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A Deep Learning Model to Automate Skeletal Muscle Area Measurement on Computed Tomography Images

BACKGROUND: Muscle wasting (Sarcopenia) is associated with poor outcomes in cancer patients. Early identification of sarcopenia can facilitate nutritional and exercise intervention. Cross-sectional skeletal muscle (SM) area at the third lumbar vertebra (L3) slice of a computed tomography (CT) image...

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Autores principales: Amarasinghe, Kaushalya C., Lopes, Jamie, Beraldo, Julian, Kiss, Nicole, Bucknell, Nicholas, Everitt, Sarah, Jackson, Price, Litchfield, Cassandra, Denehy, Linda, Blyth, Benjamin J., Siva, Shankar, MacManus, Michael, Ball, David, Li, Jason, Hardcastle, Nicholas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8138051/
https://www.ncbi.nlm.nih.gov/pubmed/34026597
http://dx.doi.org/10.3389/fonc.2021.580806
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author Amarasinghe, Kaushalya C.
Lopes, Jamie
Beraldo, Julian
Kiss, Nicole
Bucknell, Nicholas
Everitt, Sarah
Jackson, Price
Litchfield, Cassandra
Denehy, Linda
Blyth, Benjamin J.
Siva, Shankar
MacManus, Michael
Ball, David
Li, Jason
Hardcastle, Nicholas
author_facet Amarasinghe, Kaushalya C.
Lopes, Jamie
Beraldo, Julian
Kiss, Nicole
Bucknell, Nicholas
Everitt, Sarah
Jackson, Price
Litchfield, Cassandra
Denehy, Linda
Blyth, Benjamin J.
Siva, Shankar
MacManus, Michael
Ball, David
Li, Jason
Hardcastle, Nicholas
author_sort Amarasinghe, Kaushalya C.
collection PubMed
description BACKGROUND: Muscle wasting (Sarcopenia) is associated with poor outcomes in cancer patients. Early identification of sarcopenia can facilitate nutritional and exercise intervention. Cross-sectional skeletal muscle (SM) area at the third lumbar vertebra (L3) slice of a computed tomography (CT) image is increasingly used to assess body composition and calculate SM index (SMI), a validated surrogate marker for sarcopenia in cancer. Manual segmentation of SM requires multiple steps, which limits use in routine clinical practice. This project aims to develop an automatic method to segment L3 muscle in CT scans. METHODS: Attenuation correction CTs from full body PET-CT scans from patients enrolled in two prospective trials were used. The training set consisted of 66 non-small cell lung cancer (NSCLC) patients who underwent curative intent radiotherapy. An additional 42 NSCLC patients prescribed curative intent chemo-radiotherapy from a second trial were used for testing. Each patient had multiple CT scans taken at different time points prior to and post- treatment (147 CTs in the training and validation set and 116 CTs in the independent testing set). Skeletal muscle at L3 vertebra was manually segmented by two observers, according to the Alberta protocol to serve as ground truth labels. This included 40 images segmented by both observers to measure inter-observer variation. An ensemble of 2.5D fully convolutional neural networks (U-Nets) was used to perform the segmentation. The final layer of U-Net produced the binary classification of the pixels into muscle and non-muscle area. The model performance was calculated using Dice score and absolute percentage error (APE) in skeletal muscle area between manual and automated contours. RESULTS: We trained five 2.5D U-Nets using 5-fold cross validation and used them to predict the contours in the testing set. The model achieved a mean Dice score of 0.92 and an APE of 3.1% on the independent testing set. This was similar to inter-observer variation of 0.96 and 2.9% for mean Dice and APE respectively. We further quantified the performance of sarcopenia classification using computer generated skeletal muscle area. To meet a clinical diagnosis of sarcopenia based on Alberta protocol the model achieved a sensitivity of 84% and a specificity of 95%. CONCLUSIONS: This work demonstrates an automated method for accurate and reproducible segmentation of skeletal muscle area at L3. This is an efficient tool for large scale or routine computation of skeletal muscle area in cancer patients which may have applications on low quality CTs acquired as part of PET/CT studies for staging and surveillance of patients with cancer.
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spelling pubmed-81380512021-05-22 A Deep Learning Model to Automate Skeletal Muscle Area Measurement on Computed Tomography Images Amarasinghe, Kaushalya C. Lopes, Jamie Beraldo, Julian Kiss, Nicole Bucknell, Nicholas Everitt, Sarah Jackson, Price Litchfield, Cassandra Denehy, Linda Blyth, Benjamin J. Siva, Shankar MacManus, Michael Ball, David Li, Jason Hardcastle, Nicholas Front Oncol Oncology BACKGROUND: Muscle wasting (Sarcopenia) is associated with poor outcomes in cancer patients. Early identification of sarcopenia can facilitate nutritional and exercise intervention. Cross-sectional skeletal muscle (SM) area at the third lumbar vertebra (L3) slice of a computed tomography (CT) image is increasingly used to assess body composition and calculate SM index (SMI), a validated surrogate marker for sarcopenia in cancer. Manual segmentation of SM requires multiple steps, which limits use in routine clinical practice. This project aims to develop an automatic method to segment L3 muscle in CT scans. METHODS: Attenuation correction CTs from full body PET-CT scans from patients enrolled in two prospective trials were used. The training set consisted of 66 non-small cell lung cancer (NSCLC) patients who underwent curative intent radiotherapy. An additional 42 NSCLC patients prescribed curative intent chemo-radiotherapy from a second trial were used for testing. Each patient had multiple CT scans taken at different time points prior to and post- treatment (147 CTs in the training and validation set and 116 CTs in the independent testing set). Skeletal muscle at L3 vertebra was manually segmented by two observers, according to the Alberta protocol to serve as ground truth labels. This included 40 images segmented by both observers to measure inter-observer variation. An ensemble of 2.5D fully convolutional neural networks (U-Nets) was used to perform the segmentation. The final layer of U-Net produced the binary classification of the pixels into muscle and non-muscle area. The model performance was calculated using Dice score and absolute percentage error (APE) in skeletal muscle area between manual and automated contours. RESULTS: We trained five 2.5D U-Nets using 5-fold cross validation and used them to predict the contours in the testing set. The model achieved a mean Dice score of 0.92 and an APE of 3.1% on the independent testing set. This was similar to inter-observer variation of 0.96 and 2.9% for mean Dice and APE respectively. We further quantified the performance of sarcopenia classification using computer generated skeletal muscle area. To meet a clinical diagnosis of sarcopenia based on Alberta protocol the model achieved a sensitivity of 84% and a specificity of 95%. CONCLUSIONS: This work demonstrates an automated method for accurate and reproducible segmentation of skeletal muscle area at L3. This is an efficient tool for large scale or routine computation of skeletal muscle area in cancer patients which may have applications on low quality CTs acquired as part of PET/CT studies for staging and surveillance of patients with cancer. Frontiers Media S.A. 2021-05-07 /pmc/articles/PMC8138051/ /pubmed/34026597 http://dx.doi.org/10.3389/fonc.2021.580806 Text en Copyright © 2021 Amarasinghe, Lopes, Beraldo, Kiss, Bucknell, Everitt, Jackson, Litchfield, Denehy, Blyth, Siva, MacManus, Ball, Li and Hardcastle 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
Amarasinghe, Kaushalya C.
Lopes, Jamie
Beraldo, Julian
Kiss, Nicole
Bucknell, Nicholas
Everitt, Sarah
Jackson, Price
Litchfield, Cassandra
Denehy, Linda
Blyth, Benjamin J.
Siva, Shankar
MacManus, Michael
Ball, David
Li, Jason
Hardcastle, Nicholas
A Deep Learning Model to Automate Skeletal Muscle Area Measurement on Computed Tomography Images
title A Deep Learning Model to Automate Skeletal Muscle Area Measurement on Computed Tomography Images
title_full A Deep Learning Model to Automate Skeletal Muscle Area Measurement on Computed Tomography Images
title_fullStr A Deep Learning Model to Automate Skeletal Muscle Area Measurement on Computed Tomography Images
title_full_unstemmed A Deep Learning Model to Automate Skeletal Muscle Area Measurement on Computed Tomography Images
title_short A Deep Learning Model to Automate Skeletal Muscle Area Measurement on Computed Tomography Images
title_sort deep learning model to automate skeletal muscle area measurement on computed tomography images
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8138051/
https://www.ncbi.nlm.nih.gov/pubmed/34026597
http://dx.doi.org/10.3389/fonc.2021.580806
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