Feature Learning to Automatically Assess Radiographic Knee Osteoarthritis Severity
Joseph Antony, Kevin McGuinness, Kieran Moran, and Noel E O' Connor

TL;DR
This paper introduces convolutional neural network-based methods for automatic detection and severity assessment of knee osteoarthritis from X-ray images, outperforming traditional handcrafted feature approaches.
Contribution
It presents three novel CNN-based approaches for knee joint detection and OA severity classification, demonstrating superior performance over existing methods.
Findings
CNN-based detection outperforms handcrafted features
Supervised feature learning improves classification accuracy
Approaches achieve promising results on public datasets
Abstract
This chapter presents the investigations and the results of feature learning using convolutional neural networks to automatically assess knee osteoarthritis (OA) severity and the associated clinical and diagnostic features of knee OA from X-ray images. Also, this chapter demonstrates that feature learning in a supervised manner is more effective than using conventional handcrafted features for automatic detection of knee joints and fine-grained knee OA image classification. In the general machine learning approach to automatically assess knee OA severity, the first step is to localize the region of interest that is to detect and extract the knee joint regions from the radiographs, and the next step is to classify the localized knee joints based on a radiographic classification scheme such as Kellgren and Lawrence grades. First, the existing approaches for detecting (or localizing) the…
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