Kwon Hyuck Min, Nam Ji-Hoon, Koh Yong-Gon, Choi Yoowang, Cho Byung Woo, Park Kwan Kyu, Kang Kyoung-Tak
Joint Department of Orthopaedic Surgery, Yonsei University College of Medicine, Severance Hospital, Seoul, Republic of Korea.
Department of Mechanical Engineering, Yonsei University, Seoul, Republic of Korea.
Orthop J Sports Med. 2025 Jul 25;13(7):23259671251358390. doi: 10.1177/23259671251358390. eCollection 2025 Jul.
Magnetic resonance imaging (MRI) assessments are considered important for predicting patellar dislocation. Risk factors for patellar dislocation have not yet been clearly identified.
To identify patellofemoral instability anatomic risk factors using MRI and enhance the area under the curve (AUC) through optimized machine learning (ML) methods.
Case-control study; Level of evidence, 3.
An age- and sex-matched control group of 121 patients was selected. The assessed patellofemoral morphological parameters included trochlear depth, sulcus angle, trochlear facet asymmetry, lateral trochlear inclination, Wiberg index, lateral patellar facet angle, Wiberg angle, patellar tilt, and trochlear medialization. Differences between groups were analyzed based on the MRI parameters. In addition, ML models were created and optimized using these measured parameters to investigate their diagnostic potential. Logistic regression analysis (LRA), support vector machine (SVM), and light gradient boosting machine (LGBM) were employed as machine learning techniques.
Sex differences were found in trochlear depth, trochlear groove medialization, lateral patellar facet angle, and Wiberg angle, whereas no sex differences were observed in the other measured parameters. Significant differences between the control and dislocation groups were found for all patellofemoral morphological parameters, except for trochlear facet asymmetry. A significant difference was observed in the patellar height parameter between the 2 groups. Among the measured patellofemoral parameters, patellar tilt showed the highest AUC (0.8). Of the optimized ML models, the LGBM demonstrated the highest AUC at 0.873. When the number of variables used in the SVM model, which employed the fewest variables, was applied to both LGBM and LRA, the SVM model achieved the highest AUC at 0.858.
Patellar tilt and trochlear depth exhibited the strongest correlation with patellar dislocation. The optimized ML techniques showed improved AUC values compared with those of existing models. However, while a higher AUC can be achieved by using more variables, this approach has proven to be inefficient. Therefore, for practical clinical applications, it is important to focus on using the minimum number of variables in optimized ML models.
磁共振成像(MRI)评估对于预测髌骨脱位被认为很重要。髌骨脱位的风险因素尚未明确。
使用MRI识别髌股关节不稳定的解剖学风险因素,并通过优化的机器学习(ML)方法提高曲线下面积(AUC)。
病例对照研究;证据等级,3级。
选择121例年龄和性别匹配的对照组患者。评估的髌股关节形态学参数包括滑车深度、沟角、滑车小面不对称性、外侧滑车倾斜度、维伯格指数、外侧髌面角、维伯格角、髌骨倾斜度和滑车内移。基于MRI参数分析组间差异。此外,使用这些测量参数创建并优化ML模型,以研究其诊断潜力。采用逻辑回归分析(LRA)、支持向量机(SVM)和轻梯度提升机(LGBM)作为机器学习技术。
在滑车深度、滑车沟内移、外侧髌面角和维伯格角方面发现了性别差异,而在其他测量参数中未观察到性别差异。除滑车小面不对称性外,所有髌股关节形态学参数在对照组和脱位组之间均存在显著差异。两组之间的髌骨高度参数存在显著差异。在所测量的髌股关节参数中,髌骨倾斜度的AUC最高(0.8)。在优化的ML模型中,LGBM的AUC最高,为0.873。当将使用变量最少的SVM模型中使用的变量数量应用于LGBM和LRA时,SVM模型的AUC最高,为0.858。
髌骨倾斜度和滑车深度与髌骨脱位的相关性最强。与现有模型相比,优化的ML技术显示出更高的AUC值。然而,虽然使用更多变量可以获得更高的AUC,但这种方法已被证明效率低下。因此,对于实际临床应用,重要的是在优化的ML模型中关注使用最少数量的变量。