Department of Control Science and Engineering, Harbin Institute of Technology, Harbin, China.
Department of Orthopedics, Second Affiliated Hospital of Harbin Medical University, Harbin, Heilongjiang, China.
Med Phys. 2023 Jun;50(6):3788-3800. doi: 10.1002/mp.16302. Epub 2023 Feb 26.
The incidence of osteonecrosis of the femoral head (ONFH) is increasing gradually, rapid and accurate grading of ONFH is critical. The existing Steinberg staging criteria grades ONFH according to the proportion of necrosis area to femoral head area.
In the clinical practice, the necrosis region and femoral head region are mainly estimated by the observation and experience of doctor. This paper proposes a two-stage segmentation and grading framework, which can be used to segment the femoral head and necrosis, as well as to diagnosis.
The core of the proposed two-stage framework is the multiscale geometric embedded convolutional neural network (MsgeCNN), which integrates geometric information into the training process and accurately segments the femoral head region. Then, the necrosis regions are segmented by the adaptive threshold method taking femoral head as the background. The area and proportion of the two are calculated to determine the grade.
The accuracy of the proposed MsgeCNN for femoral head segmentation is 97.73%, sensitivity is 91.17%, specificity is 99.40%, dice score is 93.34%. And the segmentation performance is better than the existing five segmentation algorithms. The diagnostic accuracy of the overall framework is 90.80%.
The proposed framework can accurately segment the femoral head region and the necrosis region. The area, proportion, and other pathological information of the framework output provide auxiliary strategies for subsequent clinical treatment.
股骨头坏死(ONFH)的发病率逐渐增高,快速准确地对 ONFH 进行分级至关重要。现有的 Steinberg 分期标准根据坏死区域占股骨头区域的比例对 ONFH 进行分级。
在临床实践中,坏死区域和股骨头区域主要通过医生的观察和经验来估计。本文提出了一种两阶段分割和分级框架,可用于分割股骨头和坏死区域,并进行诊断。
所提出的两阶段框架的核心是多尺度几何嵌入式卷积神经网络(MsgeCNN),它将几何信息集成到训练过程中,从而准确地分割股骨头区域。然后,以股骨头为背景,采用自适应阈值方法分割坏死区域。计算这两个区域的面积和比例,以确定分级。
所提出的 MsgeCNN 对股骨头分割的准确率为 97.73%,灵敏度为 91.17%,特异性为 99.40%,Dice 得分为 93.34%。并且分割性能优于现有的五种分割算法。整体框架的诊断准确率为 90.80%。
所提出的框架可以准确地分割股骨头区域和坏死区域。框架输出的面积、比例和其他病理信息为后续临床治疗提供了辅助策略。