IEEE Trans Med Imaging. 2022 Nov;41(11):3207-3217. doi: 10.1109/TMI.2022.3181060. Epub 2022 Oct 27.
Knee osteoarthritis (KOA) as a disabling joint disease has doubled in prevalence since the mid-20th century. Early diagnosis for the longitudinal KOA grades has been increasingly important for effective monitoring and intervention. Although recent studies have achieved promising performance for baseline KOA grading, longitudinal KOA grading has been seldom studied and the KOA domain knowledge has not been well explored yet. In this paper, a novel deep learning architecture, namely adversarial evolving neural network (A-ENN), is proposed for longitudinal grading of KOA severity. As the disease progresses from mild to severe level, ENN involves the progression patterns for accurately characterizing the disease by comparing an input image it to the template images of different KL grades using convolution and deconvolution computations. In addition, an adversarial training scheme with a discriminator is developed to obtain the evolution traces. Thus, the evolution traces as fine-grained domain knowledge are further fused with the general convolutional image representations for longitudinal grading. Note that ENN can be applied to other learning tasks together with existing deep architectures, in which the responses characterize progressive representations. Comprehensive experiments on the Osteoarthritis Initiative (OAI) dataset were conducted to evaluate the proposed method. An overall accuracy was achieved as 62.7%, with the baseline, 12-month, 24-month, 36-month, and 48-month accuracy as 64.6%, 63.9%, 63.2%, 61.8% and 60.2%, respectively.
膝关节骨关节炎(KOA)作为一种致残性关节疾病,自 20 世纪中叶以来患病率翻了一番。对于纵向 KOA 分级的早期诊断对于有效监测和干预越来越重要。尽管最近的研究在基线 KOA 分级方面取得了有希望的性能,但纵向 KOA 分级很少被研究,并且 KOA 领域知识尚未得到充分探索。在本文中,提出了一种新颖的深度学习架构,即对抗进化神经网络(A-ENN),用于纵向 KOA 严重程度分级。随着疾病从轻度进展到重度,ENN 通过使用卷积和反卷积计算将输入图像与不同 KL 等级的模板图像进行比较,涉及进展模式,从而准确地描述疾病。此外,还开发了一种带有鉴别器的对抗训练方案来获取进化轨迹。因此,将作为细粒度领域知识的进化轨迹与用于纵向分级的一般卷积图像表示进一步融合。请注意,ENN 可以与现有深度学习架构一起应用于其他学习任务,其中响应特征是渐进式表示。在 Osteoarthritis Initiative(OAI)数据集上进行了全面的实验,以评估所提出的方法。总体准确率达到 62.7%,基线、12 个月、24 个月、36 个月和 48 个月的准确率分别为 64.6%、63.9%、63.2%、61.8%和 60.2%。