Zhang Yuqian, Bo Kaida, Wu Tingmiao, Li Xiaohu, Chang Jun, Wang Changqing
School of Biomedical Engineering, Anhui Medical University, Hefei 230000, China.
Department of Orthopedics, The First Affiliated Hospital of Anhui Medical University, Anhui Public Health Clinical Center, Hefei 230000, China.
Eur J Radiol. 2025 Oct;191:112294. doi: 10.1016/j.ejrad.2025.112294. Epub 2025 Jul 7.
Volume and signal intensity of meniscus in T2-weighted images are typical manifestations of meniscal injuries, which are risk factors for the presence of radiographic knee osteoarthritis (RKOA). The objective of this study was to predict the presence of RKOA by proposing six meniscal spatial-specific signal (MSS) indexes.
Ninety subjects with symptomatic KOA were divided into non-RKOA and RKOA groups with a cut-off of Kellgren and Lawrence grade ≥2. Lateral and medial menisci were automatically segmented, and meniscus pixels were categorized into three classes based on signal intensity to yield six MSS indexes, e.g., M-MSS-Ci denoting the MSS indexes with the ith class for the medial meniscus. Reproducibility of the MSS indexes, and their relationships with knee cartilage volume and WOMAC were evaluated by linear regression analysis. Among the six MSS indexes and their combinations, the best index for predicting the presence of RKOA was identified using the area under the curve (AUC).
The MSS indexes by the automatic segmentation demonstrated high reproducibility with the manual segmentation. The medial MSS indexes were different across the two groups (P<0.05), and the RKOA group showed lower M-MSS-C1, higher M-MSS-C2 and M-MSS-C3. In addition, M-MSS-C1 and M-MSS-C3 were correlated with knee cartilage volume, and M-MSS-C1 and M-MSS-C2 were correlated with WOMAC (P<0.05). The M-MSS (combination of three medial MSS indexes) outperformed all other indexes with an AUC of 0.84 for predicting the presence of RKOA.
The medial MSS indexes are more associated with the presence of RKOA, and the M-MSS, as a combination of three medial MSS indexes, demonstrates its effectiveness in predicting the presence of RKOA.
T2加权图像中半月板的体积和信号强度是半月板损伤的典型表现,而半月板损伤是膝关节影像学骨关节炎(RKOA)存在的危险因素。本研究的目的是通过提出六个半月板空间特异性信号(MSS)指标来预测RKOA的存在。
90例有症状的膝关节骨关节炎患者根据Kellgren和Lawrence分级≥2分为非RKOA组和RKOA组。外侧和内侧半月板自动分割,半月板像素根据信号强度分为三类,得出六个MSS指标,例如,M-MSS-Ci表示内侧半月板第i类的MSS指标。通过线性回归分析评估MSS指标的可重复性及其与膝关节软骨体积和WOMAC的关系。在六个MSS指标及其组合中,使用曲线下面积(AUC)确定预测RKOA存在的最佳指标。
自动分割得到的MSS指标与手动分割具有高度可重复性。两组之间内侧MSS指标不同(P<0.05),RKOA组的M-MSS-C1较低,M-MSS-C2和M-MSS-C3较高。此外,M-MSS-C1和M-MSS-C3与膝关节软骨体积相关,M-MSS-C1和M-MSS-C2与WOMAC相关(P<0.05)。M-MSS(三个内侧MSS指标的组合)在预测RKOA存在方面优于所有其他指标,AUC为0.84。
内侧MSS指标与RKOA的存在更相关,而M-MSS作为三个内侧MSS指标的组合,在预测RKOA的存在方面显示出有效性。