000K  utf8
1100  2022$c2022-03-07
1500  eng
2050  urn:nbn:de:hbz:465-20240220-093907-1
2051  10.1038/s41598-022-08020-7
3000  Quinsten, Anton S.
3010  Demircioğlu, Aydin
3010  Forsting, Michael
3010  Nassenstein, Kai
3010  Umutlu, Lale
4000  Determining the anatomical site in knee radiographs using deep learning  [Quinsten, Anton S.]
4209  An important quality criterion for radiographs is the correct anatomical side marking. A deep neural network is evaluated to predict the correct anatomical side in radiographs of the knee acquired in anterior–posterior direction. In this retrospective study, a ResNet-34 network was trained on 2892 radiographs from 2540 patients to predict the anatomical side of knees in radiographs. The network was evaluated in an internal validation cohort of 932 radiographs of 816 patients and in an external validation cohort of 490 radiographs from 462 patients. The network showed an accuracy of 99.8% and 99.9% on the internal and external validation cohort, respectively, which is comparable to the accuracy of radiographers. Anatomical side in radiographs of the knee in anterior–posterior direction can be deduced from radiographs with high accuracy using deep learning.
4950  https://doi.org/10.1038/s41598-022-08020-7$xR$3Volltext$534
4950  https://nbn-resolving.org/urn:nbn:de:hbz:465-20240220-093907-1$xR$3Volltext$534
4961  https://duepublico2.uni-due.de/receive/duepublico_mods_00078808
5051  610