Nuclei & Glands Instance Segmentation in Histology Images: A Narrative
Review
- URL: http://arxiv.org/abs/2208.12460v1
- Date: Fri, 26 Aug 2022 06:52:15 GMT
- Title: Nuclei & Glands Instance Segmentation in Histology Images: A Narrative
Review
- Authors: Esha Sadia Nasir, Arshi Perviaz, Muhammad Moazam Fraz
- Abstract summary: Instance segmentation of nuclei and glands in the histology images is an important step in computational pathology workflow.
With the advent of modern hardware, the recent availability of large-scale quality public datasets and organized grand challenges have seen a surge in automated methods.
In this survey, 126 papers illustrating the AI based methods for nuclei and glands segmentation published in the last five years-2022) are deeply analyzed.
- Score: 0.5893124686141781
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Instance segmentation of nuclei and glands in the histology images is an
important step in computational pathology workflow for cancer diagnosis,
treatment planning and survival analysis. With the advent of modern hardware,
the recent availability of large-scale quality public datasets and the
community organized grand challenges have seen a surge in automated methods
focusing on domain specific challenges, which is pivotal for technology
advancements and clinical translation. In this survey, 126 papers illustrating
the AI based methods for nuclei and glands instance segmentation published in
the last five years (2017-2022) are deeply analyzed, the limitations of current
approaches and the open challenges are discussed. Moreover, the potential
future research direction is presented and the contribution of state-of-the-art
methods is summarized. Further, a generalized summary of publicly available
datasets and a detailed insights on the grand challenges illustrating the top
performing methods specific to each challenge is also provided. Besides, we
intended to give the reader current state of existing research and pointers to
the future directions in developing methods that can be used in clinical
practice enabling improved diagnosis, grading, prognosis, and treatment
planning of cancer. To the best of our knowledge, no previous work has reviewed
the instance segmentation in histology images focusing towards this direction.
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