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Automated Image Registration for Knee Pain Prediction in Osteoarthritis: Data from the OAI

机译:骨关节炎中膝痛预测的自动图像配准:来自OAI的数据

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Diagnose Knee osteoarthritis (OA) is a very important task, in this work an automated metrics method is used to predict chronic pain. In early stages of OA, changes into joint structures are shown, some of the most common symptoms are; formation of osteophytes, cartilage degradation and joint space reduction, among others. Using public data from the Osteoarthritis initiative (OAI), a set of X-ray images with different Kellgren Lawrence score (K & L) scores were used to determine a relationship between bilateral asymmetry and the radiological evaluation in K & L score with the chronic knee pain. In order to measure the asymmetry between the knees, the right knee was registered to match the left knee, then a series of similarity metrics; mutual information, correlation, and mean square error were computed to correlate the deformation (mismatch) and K & L score with chronic knee pain. Radiological information was evaluated and scored by OAI radiologist groups, all metric of image registration were obtained in an automated way. The results of the study suggest an association between image registration metrics, radiological K & L score with chronic knee pain. Four GLM models wit AUC 0.6 and 0.7 accuracy random forest classification model was formed with this information to classify the early bony changes with OA chronic knee pain.
机译:诊断膝盖骨关节炎(OA)是一项非常重要的任务,在这项工作中,使用一种自动度量方法来预测慢性疼痛。在OA的早期阶段,会显示出关节结构的改变,其中一些最常见的症状是:骨赘形成,软骨退化和关节间隙缩小等。利用骨关节炎倡议组织(OAI)的公开数据,使用一组具有不同Kellgren Lawrence得分(K&L)得分的X射线图像来确定双侧不对称性与K&L得分与慢性放射学评估之间的关系膝盖疼痛。为了测量膝盖之间的不对称性,先注册右膝盖以匹配左膝盖,然后再进行一系列相似性度量;计算相互信息,相关性和均方误差,以将变形(失配)和K&L得分与慢性膝关节疼痛相关联。 OAI放射科医生小组对放射学信息进行了评估和评分,所有图像配准指标均以自动化方式获得。研究结果表明,图像配准指标,影像学K&L评分与慢性膝关节疼痛之间存在关联。利用该信息形成了四种具有AUC 0.6和0.7精度随机森林分类模型的GLM模型,以对OA慢性膝关节疼痛引起的早期骨变化进行分类。

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