Knee osteoarthritis (OA) is a common degenerate joint disorder that affects a large population of elderly people worldwide. Accurate radiographic assessment of knee OA severity plays a critical role in chronic patient management. Current clinically-adopted knee OA grading systems are observer subjective and suffer from inter-rater disagreements. In this work, we propose a computer-aided diagnosis approach to provide more accurate and consistent assessments of both composite and fine-grained OA grades simultaneously. A novel semi-supervised learning method is presented to exploit the underlying coherence in the composite and fine-grained OA grades by learning from unlabeled data. By representing the grade coherence using the log-probability of a pre-trained Gaussian Mixture Model, we formulate an incoherence loss to incorporate unlabeled data in training. The proposed method also describes a keypoint-based pooling network, where deep image features are pooled from the disease-targeted keypoints (extracted along the knee joint) to provide more aligned and pathologically informative feature representations, for accurate OA grade assessments. The proposed method is comprehensively evaluated on the public Osteoarthritis Initiative (OAI) data, a multi-center ten-year observational study on 4,796 subjects. Experimental results demonstrate that our method leads to significant improvements over previous strong whole image-based deep classification network baselines (like ResNet-50).
翻译:在这项工作中,我们建议采用计算机辅助诊断方法,同时对复合和细微磨损 OA等级进行更准确和一致的评估。提出了一种新的半监督的学习方法,利用综合和精细的 OA等级的基本一致性,从未贴标签的数据中学习。通过使用事先培训的Gausian Mixture 模型的逻辑概率来代表等级一致性,我们形成了一种不一致性损失,以便将未贴标签的数据纳入培训中。拟议方法还描述了一个基于关键点的集合网络,其深度图像特征来自基于疾病的关键点(在膝盖的分类中被吸引),以提供更一致和病态的信息特征演示,用于准确的 OA 等级评估。拟议的方法是使用事先培训的Gausian Mixture 模型的逻辑概率来代表等级一致性,以将未贴标签的数据纳入培训中。拟议方法还描述了一个基于关键点的集合网络,其中的深度图像特征来自基于基于疾病的关键点(在膝盖的分类中被吸引的),目的是提供更一致和病理学性信息化的特征显示,以便进行精确的 OAA类类类类类级的深入的高级观测级评估。拟议方法在以往实验性专题研究中,对公共基准研究的全年结果进行了全面评估。