The morphological changes in knee cartilage (especially femoral and tibial cartilages) are closely related to the progression of knee osteoarthritis, which is expressed by magnetic resonance (MR) images and assessed on the cartilage segmentation results. Thus, it is necessary to propose an effective automatic cartilage segmentation model for longitudinal research on osteoarthritis. In this research, to relieve the problem of inaccurate discontinuous segmentation caused by the limited receptive field in convolutional neural networks, we proposed a novel position-prior clustering-based self-attention module (PCAM). In PCAM, long-range dependency between each class center and feature point is captured by self-attention allowing contextual information re-allocated to strengthen the relative features and ensure the continuity of segmentation result. The clutsering-based method is used to estimate class centers, which fosters intra-class consistency and further improves the accuracy of segmentation results. The position-prior excludes the false positives from side-output and makes center estimation more precise. Sufficient experiments are conducted on OAI-ZIB dataset. The experimental results show that the segmentation performance of combination of segmentation network and PCAM obtains an evident improvement compared to original model, which proves the potential application of PCAM in medical segmentation tasks. The source code is publicly available from link: https://github.com/LeongDong/PCAMNet
翻译:膝盖软骨骼(特别是骨质和胸骨软骨)的形态变化与膝部骨质炎的进化密切相关,其表现为磁共振图像,并对软骨部分结果进行评估。因此,有必要提议一个有效的自动软体分裂模型,用于对骨质骨质炎进行纵向研究。在这项研究中,为了缓解由共生神经网络中有限的可接受字段造成的不准确不准确的不准确的分解问题,我们提议采用一个新的位位前组合自留模块(PCAM PCAM ) 。在CPAM 中,每个级中心和特征点之间的长距离依赖性通过自控获取,使背景信息重新定位,以加强相对特征,确保分解结果的连续性。基于粘结法的方法用于估算类中心,这促进阶级内部一致性,进一步提高分解结果的准确性。 位置前列排除了基于侧外投出的假正数,并使中心估计更加精确。在CPIA-AM/CAFAM中进行充分实验,将原始分部分的运行结果与现有分路进行对比。