Xing Xing, Wang Yining, Zhu Jianan, Shen Ziyuan, Cicuttini Flavia, Jones Graeme, Aitken Dawn, Cai Guoqi
Department of Epidemiology and Biostatistics, School of Public Health, Anhui Medical University, Hefei, Anhui, China.
Department of Biostatistics, Johns Hopkins Bloomberg School of Public Health, Baltimore, MD, USA.
Osteoarthr Cartil Open. 2025 Feb 15;7(2):100582. doi: 10.1016/j.ocarto.2025.100582. eCollection 2025 Jun.
Our previous study showed that magnetic resonance imaging (MRI)-defined tibiofemoral osteoarthritis (MRI-OA), based on a Delphi approach, in combination with radiographic OA (ROA) had a strong predictive validity for the progression of knee OA. This study aimed to compare whether the combination using traditional prediction models was superior to the Light Gradient Boosting Machine (LightGBM) models.
Data were from the Tasmanian Older Adult Cohort. A radiograph and 1.5T MRI of the right knee was performed. Tibial cartilage volume was measured at baseline, 2.6 and 10.7 years. Knee pain and function were assessed at baseline, 2.6, 5.1, and 10.7 years. Right-sided total knee replacement (TKR) were assessed over 13.5 years. The area under the curve (AUC) was applied to compare the predictive validity of logistic regression with the LightGBM algorithm. For significant imbalanced outcomes, the area under the precision-recall curve (AUC-PR) was used.
574 participants (mean 62 years, 49 % female) were included. Overall, the LightGBM showed a clinically acceptable predictive performance for all outcomes but TKR. For knee pain and function, LightGBM showed better predictive performance than logistic regression model (AUC: 0.731-0.912 vs 0.627-0.755). Similar results were found for tibial cartilage loss over 2.6 (AUC: 0.845 vs 0.701, p < 0.001) and 10.7 years (AUC: 0.845 vs 0.753, p = 0.016). For TKR, which exhibited significant class imbalance, both algorithms performed poorly (AUC-PR: 0.647 vs 0.610).
Compared to logistic regression combining MRI-OA, ROA, and common covariates, LightGBM offers valuable insights that can inform early risk identification and targeted prevention strategies.
我们之前的研究表明,基于德尔菲法的磁共振成像(MRI)定义的胫股骨关节炎(MRI-OA)与放射学骨关节炎(ROA)相结合,对膝关节骨关节炎的进展具有很强的预测效度。本研究旨在比较使用传统预测模型的组合是否优于轻梯度提升机(LightGBM)模型。
数据来自塔斯马尼亚老年人群队列。对右膝进行了X光片和1.5T MRI检查。在基线、2.6年和10.7年时测量胫骨软骨体积。在基线、2.6年、5.1年和10.7年时评估膝关节疼痛和功能。在13.5年的时间里评估右侧全膝关节置换术(TKR)。应用曲线下面积(AUC)来比较逻辑回归与LightGBM算法的预测效度。对于显著不平衡的结果,使用精确召回率曲线下面积(AUC-PR)。
纳入了574名参与者(平均年龄62岁;49%为女性)。总体而言,除了TKR外,LightGBM对所有结果都显示出临床上可接受的预测性能。对于膝关节疼痛和功能,LightGBM显示出比逻辑回归模型更好的预测性能(AUC:0.731 - 0.912对0.627 - 0.755)。在2.6年(AUC:0.845对0.701,p < 0.001)和10.7年(AUC:0.845对0.753,p = 0.016)的胫骨软骨损失方面也发现了类似结果。对于表现出显著类别不平衡的TKR,两种算法的表现都很差(AUC-PR:0.647对0.610)。
与结合MRI-OA、ROA和常见协变量的逻辑回归相比,LightGBM提供了有价值的见解,可为早期风险识别和针对性预防策略提供依据。