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ČURILLOVÁ, M.; NOHEL, M.
Originální název
Deep learning model for segmentation of trabecular tissue on CT data of the lumbar spine
Anglický název
Druh
Stať ve sborníku v databázi WoS či Scopus
Originální abstrakt
This paper focuses on training a deep learning model for vertebral body segmentation of the lumbar spine. The nnU-Net model was trained and tested on a publicly available dataset LumVBCanSeg consisting of 185 lumbar CT scans. Dice coefficient was used to evaluate the accuracy of the trained model. The mean Dice coefficient of the testing dataset was 0.949 with a standard deviation of 0.103. The model was also tested on clinical data containing various abnormalities, such as lytic lesions in multiple myeloma patients and metallic implants. Results were evaluated visually. While the model showed high accuracy on the testing dataset, the results on scans with anomalies showed a decline in accuracy.
Anglický abstrakt
Klíčová slova
multiple myeloma, osteolytic lesions, nnU-Net, segmentation
Klíčová slova v angličtině
Autoři
Rok RIV
2025
Vydáno
23.04.2024
Nakladatel
Brno University of Technology, Faculty of Electrical Engineering and Communication
Místo
Brno, Czech Republic
ISBN
978-80-214-6230-4
Kniha
Proceedings II of the 30st Conference STUDENT EEICT 2024: Selected papers
Edice
1
ISSN
2788-1334
Periodikum
Proceedings II of the Conference STUDENT EEICT
Stát
Česká republika
Strany od
8
Strany do
11
Strany počet
4
URL
https://www.eeict.cz/eeict_download/archiv/sborniky/EEICT_2024_sbornik_2.pdf
BibTex
@inproceedings{BUT189059, author="Miriam {Čurillová} and Michal {Nohel}", title="Deep learning model for segmentation of trabecular tissue on CT data of the lumbar spine", booktitle="Proceedings II of the 30st Conference STUDENT EEICT 2024: Selected papers", year="2024", series="1", journal="Proceedings II of the Conference STUDENT EEICT", pages="8--11", publisher="Brno University of Technology, Faculty of Electrical Engineering and Communication", address="Brno, Czech Republic", doi="10.13164/eeict.2024.8", isbn="978-80-214-6230-4", url="https://www.eeict.cz/eeict_download/archiv/sborniky/EEICT_2024_sbornik_2.pdf" }