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Main Authors: Haugland, Mathias Ramm, Qadir, Hemin Ali, Balasingham, Ilangko
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.13315
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author Haugland, Mathias Ramm
Qadir, Hemin Ali
Balasingham, Ilangko
author_facet Haugland, Mathias Ramm
Qadir, Hemin Ali
Balasingham, Ilangko
contents To cope with the growing prevalence of colorectal cancer (CRC), screening programs for polyp detection and removal have proven their usefulness. Colonoscopy is considered the best-performing procedure for CRC screening. To ease the examination, deep learning based methods for automatic polyp detection have been developed for conventional white-light imaging (WLI). Compared with WLI, narrow-band imaging (NBI) can improve polyp classification during colonoscopy but requires special equipment. We propose a CycleGAN-based framework to convert images captured with regular WLI to synthetic NBI (SNBI) as a pre-processing method for improving object detection on WLI when NBI is unavailable. This paper first shows that better results for polyp detection can be achieved on NBI compared to a relatively similar dataset of WLI. Secondly, experimental results demonstrate that our proposed modality translation can achieve improved polyp detection on SNBI images generated from WLI compared to the original WLI. This is because our WLI-to-SNBI translation model can enhance the observation of polyp surface patterns in the generated SNBI images.
format Preprint
id arxiv_https___arxiv_org_abs_2401_13315
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Deep Learning for Improved Polyp Detection from Synthetic Narrow-Band Imaging
Haugland, Mathias Ramm
Qadir, Hemin Ali
Balasingham, Ilangko
Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
To cope with the growing prevalence of colorectal cancer (CRC), screening programs for polyp detection and removal have proven their usefulness. Colonoscopy is considered the best-performing procedure for CRC screening. To ease the examination, deep learning based methods for automatic polyp detection have been developed for conventional white-light imaging (WLI). Compared with WLI, narrow-band imaging (NBI) can improve polyp classification during colonoscopy but requires special equipment. We propose a CycleGAN-based framework to convert images captured with regular WLI to synthetic NBI (SNBI) as a pre-processing method for improving object detection on WLI when NBI is unavailable. This paper first shows that better results for polyp detection can be achieved on NBI compared to a relatively similar dataset of WLI. Secondly, experimental results demonstrate that our proposed modality translation can achieve improved polyp detection on SNBI images generated from WLI compared to the original WLI. This is because our WLI-to-SNBI translation model can enhance the observation of polyp surface patterns in the generated SNBI images.
title Deep Learning for Improved Polyp Detection from Synthetic Narrow-Band Imaging
topic Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2401.13315