty; Christine Camacho Fullaway; Brianna J McIntosh; Ke Xuan Leow; Morgan Sarah Schwartz; Cole Pavelchek; Sunny Cui; Isabella Camplisson; Omer Bar-Tal; Jaiveer Singh; Mara Fong; Gautam Chaudhry; Zion Abraham; Jackson Moseley; Shiri Warshawsky; Erin Soon; Shirley Greenbaum; Tyler Risom; Travis Hollmann; Sean C Bendall; Leeat Keren; William Graf; Michael Angelo; David Van Valen
Journal:  Nat Biotechnol       Date:  2021-11-18       Impact factor: 68.164

2.  Investigating the Impact of the Bit Depth of Fluorescence-Stained Images on the Performance of Deep Learning-Based Nuclei Instance Segmentation.

Authors:  Amirreza Mahbod; Gerald Schaefer; Christine Löw; Georg Dorffner; Rupert Ecker; Isabella Ellinger
Journal:  Diagnostics (Basel)       Date:  2021-05-27
  2 in total

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