Automated knee osteoarthritis detection in Xray Images using Open CV-Deep Learning

6,000.00

Automated knee osteoarthritis detection in Xray Images using Open CV-Deep Learning

100 in stock

SKU: Automated knee osteoarthritis detection in Xray Images using Category:

Description

Automated knee osteoarthritis detection in Xray Images using Open CV-Deep Learning

In this project, method for automated detection of radiographic osteoarthritis (OA) in knee X-ray images. The detection is based on the Kellgren-Lawrence (KL) classification grades, which correspond to the different stages of OA severity. The classifier was built using manually classified X-rays, representing the first four KL grades (normal, doubtful, minimal, and moderate). Image analysis is performed by first identifying a set of image content descriptors and image transforms that are informative for the detection of OA in the X-rays and assigning weights to these image features using Fisher scores. Then, a simple weighted nearest neighbor rule is used in order to predict the KL grade to which a given test X-ray sample belongs. The dataset used in the experiment contained 350 X-ray images classified manually by their KL grades. Experimental results show that moderate differentiated from normal cases with accuracy is high.

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