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Deep Learning for the Differential Diagnosis between Transient Osteoporosis and Avascular Necrosis of the Hip

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Autore
Klontzas M.E., Stathis I., Spanakis K., Zibis A.H., Marias K., Karantanas A.H.
Data
2022
Language
en
DOI
10.3390/diagnostics12081870
Soggetto
area under the curve
Article
avascular necrosis
cohort analysis
controlled study
convolutional neural network
diagnostic accuracy
differential diagnosis
human
intermethod comparison
major clinical study
nuclear magnetic resonance imaging
osteoporosis
recall
transfer of learning
transient osteoporosis of the hip
MDPI
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Abstract
Differential diagnosis between avascular necrosis (AVN) and transient osteoporosis of the hip (TOH) can be complicated even for experienced MSK radiologists. Our study attempted to use MR images in order to develop a deep learning methodology with the use of transfer learning and a convolutional neural network (CNN) ensemble, for the accurate differentiation between the two diseases. An augmented dataset of 210 hips with TOH and 210 hips with AVN was used to finetune three ImageNet-trained CNNs (VGG-16, InceptionResNetV2, and InceptionV3). An ensemble decision was reached in a hard-voting manner by selecting the outcome voted by at least two of the CNNs. Inception-ResNet-V2 achieved the highest AUC (97.62%) similar to the model ensemble, followed by InceptionV3 (AUC of 96.82%) and VGG-16 (AUC 96.03%). Precision for the diagnosis of AVN and recall for the detection of TOH were higher in the model ensemble compared to Inception-ResNet-V2. Ensemble performance was significantly higher than that of an MSK radiologist and a fellow (P < 0.001). Deep learning was highly successful in distinguishing TOH from AVN, with a potential to aid treatment decisions and lead to the avoidance of unnecessary surgery. © 2022 by the authors.
URI
http://hdl.handle.net/11615/74921
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