Dominik Mairhöfer, M.Sc.
Raum 1.016
Institut für Neuro- und Bioinformatik
Ratzeburger Allee 160 (Geb. 64)
23562 Lübeck
Email: | d.mairhoefer(at)uni-luebeck.de |
Phone: | +49 451 3101 5508 |
Fax: | +49 451 3101 5504 |
2021
Dominik
Mairhöfer,
Manuel
Laufer,
Paul Martin
Simon,
Malte
Sieren,
Arpad
Bischof,
Thomas
Käster,
Erhardt
Barth,
Jörg
Barkhausen, and
Thomas
Martinetz,
An {AI}-based Framework for Diagnostic Quality Assessment of Ankle Radiographs, in Proceedings of the Fourth Conference on Medical Imaging with Deep Learning , Heinrich, Mattias and Dou, Qi and de Bruijne, Marleen and Lellmann, Jan and Schläfer, Alexander and Ernst, Floris, Eds. PMLR, 07-.2021. pp. 484--496.
An {AI}-based Framework for Diagnostic Quality Assessment of Ankle Radiographs, in Proceedings of the Fourth Conference on Medical Imaging with Deep Learning , Heinrich, Mattias and Dou, Qi and de Bruijne, Marleen and Lellmann, Jan and Schläfer, Alexander and Ernst, Floris, Eds. PMLR, 07-.2021. pp. 484--496.
Datei: | MaLaSiSiBiKaBaBaMa21.pdf |
Bibtex: | @inproceedings{MaLaSiSiBiKaBaBaMa21, title = {An {AI}-based Framework for Diagnostic Quality Assessment of Ankle Radiographs}, author = {Mairh{\"o}fer, Dominik and Laufer, Manuel and Simon, Paul Martin and Sieren, Malte and Bischof, Arpad and K{\"a}ster, Thomas and Barth, Erhardt and Barkhausen, J{\"o}rg and Martinetz, Thomas}, booktitle = {Proceedings of the Fourth Conference on Medical Imaging with Deep Learning}, pages = {484--496}, year = {2021}, editor = {Heinrich, Mattias and Dou, Qi and de Bruijne, Marleen and Lellmann, Jan and Schläfer, Alexander and Ernst, Floris}, volume = {143}, series = {Proceedings of Machine Learning Research}, month = {07--09 Jul}, publisher = {PMLR}, pdf = {https://proceedings.mlr.press/v143/mairhofer21a/mairhofer21a.pdf}, url = {https://www.inb.uni-luebeck.de/fileadmin/files/publications/inb-publications/pdfs/MaLaSiSiBiKaBaBaMa21.pdf}, abstract = {The quality of radiographs is of major importance for diagnosis and treatment planning. While most research regarding automated radiograph quality assessment uses technical features such as noise or contrast, we propose to use anatomical structures as more appropriate features. We show that based on such anatomical features, a modular deep-learning framework can serve as a quality control mechanism for the diagnostic quality of ankle radiographs. For evaluation, a dataset consisting of 950 ankle radiographs was collected and their quality was labeled by radiologists. We obtain an average accuracy of 94.1%, which is better than the expert radiologists are on average.} } |