Automatic polyp image segmentation and cancer prediction based on deep learning

Author:

Shen Tongping,Li Xueguang

Abstract

The similar shape and texture of colonic polyps and normal mucosal tissues lead to low accuracy of medical image segmentation algorithms. To solve these problems, we proposed a polyp image segmentation algorithm based on deep learning technology, which combines a HarDNet module, attention module, and multi-scale coding module with the U-Net network as the basic framework, including two stages of coding and decoding. In the encoder stage, HarDNet68 is used as the main backbone network to extract features using four null space convolutional pooling pyramids while improving the inference speed and computational efficiency; the attention mechanism module is added to the encoding and decoding network; then the model can learn the global and local feature information of the polyp image, thus having the ability to process information in both spatial and channel dimensions, to solve the problem of information loss in the encoding stage of the network and improving the performance of the segmentation network. Through comparative analysis with other algorithms, we can find that the network of this paper has a certain degree of improvement in segmentation accuracy and operation speed, which can effectively assist physicians in removing abnormal colorectal tissues and thus reduce the probability of polyp cancer, and improve the survival rate and quality of life of patients. Also, it has good generalization ability, which can provide technical support and prevention for colon cancer.

Publisher

Frontiers Media SA

Subject

Cancer Research,Oncology

Reference45 articles.

1. Global cancer statistics 2020: GLOBOCAN estimates of incidence and mortality worldwide for 36 cancers in 185 countries;Sung;Ca: Cancer J Clin,2021

2. Guidelines for colonoscopy surveillance after screening and polypectomy: A consensus update by the US multi-society task force on colorectal cancer;Lieberman;Gastroenterology,2012

3. Adenoma detection rate and risk of colorectal cancer and death;Corley;New Engl J Med,2014

4. Wireless capsule endoscopy: A new tool for cancer screening in the colon with deep-learning-based polyp recognition;Jia,2019

5. Digital morphometric characterization of mucosal surface lesion patterns under magnification colonoscopy;Saul;Analytical Quantitative Cytology Histol,2009

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