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Automated segmentation of colorectal liver metastasis and liver ablation on contrast-enhanced CT images

OBJECTIVES: Colorectal cancer (CRC), the third most common cancer in the USA, is a leading cause of cancer-related death worldwide. Up to 60% of patients develop liver metastasis (CRLM). Treatments like radiation and ablation therapies require disease segmentation for planning and therapy delivery....

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Autores principales: Anderson, Brian M., Rigaud, Bastien, Lin, Yuan-Mao, Jones, A. Kyle, Kang, HynSeon Christine, Odisio, Bruno C., Brock, Kristy K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9403767/
https://www.ncbi.nlm.nih.gov/pubmed/36033508
http://dx.doi.org/10.3389/fonc.2022.886517
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author Anderson, Brian M.
Rigaud, Bastien
Lin, Yuan-Mao
Jones, A. Kyle
Kang, HynSeon Christine
Odisio, Bruno C.
Brock, Kristy K.
author_facet Anderson, Brian M.
Rigaud, Bastien
Lin, Yuan-Mao
Jones, A. Kyle
Kang, HynSeon Christine
Odisio, Bruno C.
Brock, Kristy K.
author_sort Anderson, Brian M.
collection PubMed
description OBJECTIVES: Colorectal cancer (CRC), the third most common cancer in the USA, is a leading cause of cancer-related death worldwide. Up to 60% of patients develop liver metastasis (CRLM). Treatments like radiation and ablation therapies require disease segmentation for planning and therapy delivery. For ablation, ablation-zone segmentation is required to evaluate disease coverage. We hypothesize that fully convolutional (FC) neural networks, trained using novel methods, will provide rapid and accurate identification and segmentation of CRLM and ablation zones. METHODS: Four FC model styles were investigated: Standard 3D-UNet, Residual 3D-UNet, Dense 3D-UNet, and Hybrid-WNet. Models were trained on 92 patients from the liver tumor segmentation (LiTS) challenge. For the evaluation, we acquired 15 patients from the 3D-IRCADb database, 18 patients from our institution (CRLM = 24, ablation-zone = 19), and those submitted to the LiTS challenge (n = 70). Qualitative evaluations of our institutional data were performed by two board-certified radiologists (interventional and diagnostic) and a radiology-trained physician fellow, using a Likert scale of 1–5. RESULTS: The most accurate model was the Hybrid-WNet. On a patient-by-patient basis in the 3D-IRCADb dataset, the median (min–max) Dice similarity coefficient (DSC) was 0.73 (0.41–0.88), the median surface distance was 1.75 mm (0.57–7.63 mm), and the number of false positives was 1 (0–4). In the LiTS challenge (n = 70), the global DSC was 0.810. The model sensitivity was 98% (47/48) for sites ≥15 mm in diameter. Qualitatively, 100% (24/24; minority vote) of the CRLM and 84% (16/19; majority vote) of the ablation zones had Likert scores ≥4. CONCLUSION: The Hybrid-WNet model provided fast (<30 s) and accurate segmentations of CRLM and ablation zones on contrast-enhanced CT scans, with positive physician reviews.
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spelling pubmed-94037672022-08-26 Automated segmentation of colorectal liver metastasis and liver ablation on contrast-enhanced CT images Anderson, Brian M. Rigaud, Bastien Lin, Yuan-Mao Jones, A. Kyle Kang, HynSeon Christine Odisio, Bruno C. Brock, Kristy K. Front Oncol Oncology OBJECTIVES: Colorectal cancer (CRC), the third most common cancer in the USA, is a leading cause of cancer-related death worldwide. Up to 60% of patients develop liver metastasis (CRLM). Treatments like radiation and ablation therapies require disease segmentation for planning and therapy delivery. For ablation, ablation-zone segmentation is required to evaluate disease coverage. We hypothesize that fully convolutional (FC) neural networks, trained using novel methods, will provide rapid and accurate identification and segmentation of CRLM and ablation zones. METHODS: Four FC model styles were investigated: Standard 3D-UNet, Residual 3D-UNet, Dense 3D-UNet, and Hybrid-WNet. Models were trained on 92 patients from the liver tumor segmentation (LiTS) challenge. For the evaluation, we acquired 15 patients from the 3D-IRCADb database, 18 patients from our institution (CRLM = 24, ablation-zone = 19), and those submitted to the LiTS challenge (n = 70). Qualitative evaluations of our institutional data were performed by two board-certified radiologists (interventional and diagnostic) and a radiology-trained physician fellow, using a Likert scale of 1–5. RESULTS: The most accurate model was the Hybrid-WNet. On a patient-by-patient basis in the 3D-IRCADb dataset, the median (min–max) Dice similarity coefficient (DSC) was 0.73 (0.41–0.88), the median surface distance was 1.75 mm (0.57–7.63 mm), and the number of false positives was 1 (0–4). In the LiTS challenge (n = 70), the global DSC was 0.810. The model sensitivity was 98% (47/48) for sites ≥15 mm in diameter. Qualitatively, 100% (24/24; minority vote) of the CRLM and 84% (16/19; majority vote) of the ablation zones had Likert scores ≥4. CONCLUSION: The Hybrid-WNet model provided fast (<30 s) and accurate segmentations of CRLM and ablation zones on contrast-enhanced CT scans, with positive physician reviews. Frontiers Media S.A. 2022-08-11 /pmc/articles/PMC9403767/ /pubmed/36033508 http://dx.doi.org/10.3389/fonc.2022.886517 Text en Copyright © 2022 Anderson, Rigaud, Lin, Jones, Kang, Odisio and Brock https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Oncology
Anderson, Brian M.
Rigaud, Bastien
Lin, Yuan-Mao
Jones, A. Kyle
Kang, HynSeon Christine
Odisio, Bruno C.
Brock, Kristy K.
Automated segmentation of colorectal liver metastasis and liver ablation on contrast-enhanced CT images
title Automated segmentation of colorectal liver metastasis and liver ablation on contrast-enhanced CT images
title_full Automated segmentation of colorectal liver metastasis and liver ablation on contrast-enhanced CT images
title_fullStr Automated segmentation of colorectal liver metastasis and liver ablation on contrast-enhanced CT images
title_full_unstemmed Automated segmentation of colorectal liver metastasis and liver ablation on contrast-enhanced CT images
title_short Automated segmentation of colorectal liver metastasis and liver ablation on contrast-enhanced CT images
title_sort automated segmentation of colorectal liver metastasis and liver ablation on contrast-enhanced ct images
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9403767/
https://www.ncbi.nlm.nih.gov/pubmed/36033508
http://dx.doi.org/10.3389/fonc.2022.886517
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