Automated Detection of Patellofemoral Osteoarthritis from Knee Lateral View Radiographs Using Deep Learning: Data from the Multicenter Osteoarthritis Study (MOST)
Neslihan Bayramoglu, Miika T. Nieminen, Simo Saarakkala

TL;DR
This study develops a deep learning model that automatically detects patellofemoral osteoarthritis from knee lateral radiographs, outperforming traditional clinical and demographic prediction models.
Contribution
First to create an automated deep learning method for PFOA detection from knee radiographs, demonstrating superior predictive performance over clinical models.
Findings
Deep learning model achieved ROC AUC of 0.958.
Model significantly outperformed traditional clinical prediction models.
Automated detection can aid in early diagnosis of PFOA.
Abstract
Objective: To assess the ability of imaging-based deep learning to predict radiographic patellofemoral osteoarthritis (PFOA) from knee lateral view radiographs. Design: Knee lateral view radiographs were extracted from The Multicenter Osteoarthritis Study (MOST) (n = 18,436 knees). Patellar region-of-interest (ROI) was first automatically detected, and subsequently, end-to-end deep convolutional neural networks (CNNs) were trained and validated to detect the status of patellofemoral OA. Patellar ROI was detected using deep-learning-based object detection method. Manual PFOA status assessment provided in the MOST dataset was used as a classification outcome for the CNNs. Performance of prediction models was assessed using the area under the receiver operating characteristic curve (ROC AUC) and the average precision (AP) obtained from the precision-recall (PR) curve in the stratified…
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