Shamir Lior, Ling Shari M, Scott William W, Bos Angelo, Orlov Nikita, Macura Tomasz J, Eckley D Mark, Ferrucci Luigi, Goldberg Ilya G
Image Informatics and Computational Biology Unit, Laboratory of Genetics, National Institute on Aging, National Institutes of Health, Baltimore, MD 21224, USA.
IEEE Trans Biomed Eng. 2009 Feb;56(2):407-15. doi: 10.1109/TBME.2008.2006025.
We describe a 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 OA (KL grade 3) and minimal OA (KL grade 2) can be differentiated from normal cases with accuracy of 91.5% and 80.4%, respectively. Doubtful OA (KL grade 1) was detected automatically with a much lower accuracy of 57%. The source code developed and used in this study is available for free download at www.openmicroscopy.org.
我们描述了一种用于在膝关节X线图像中自动检测放射学骨关节炎(OA)的方法。该检测基于凯尔格伦-劳伦斯(KL)分类等级,其对应于OA严重程度的不同阶段。分类器是使用手动分类的X线片构建的,这些X线片代表了前四个KL等级(正常、可疑、轻度和中度)。图像分析首先通过识别一组对X线片中OA检测有信息价值的图像内容描述符和图像变换,并使用费舍尔评分给这些图像特征赋予权重来进行。然后,使用简单的加权最近邻规则来预测给定测试X线样本所属的KL等级。实验中使用的数据集包含350张根据KL等级手动分类的X线图像。实验结果表明,中度OA(KL等级3)和轻度OA(KL等级2)与正常病例的区分准确率分别为91.5%和80.4%。可疑OA(KL等级1)的自动检测准确率低得多,为57%。本研究开发并使用的源代码可在www.openmicroscopy.org上免费下载。