Department of Orthopedic Surgery, Seoul National University College of Medicine, Seoul National University Bundang Hospital, Seoul, South Korea.
Department of Orthopedic Surgery, Seoul National University College of Medicine, Seoul National University Bundang Hospital, Seoul, South Korea.
Knee. 2024 Mar;47:196-207. doi: 10.1016/j.knee.2024.02.006. Epub 2024 Feb 27.
This study aimed to develop a machine learning (ML) model to identify the optimal situation wherein double-level osteotomy (DLO) is favored for severe varus knees by analyzing unfavorable outcomes. This study hypothesized that there are the most favorable algorithms and contributing factors for identifying the optimal situation favoring DLO over opening-wedge high tibial osteotomy (OWHTO).
Data were retrospectively collected from patients who underwent OWHTO (505 knees). Unfavorable outcome parameters were defined as follows: (1) medial proximal tibial angle (MPTA) > 95°, (2) joint line convergence angle (JLCA) > 4° (insufficient medial release), (3) JLCA < 0° (medial instability), (4) recurrence of varus deformity, and (5) lateral hinge fracture. The input data for the ML model included demographic data and preoperative radiological and intra-operative factors. The ML model was used to evaluate overall and to evaluate each unfavorable outcome. Interpretation by the model was performed by SHapley Additive exPlanations.
The unfavorable group had a larger JLCA and MPTA preoperatively than the favorable group in the conventional comparison. The light gradient boosting machine (LGBM) demonstrated the highest AUC of 0.66 and F-1 score of 0.72 among the ML algorithms. In the overall assessment, the preoperative weight-bearing line ratio (WBLR) was the factor that contributed the most, followed by the preoperative JLCA and the ΔWBLR. ΔWBLR and the preoperative JLCA were the contributing factors for each outcome.
The LGBM model was superior in predicting the optimal situations favoring DLO over OWHTO. Preoperative WBLR, preoperative JLCA, and ΔWBLR significantly contributed to the unfavorable outcomes overall and for each outcome in the ML model.
本研究旨在通过分析不良结局,开发一种机器学习(ML)模型来确定重度内翻膝行双平面截骨术(DLO)的最佳适应证。本研究假设存在最有利的算法和影响因素,可以确定 DLO 优于开放楔形胫骨高位截骨术(OWHTO)的最佳适应证。
回顾性收集了行 OWHTO(505 膝)的患者数据。不良结局参数定义如下:(1)内侧胫骨近端角(MPTA)>95°;(2)关节线会聚角(JLCA)>4°(内侧松解不足);(3)JLCA<0°(内侧不稳定);(4)内翻畸形复发;(5)外侧铰链骨折。ML 模型的输入数据包括人口统计学数据以及术前影像学和术中因素。该 ML 模型用于评估整体情况和每种不良结局。模型的解释由 SHapley Additive exPlanations 进行。
与常规比较,不良组的术前 JLCA 和 MPTA 大于良好组。在 ML 算法中,轻梯度提升机(LGBM)的 AUC 最高为 0.66,F-1 评分为 0.72。在整体评估中,术前负重线比(WBLR)是最重要的因素,其次是术前 JLCA 和ΔWBLR。ΔWBLR 和术前 JLCA 是每个结局的影响因素。
LGBM 模型在预测 DLO 优于 OWHTO 的最佳适应证方面表现优异。术前 WBLR、术前 JLCA 和ΔWBLR 显著影响 ML 模型中的整体不良结局和每个结局。