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A high-throughput semi-automated bone segmentation workflow for murine hindpaw micro-CT datasets

INTRODUCTION: Micro-computed tomography (μCT) is a valuable imaging modality for longitudinal quantification of bone volumes to identify disease or treatment effects for a broad range of conditions that affect bone health. Complex structures, such as the hindpaw with up to 31 distinct bones in mice,...

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Autores principales: Kenney, H. Mark, Peng, Yue, Chen, Kiana L., Ajalik, Raquel, Schnur, Lindsay, Wood, Ronald W., Schwarz, Edward M., Awad, Hani A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8816671/
https://www.ncbi.nlm.nih.gov/pubmed/35146075
http://dx.doi.org/10.1016/j.bonr.2022.101167
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author Kenney, H. Mark
Peng, Yue
Chen, Kiana L.
Ajalik, Raquel
Schnur, Lindsay
Wood, Ronald W.
Schwarz, Edward M.
Awad, Hani A.
author_facet Kenney, H. Mark
Peng, Yue
Chen, Kiana L.
Ajalik, Raquel
Schnur, Lindsay
Wood, Ronald W.
Schwarz, Edward M.
Awad, Hani A.
author_sort Kenney, H. Mark
collection PubMed
description INTRODUCTION: Micro-computed tomography (μCT) is a valuable imaging modality for longitudinal quantification of bone volumes to identify disease or treatment effects for a broad range of conditions that affect bone health. Complex structures, such as the hindpaw with up to 31 distinct bones in mice, have considerable analytic potential, but quantification is often limited to a single bone volume metric due to the intensive effort of manual segmentation. Herein, we introduce a high-throughput, user-friendly, and semi-automated method for segmentation of murine hindpaw μCT datasets. METHODS: In vivo μCT was performed on male (n = 4; 2–8-months) and female (n = 4; 2–5-months) C57BL/6 mice longitudinally each month. Additional 9.5-month-old male C57BL/6 hindpaws (n = 6 hindpaws) were imaged by ex vivo μCT to investigate the effects of resolution and integration time on analysis outcomes. The DICOMs were exported to Amira software for the watershed-based segmentation, and watershed markers were generated automatically at approximately 80% accuracy before user correction. The semi-automated segmentation method utilizes the original data, binary mask, and bone-specific markers that expand to the full volume of the bone using watershed algorithms. RESULTS: Compared to the conventional manual segmentation using Scanco software, the semi-automated approach produced similar raw bone volumes. The semi-automated segmentation also demonstrated a significant reduction in segmentation time for both experienced and novice users compared to standard manual segmentation. ICCs between experienced and novice users were >0.9 (excellent reliability) for all but 4 bones. DISCUSSION: The described semi-automated segmentation approach provides remarkable reliability and throughput advantages. Adoption of the semi-automated segmentation approach will provide standardization and reliability of bone volume measures across experienced and novice users and between institutions. The application of this model provides a considerable strategic advantage to accelerate various research opportunities in pre-clinical bone and joint analysis towards clinical translation.
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spelling pubmed-88166712022-02-09 A high-throughput semi-automated bone segmentation workflow for murine hindpaw micro-CT datasets Kenney, H. Mark Peng, Yue Chen, Kiana L. Ajalik, Raquel Schnur, Lindsay Wood, Ronald W. Schwarz, Edward M. Awad, Hani A. Bone Rep Full Length Article INTRODUCTION: Micro-computed tomography (μCT) is a valuable imaging modality for longitudinal quantification of bone volumes to identify disease or treatment effects for a broad range of conditions that affect bone health. Complex structures, such as the hindpaw with up to 31 distinct bones in mice, have considerable analytic potential, but quantification is often limited to a single bone volume metric due to the intensive effort of manual segmentation. Herein, we introduce a high-throughput, user-friendly, and semi-automated method for segmentation of murine hindpaw μCT datasets. METHODS: In vivo μCT was performed on male (n = 4; 2–8-months) and female (n = 4; 2–5-months) C57BL/6 mice longitudinally each month. Additional 9.5-month-old male C57BL/6 hindpaws (n = 6 hindpaws) were imaged by ex vivo μCT to investigate the effects of resolution and integration time on analysis outcomes. The DICOMs were exported to Amira software for the watershed-based segmentation, and watershed markers were generated automatically at approximately 80% accuracy before user correction. The semi-automated segmentation method utilizes the original data, binary mask, and bone-specific markers that expand to the full volume of the bone using watershed algorithms. RESULTS: Compared to the conventional manual segmentation using Scanco software, the semi-automated approach produced similar raw bone volumes. The semi-automated segmentation also demonstrated a significant reduction in segmentation time for both experienced and novice users compared to standard manual segmentation. ICCs between experienced and novice users were >0.9 (excellent reliability) for all but 4 bones. DISCUSSION: The described semi-automated segmentation approach provides remarkable reliability and throughput advantages. Adoption of the semi-automated segmentation approach will provide standardization and reliability of bone volume measures across experienced and novice users and between institutions. The application of this model provides a considerable strategic advantage to accelerate various research opportunities in pre-clinical bone and joint analysis towards clinical translation. Elsevier 2022-01-20 /pmc/articles/PMC8816671/ /pubmed/35146075 http://dx.doi.org/10.1016/j.bonr.2022.101167 Text en © 2022 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Full Length Article
Kenney, H. Mark
Peng, Yue
Chen, Kiana L.
Ajalik, Raquel
Schnur, Lindsay
Wood, Ronald W.
Schwarz, Edward M.
Awad, Hani A.
A high-throughput semi-automated bone segmentation workflow for murine hindpaw micro-CT datasets
title A high-throughput semi-automated bone segmentation workflow for murine hindpaw micro-CT datasets
title_full A high-throughput semi-automated bone segmentation workflow for murine hindpaw micro-CT datasets
title_fullStr A high-throughput semi-automated bone segmentation workflow for murine hindpaw micro-CT datasets
title_full_unstemmed A high-throughput semi-automated bone segmentation workflow for murine hindpaw micro-CT datasets
title_short A high-throughput semi-automated bone segmentation workflow for murine hindpaw micro-CT datasets
title_sort high-throughput semi-automated bone segmentation workflow for murine hindpaw micro-ct datasets
topic Full Length Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8816671/
https://www.ncbi.nlm.nih.gov/pubmed/35146075
http://dx.doi.org/10.1016/j.bonr.2022.101167
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