Machine Learning Based Texture Analysis of Patella from X-Rays for Detecting Patellofemoral Osteoarthritis
Neslihan Bayramoglu, Miika T. Nieminen, Simo Saarakkala

TL;DR
This study demonstrates that texture analysis of patellar bone from X-ray images, using machine learning and deep learning models, can effectively predict patellofemoral osteoarthritis, outperforming traditional clinical assessment models.
Contribution
First to analyze patellar bone texture with machine learning and deep learning for diagnosing PFOA, showing improved prediction accuracy over conventional models.
Findings
Deep CNNs achieved ROC AUC of 0.889 in PFOA detection.
Texture features significantly improved prediction over clinical models.
Patellar texture analysis shows promise for non-invasive PFOA diagnosis.
Abstract
Objective is to assess the ability of texture features for detecting radiographic patellofemoral osteoarthritis (PFOA) from knee lateral view radiographs. We used lateral view knee radiographs from MOST public use datasets (n = 5507 knees). Patellar region-of-interest (ROI) was automatically detected using landmark detection tool (BoneFinder). Hand-crafted features, based on LocalBinary Patterns (LBP), were then extracted to describe the patellar texture. First, a machine learning model (Gradient Boosting Machine) was trained to detect radiographic PFOA from the LBP features. Furthermore, we used end-to-end trained deep convolutional neural networks (CNNs) directly on the texture patches for detecting the PFOA. The proposed classification models were eventually compared with more conventional reference models that use clinical assessments and participant characteristics such as age,…
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