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Combination of Lateral and PA View Radiographs to Study Development of Knee OA and Associated Pain

机译:横向和PA视图射线照相的组合研究膝关节OA和相关疼痛的发展

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Knee Osteoarthritis (OA) is the most common form of arthritis, affecting millions of people around the world. The effects of the disease have been studied using the shape and texture features of bones in Posterior-Anterior (PA) and Lateral radiographs separately. In this work we compare the utility of features from each view, and evaluate whether combining features from both is advantageous. We built a fully automated system to independently locate landmark points in both radiographic images using Random Forest Constrained Local Models. We extracted discriminative features from the two bony outlines using Appearance Models. The features were used to train Random Forest classifiers to solve three specific tasks: (i) OA classification, distinguishing patients with structural signs of OA from the others; (ii) predicting future onset of the disease and (iii) predicting which patients with no current pain will have a positive pain score later in a follow-up visit. Using a subset of the MOST dataset we show that the PA view has more discriminative features to classify and predict OA, while the lateral view contains features that achieve better performance in predicting pain, and that combining the features from both views gives a small improvement in accuracy of the classification compared to the individual views.
机译:膝关节骨关节炎(OA)是最常见的关节炎形式,影响全世界数百万人。使用骨骼在后侧(PA)和横向射线照片中使用骨骼的形状和质地特征进行了研究的影响。在这项工作中,我们将特征的效用从每个视图进行比较,并评估组合特征是否有利。我们建立了一个完全自动化的系统,在使用随机森林受限的本地模型中独立地定位了两个放射线图像中的地标点。我们使用外观模型从两个骨轮廓中提取了歧视特征。该特征用于培训随机林分类器来解决三个特定任务:(i)OA分类,区分患者从其他方面的结构迹象; (ii)预测疾病的未来发病和(iii)预测哪些患者在后续访问后期以后将具有阳性疼痛评分。使用大多数DataSet的子集,我们显示PA视图具有更大的差异功能来分类和预测OA,而横向视图包含在预测疼痛中实现更好性能的功能,并且组合来自两个视图的特征给出了很小的改进与个人视图相比分类的准确性。

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