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Assessment of knee pain from MR imaging using a convolutional Siamese network

机译:使用卷积暹罗网络评估膝关节疼痛的膝关节疼痛

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Objectives It remains difficult to characterize the source of pain in knee joints either using radiographs or magnetic resonance imaging (MRI). We sought to determine if advanced machine learning methods such as deep neural networks could distinguish knees with pain from those without it and identify the structural features that are associated with knee pain. Methods We constructed a convolutional Siamese network to associate MRI scans obtained on subjects from the Osteoarthritis Initiative (OAI) with frequent unilateral knee pain comparing the knee with frequent pain to the contralateral knee without pain. The Siamese network architecture enabled pairwise learning of information from two-dimensional (2D) sagittal intermediate-weighted turbo spin echo slices obtained from similar locations on both knees. Class activation mapping (CAM) was utilized to create saliency maps, which highlighted the regions most associated with knee pain. The MRI scans and the CAMs of each subject were reviewed by an expert radiologist to identify the presence of abnormalities within the model-predicted regions of high association. Results Using 10-fold cross-validation, our model achieved an area under curve (AUC) value of 0.808. When individuals whose knee WOMAC pain scores were not discordant were excluded, model performance increased to 0.853. The radiologist review revealed that about 86% of the cases that were predicted correctly had effusion-synovitis within the regions that were most associated with pain. Conclusions This study demonstrates a proof of principle that deep learning can be applied to assess knee pain from MRI scans.
机译:目标仍然难以使用射线照相或磁共振成像(MRI)来表征膝关节的疼痛来源。我们试图确定诸如深神经网络等先进的机器学习方法是否可以将膝盖与没有它的膝关节,并识别与膝关节疼痛相关的结构特征。方法我们构建了一种卷积暹罗网络,将获得的MRI扫描与骨关节炎倡议(OAI)的受试者联系起来,频繁的单侧膝关节疼痛比较膝关节与对侧膝关节频繁的膝关节不带疼痛。暹罗网络架构启用了从两维(2D)矢状中间加权涡轮增压切片从两个膝盖上获得的二维(2D)矢状中等加权Turbo Spino切片进行成对学习。 Class激活映射(CAM)用于创建显着图,这突出显示与膝关节疼痛最多相关的区域。专家放射科医生审查了MRI扫描和每个受试者的凸轮,以确定高协会的模型预测区域内的异常存在。结果采用10倍交叉验证,我们的模型实现了曲线(AUC)值为0.808的区域。当膝关节怀有不和谐分数的个体被排除时,模型性能增加到0.853。放射科医生综述显示,预测预测的86%的病例含有与疼痛最相关的地区内的活力 - 滑膜炎。结论本研究证明了原则上的证据,即深入学习可以应用于从MRI扫描评估膝关节疼痛。

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