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Main Authors: Burlutskiy, Nikolay, Kekic, Marija, de la Torre, Jordi, Plewa, Philipp, Boroumand, Mehdi, Jurkowska, Julia, Venovski, Borjan, Biagi, Maria Chiara, Hagos, Yeman Brhane, Malinowska-Traczyk, Roksana, Wang, Yibo, Zalewski, Jacek, Sawczuk, Paula, Pintarić, Karlo, Yousefi, Fariba, Hultin, Leif
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2411.17260
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author Burlutskiy, Nikolay
Kekic, Marija
de la Torre, Jordi
Plewa, Philipp
Boroumand, Mehdi
Jurkowska, Julia
Venovski, Borjan
Biagi, Maria Chiara
Hagos, Yeman Brhane
Malinowska-Traczyk, Roksana
Wang, Yibo
Zalewski, Jacek
Sawczuk, Paula
Pintarić, Karlo
Yousefi, Fariba
Hultin, Leif
author_facet Burlutskiy, Nikolay
Kekic, Marija
de la Torre, Jordi
Plewa, Philipp
Boroumand, Mehdi
Jurkowska, Julia
Venovski, Borjan
Biagi, Maria Chiara
Hagos, Yeman Brhane
Malinowska-Traczyk, Roksana
Wang, Yibo
Zalewski, Jacek
Sawczuk, Paula
Pintarić, Karlo
Yousefi, Fariba
Hultin, Leif
contents Detecting and quantifying bone changes in micro-CT scans of rodents is a common task in preclinical drug development studies. However, this task is manual, time-consuming and subject to inter- and intra-observer variability. In 2024, Anonymous Company organized an internal challenge to develop models for automatic bone quantification. We prepared and annotated a high-quality dataset of 3D $μ$CT bone scans from $83$ mice. The challenge attracted over $80$ AI scientists from around the globe who formed $23$ teams. The participants were tasked with developing a solution to identify the plane where the bone growth happens, which is essential for fully automatic segmentation of trabecular bone. As a result, six computer vision solutions were developed that can accurately identify the location of the growth plate plane. The solutions achieved the mean absolute error of $1.91\pm0.87$ planes from the ground truth on the test set, an accuracy level acceptable for practical use by a radiologist. The annotated 3D scans dataset along with the six solutions and source code, is being made public, providing researchers with opportunities to develop and benchmark their own approaches. The code, trained models, and the data will be shared.
format Preprint
id arxiv_https___arxiv_org_abs_2411_17260
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MiceBoneChallenge: Micro-CT public dataset and six solutions for automatic growth plate detection in micro-CT mice bone scans
Burlutskiy, Nikolay
Kekic, Marija
de la Torre, Jordi
Plewa, Philipp
Boroumand, Mehdi
Jurkowska, Julia
Venovski, Borjan
Biagi, Maria Chiara
Hagos, Yeman Brhane
Malinowska-Traczyk, Roksana
Wang, Yibo
Zalewski, Jacek
Sawczuk, Paula
Pintarić, Karlo
Yousefi, Fariba
Hultin, Leif
Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
Machine Learning
Detecting and quantifying bone changes in micro-CT scans of rodents is a common task in preclinical drug development studies. However, this task is manual, time-consuming and subject to inter- and intra-observer variability. In 2024, Anonymous Company organized an internal challenge to develop models for automatic bone quantification. We prepared and annotated a high-quality dataset of 3D $μ$CT bone scans from $83$ mice. The challenge attracted over $80$ AI scientists from around the globe who formed $23$ teams. The participants were tasked with developing a solution to identify the plane where the bone growth happens, which is essential for fully automatic segmentation of trabecular bone. As a result, six computer vision solutions were developed that can accurately identify the location of the growth plate plane. The solutions achieved the mean absolute error of $1.91\pm0.87$ planes from the ground truth on the test set, an accuracy level acceptable for practical use by a radiologist. The annotated 3D scans dataset along with the six solutions and source code, is being made public, providing researchers with opportunities to develop and benchmark their own approaches. The code, trained models, and the data will be shared.
title MiceBoneChallenge: Micro-CT public dataset and six solutions for automatic growth plate detection in micro-CT mice bone scans
topic Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2411.17260