CVJan 22, 2024

Colorectal Polyp Segmentation in the Deep Learning Era: A Comprehensive Survey

arXiv:2401.11734v125 citationsh-index: 30
Originality Synthesis-oriented
AI Analysis

It addresses the need for a comprehensive survey to help researchers quickly understand techniques and trends in colorectal polyp segmentation, an essential medical image analysis problem, but it is incremental as it synthesizes existing work.

This paper provides a systematic review of deep learning-based colorectal polyp segmentation methods from 2014 to 2023, covering 115 papers, including taxonomy, dataset analysis, evaluation metrics, and performance analysis of 40 state-of-the-art models.

Colorectal polyp segmentation (CPS), an essential problem in medical image analysis, has garnered growing research attention. Recently, the deep learning-based model completely overwhelmed traditional methods in the field of CPS, and more and more deep CPS methods have emerged, bringing the CPS into the deep learning era. To help the researchers quickly grasp the main techniques, datasets, evaluation metrics, challenges, and trending of deep CPS, this paper presents a systematic and comprehensive review of deep-learning-based CPS methods from 2014 to 2023, a total of 115 technical papers. In particular, we first provide a comprehensive review of the current deep CPS with a novel taxonomy, including network architectures, level of supervision, and learning paradigm. More specifically, network architectures include eight subcategories, the level of supervision comprises six subcategories, and the learning paradigm encompasses 12 subcategories, totaling 26 subcategories. Then, we provided a comprehensive analysis the characteristics of each dataset, including the number of datasets, annotation types, image resolution, polyp size, contrast values, and polyp location. Following that, we summarized CPS's commonly used evaluation metrics and conducted a detailed analysis of 40 deep SOTA models, including out-of-distribution generalization and attribute-based performance analysis. Finally, we discussed deep learning-based CPS methods' main challenges and opportunities.

Foundations

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