Deep Interactive Segmentation of Medical Images: A Systematic Review and
Taxonomy
- URL: http://arxiv.org/abs/2311.13964v2
- Date: Tue, 9 Jan 2024 09:10:30 GMT
- Title: Deep Interactive Segmentation of Medical Images: A Systematic Review and
Taxonomy
- Authors: Zdravko Marinov, Paul F. J\"ager, Jan Egger, Jens Kleesiek, Rainer
Stiefelhagen
- Abstract summary: Interactive segmentation is a crucial research area in medical image analysis aiming to boost the efficiency of costly annotations by incorporating human feedback.
Deep learning-based approaches have propelled results to a new level causing a rapid growth in the field with 121 methods proposed in the medical imaging domain alone.
There is a severe lack of comparison across methods which needs to be tackled by standardized baselines and benchmarks.
- Score: 26.719457139819074
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Interactive segmentation is a crucial research area in medical image analysis
aiming to boost the efficiency of costly annotations by incorporating human
feedback. This feedback takes the form of clicks, scribbles, or masks and
allows for iterative refinement of the model output so as to efficiently guide
the system towards the desired behavior. In recent years, deep learning-based
approaches have propelled results to a new level causing a rapid growth in the
field with 121 methods proposed in the medical imaging domain alone. In this
review, we provide a structured overview of this emerging field featuring a
comprehensive taxonomy, a systematic review of existing methods, and an
in-depth analysis of current practices. Based on these contributions, we
discuss the challenges and opportunities in the field. For instance, we find
that there is a severe lack of comparison across methods which needs to be
tackled by standardized baselines and benchmarks.
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