Cargando…

An AI-Based Colonic Polyp Classifier for Colorectal Cancer Screening Using Low-Dose Abdominal CT

Among the non-invasive Colorectal cancer (CRC) screening approaches, Computed Tomography Colonography (CTC) and Virtual Colonoscopy (VC), are much more accurate. This work proposes an AI-based polyp detection framework for virtual colonoscopy (VC). Two main steps are addressed in this work: automati...

Descripción completa

Detalles Bibliográficos
Autores principales: Alkabbany, Islam, Ali, Asem M., Mohamed, Mostafa, Elshazly, Salwa M., Farag, Aly
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9782078/
https://www.ncbi.nlm.nih.gov/pubmed/36560132
http://dx.doi.org/10.3390/s22249761
_version_ 1784857253016240128
author Alkabbany, Islam
Ali, Asem M.
Mohamed, Mostafa
Elshazly, Salwa M.
Farag, Aly
author_facet Alkabbany, Islam
Ali, Asem M.
Mohamed, Mostafa
Elshazly, Salwa M.
Farag, Aly
author_sort Alkabbany, Islam
collection PubMed
description Among the non-invasive Colorectal cancer (CRC) screening approaches, Computed Tomography Colonography (CTC) and Virtual Colonoscopy (VC), are much more accurate. This work proposes an AI-based polyp detection framework for virtual colonoscopy (VC). Two main steps are addressed in this work: automatic segmentation to isolate the colon region from its background, and automatic polyp detection. Moreover, we evaluate the performance of the proposed framework on low-dose Computed Tomography (CT) scans. We build on our visualization approach, Fly-In (FI), which provides “filet”-like projections of the internal surface of the colon. The performance of the Fly-In approach confirms its ability with helping gastroenterologists, and it holds a great promise for combating CRC. In this work, these 2D projections of FI are fused with the 3D colon representation to generate new synthetic images. The synthetic images are used to train a RetinaNet model to detect polyps. The trained model has a [Formula: see text] f1-score and [Formula: see text] sensitivity. Furthermore, we study the effect of dose variation in CT scans on the performance of the the FI approach in polyp visualization. A simulation platform is developed for CTC visualization using FI, for regular CTC and low-dose CTC. This is accomplished using a novel AI restoration algorithm that enhances the Low-Dose CT images so that a 3D colon can be successfully reconstructed and visualized using the FI approach. Three senior board-certified radiologists evaluated the framework for the peak voltages of 30 KV, and the average relative sensitivities of the platform were [Formula: see text] , whereas the 60 KV peak voltage produced average relative sensitivities of [Formula: see text].
format Online
Article
Text
id pubmed-9782078
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-97820782022-12-24 An AI-Based Colonic Polyp Classifier for Colorectal Cancer Screening Using Low-Dose Abdominal CT Alkabbany, Islam Ali, Asem M. Mohamed, Mostafa Elshazly, Salwa M. Farag, Aly Sensors (Basel) Article Among the non-invasive Colorectal cancer (CRC) screening approaches, Computed Tomography Colonography (CTC) and Virtual Colonoscopy (VC), are much more accurate. This work proposes an AI-based polyp detection framework for virtual colonoscopy (VC). Two main steps are addressed in this work: automatic segmentation to isolate the colon region from its background, and automatic polyp detection. Moreover, we evaluate the performance of the proposed framework on low-dose Computed Tomography (CT) scans. We build on our visualization approach, Fly-In (FI), which provides “filet”-like projections of the internal surface of the colon. The performance of the Fly-In approach confirms its ability with helping gastroenterologists, and it holds a great promise for combating CRC. In this work, these 2D projections of FI are fused with the 3D colon representation to generate new synthetic images. The synthetic images are used to train a RetinaNet model to detect polyps. The trained model has a [Formula: see text] f1-score and [Formula: see text] sensitivity. Furthermore, we study the effect of dose variation in CT scans on the performance of the the FI approach in polyp visualization. A simulation platform is developed for CTC visualization using FI, for regular CTC and low-dose CTC. This is accomplished using a novel AI restoration algorithm that enhances the Low-Dose CT images so that a 3D colon can be successfully reconstructed and visualized using the FI approach. Three senior board-certified radiologists evaluated the framework for the peak voltages of 30 KV, and the average relative sensitivities of the platform were [Formula: see text] , whereas the 60 KV peak voltage produced average relative sensitivities of [Formula: see text]. MDPI 2022-12-13 /pmc/articles/PMC9782078/ /pubmed/36560132 http://dx.doi.org/10.3390/s22249761 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Alkabbany, Islam
Ali, Asem M.
Mohamed, Mostafa
Elshazly, Salwa M.
Farag, Aly
An AI-Based Colonic Polyp Classifier for Colorectal Cancer Screening Using Low-Dose Abdominal CT
title An AI-Based Colonic Polyp Classifier for Colorectal Cancer Screening Using Low-Dose Abdominal CT
title_full An AI-Based Colonic Polyp Classifier for Colorectal Cancer Screening Using Low-Dose Abdominal CT
title_fullStr An AI-Based Colonic Polyp Classifier for Colorectal Cancer Screening Using Low-Dose Abdominal CT
title_full_unstemmed An AI-Based Colonic Polyp Classifier for Colorectal Cancer Screening Using Low-Dose Abdominal CT
title_short An AI-Based Colonic Polyp Classifier for Colorectal Cancer Screening Using Low-Dose Abdominal CT
title_sort ai-based colonic polyp classifier for colorectal cancer screening using low-dose abdominal ct
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9782078/
https://www.ncbi.nlm.nih.gov/pubmed/36560132
http://dx.doi.org/10.3390/s22249761
work_keys_str_mv AT alkabbanyislam anaibasedcolonicpolypclassifierforcolorectalcancerscreeningusinglowdoseabdominalct
AT aliasemm anaibasedcolonicpolypclassifierforcolorectalcancerscreeningusinglowdoseabdominalct
AT mohamedmostafa anaibasedcolonicpolypclassifierforcolorectalcancerscreeningusinglowdoseabdominalct
AT elshazlysalwam anaibasedcolonicpolypclassifierforcolorectalcancerscreeningusinglowdoseabdominalct
AT faragaly anaibasedcolonicpolypclassifierforcolorectalcancerscreeningusinglowdoseabdominalct
AT alkabbanyislam aibasedcolonicpolypclassifierforcolorectalcancerscreeningusinglowdoseabdominalct
AT aliasemm aibasedcolonicpolypclassifierforcolorectalcancerscreeningusinglowdoseabdominalct
AT mohamedmostafa aibasedcolonicpolypclassifierforcolorectalcancerscreeningusinglowdoseabdominalct
AT elshazlysalwam aibasedcolonicpolypclassifierforcolorectalcancerscreeningusinglowdoseabdominalct
AT faragaly aibasedcolonicpolypclassifierforcolorectalcancerscreeningusinglowdoseabdominalct