Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Polyp segmentation on colonoscopy image using improved Unet and transfer learning

View through CrossRef
Colorectal cancer is among the most common malignancies and can develop from high-risk colon polyps. Colonoscopy remains the gold-standard investigation for colorectal cancer screening. The procedure could benefit greatly from using AI models for automatic polyp segmentation, which provide valuable insights for improving colon polyp dection. Additionally, it will support gastroenterologists during image analysation to correctly choose the treatment with less time. In this paper, the framework of polyp image segmentation is developed by a deep learning approach, especially a convolutional neural network. The proposed framework is based on improved Unet architecture to obtain the segmented polyp image. We also propose to use the transfer learning method to transfer the knowledge learned from the ImageNet general image dataset to the endoscopic image field. This framework used the Kvasir-SEG database, which contains 1000 GI polyp images and corresponding segmentation masks according to annotation by medical experts. The results confirmed that our proposed method outperform the state-of-the-art polyp segmentation methods with 94.79% dice, 90.08% IOU, 98.68% recall, and 92.07% precision.
Title: Polyp segmentation on colonoscopy image using improved Unet and transfer learning
Description:
Colorectal cancer is among the most common malignancies and can develop from high-risk colon polyps.
Colonoscopy remains the gold-standard investigation for colorectal cancer screening.
The procedure could benefit greatly from using AI models for automatic polyp segmentation, which provide valuable insights for improving colon polyp dection.
Additionally, it will support gastroenterologists during image analysation to correctly choose the treatment with less time.
In this paper, the framework of polyp image segmentation is developed by a deep learning approach, especially a convolutional neural network.
The proposed framework is based on improved Unet architecture to obtain the segmented polyp image.
We also propose to use the transfer learning method to transfer the knowledge learned from the ImageNet general image dataset to the endoscopic image field.
This framework used the Kvasir-SEG database, which contains 1000 GI polyp images and corresponding segmentation masks according to annotation by medical experts.
The results confirmed that our proposed method outperform the state-of-the-art polyp segmentation methods with 94.
79% dice, 90.
08% IOU, 98.
68% recall, and 92.
07% precision.

Related Results

PTH-041 Polyp Cancers: When is Surgical Resection Needed ?
PTH-041 Polyp Cancers: When is Surgical Resection Needed ?
Introduction The Bowel Cancer Screening Program (BCSP) has been successful in detecting early stage bowel cancer, including polyp cancers. Most polyp cancers ar...
G-EYE Colonoscopy Is Superior to Standard Colonoscopy for Increasing Adenoma/Polyp Detection Rate
G-EYE Colonoscopy Is Superior to Standard Colonoscopy for Increasing Adenoma/Polyp Detection Rate
Abstract Background Colorectal cancer (CRC) is one of the most common cancers worldwide. Most CRCs develop from malignant potent...
VM-UNet++ research on crack image segmentation based on improved VM-UNet
VM-UNet++ research on crack image segmentation based on improved VM-UNet
Abstract Cracks are common defects in physical structures, and if not detected and addressed in a timely manner, they can pose a severe threat to the overall safety of th...
Low-Fibre Diet as an Option for Bowel Preparation Prior to Colonoscopy: ARandomised Controlled Clinical Trial
Low-Fibre Diet as an Option for Bowel Preparation Prior to Colonoscopy: ARandomised Controlled Clinical Trial
Introduction: Bowel preparation for colonoscopy plays an important role in the evaluation of the colon. Many methods for preparing the colon for colonoscopy do not work well. Aim:...
MCA-UNet: A Multi-Scale Context and Attention U-Net for Colorectal Polyp Segmentation
MCA-UNet: A Multi-Scale Context and Attention U-Net for Colorectal Polyp Segmentation
Abstract Introduction To propose an improved U-Net-based segmentation model for colorectal polyp segmentation, aiming to addres...
Colorectal Polyp Image Detection and Classification through Grayscale Images and Deep Learning
Colorectal Polyp Image Detection and Classification through Grayscale Images and Deep Learning
Colonoscopy screening and colonoscopic polypectomy can decrease the incidence and mortality rate of colorectal cancer (CRC). The adenoma detection rate and accuracy of diagnosis of...
ARTIFICIAL INTELLIGENCE APPLICATION IN COLONOSCOPY SCREENING: A LITERATURE REVIEW
ARTIFICIAL INTELLIGENCE APPLICATION IN COLONOSCOPY SCREENING: A LITERATURE REVIEW
Background: Colorectal cancer (CRC) is the third most commonly diagnosed cancer globally and remains a leading cause of cancer-related deaths. Despite the effectiveness of colonosc...
Research on Polyp Segmentation Method Using PANet Based on Contrastive Learning
Research on Polyp Segmentation Method Using PANet Based on Contrastive Learning
Abstract The early screening of colorectal cancer primarily relies on the identification and removal of polyps during colonoscopy. However, the high similarity betw...

Back to Top