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Tytuł pozycji:

Clinical evaluation of fully automated thigh muscle and adipose tissue segmentation using a U-Net deep learning architecture in context of osteoarthritic knee pain.

Tytuł:
Clinical evaluation of fully automated thigh muscle and adipose tissue segmentation using a U-Net deep learning architecture in context of osteoarthritic knee pain.
Autorzy:
Kemnitz J; Department of Imaging and Functional Musculoskeletal Research, Institute of Anatomy, Paracelsus Medical University, Strubergasse 21, 5020, Salzburg, Austria. .; Chondrometrics GmbH, Ainring, Germany. .; University of Vienna, Vienna, Austria. .; ETH, Zurich, Switzerland. .
Baumgartner CF; ETH, Zurich, Switzerland.
Eckstein F; Department of Imaging and Functional Musculoskeletal Research, Institute of Anatomy, Paracelsus Medical University, Strubergasse 21, 5020, Salzburg, Austria.; Chondrometrics GmbH, Ainring, Germany.
Chaudhari A; Stanford University, Stanford, CA, USA.
Ruhdorfer A; Department of Imaging and Functional Musculoskeletal Research, Institute of Anatomy, Paracelsus Medical University, Strubergasse 21, 5020, Salzburg, Austria.
Wirth W; Department of Imaging and Functional Musculoskeletal Research, Institute of Anatomy, Paracelsus Medical University, Strubergasse 21, 5020, Salzburg, Austria.; Chondrometrics GmbH, Ainring, Germany.
Eder SK; Department of Imaging and Functional Musculoskeletal Research, Institute of Anatomy, Paracelsus Medical University, Strubergasse 21, 5020, Salzburg, Austria.; St. Anna Children's Hospital, Vienna, Austria.
Konukoglu E; ETH, Zurich, Switzerland.
Źródło:
Magma (New York, N.Y.) [MAGMA] 2020 Aug; Vol. 33 (4), pp. 483-493. Date of Electronic Publication: 2019 Dec 23.
Typ publikacji:
Journal Article
Język:
English
Imprint Name(s):
Publication: 2003- : Heidelberg : Springer
Original Publication: New York, NY : Chapman & Hall, c1993-
MeSH Terms:
Pattern Recognition, Automated*
Magnetic Resonance Imaging/*methods
Osteoarthritis, Knee/*diagnostic imaging
Pain Measurement/*methods
Adipose Tissue/diagnostic imaging ; Aged ; Automation ; Deep Learning ; Diagnosis, Computer-Assisted ; Female ; Humans ; Knee Joint ; Male ; Middle Aged ; Muscle, Skeletal/diagnostic imaging ; Neural Networks, Computer ; Pain
References:
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Grant Information:
(N01-AR-2-2258; N01-AR-2-2259; N01-AR-2-2260; N01-AR-2-2261; N01-AR-2-2262) Foundation for the National Institutes of Health; Hospitationsstipendium (Research Stay ETH Zürich) Deutsche Gesellschaft für Biomechanik (DE)
Contributed Indexing:
Keywords: Automated segmentation; Convolutional neural networks; Deep learning; Magnetic resonance imaging; Muscle
Entry Date(s):
Date Created: 20191225 Date Completed: 20210615 Latest Revision: 20210615
Update Code:
20240105
PubMed Central ID:
PMC7351818
DOI:
10.1007/s10334-019-00816-5
PMID:
31872357
Czasopismo naukowe
Objective: Segmentation of thigh muscle and adipose tissue is important for the understanding of musculoskeletal diseases such as osteoarthritis. Therefore, the purpose of this work is (a) to evaluate whether a fully automated approach provides accurate segmentation of muscles and adipose tissue cross-sectional areas (CSA) compared with manual segmentation and (b) to evaluate the validity of this method based on a previous clinical study.
Materials and Methods: The segmentation method is based on U-Net architecture trained on 250 manually segmented thighs from the Osteoarthritis Initiative (OAI). The clinical evaluation is performed on a hold-out test set bilateral thighs of 48 subjects with unilateral knee pain.
Results: The segmentation time of the method is < 1 s and demonstrated high agreement with the manual method (dice similarity coeffcient: 0.96 ± 0.01). In the clinical study, the automated method shows that similar to manual segmentation (- 5.7 ± 7.9%, p < 0.001, effect size: 0.69), painful knees display significantly lower quadriceps CSAs than contralateral painless knees (- 5.6 ± 7.6%, p < 0.001, effect size: 0.73).
Discussion: Automated segmentation of thigh muscle and adipose tissues has high agreement with manual segmentations and can replicate the effect size seen in a clinical study on osteoarthritic pain.

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