Department of Orthopedics, Guangdong Provincial People's Hospital, Guangdong Academy of Medical Sciences, Yuexiu District, 106, Zhongshan Road, Guangzhou, Guangdong Province, People's Republic of China.
Shantou University Medical College, Shantou, Guangdong Province, People's Republic of China.
Clin Rheumatol. 2022 Apr;41(4):1199-1210. doi: 10.1007/s10067-021-05986-z. Epub 2021 Nov 21.
BACKGROUND: Knee osteoarthritis (OA) progresses in a heterogeneous way, as a majority of the patients gradually worsen over decades while some undergo rapid progression and require knee replacement. The aim of this study was to develop a predictive model that enables quantified risk prediction of future knee replacement in patients with early-stage knee OA. METHODS: Patients with early-stage knee OA, intact MRI measurements, and a follow-up time larger than 108 months were retrieved from the Osteoarthritis Initiative database. Twenty-five candidate predictors including demographic data, clinical outcomes, and radiographic parameters were selected. The presence or absence of knee replacement during the first 108 months of the follow-up was regarded as the primary outcome. Patients were randomly divided into derivation and validation groups in the ratio of three to one. Nomograms were developed based on multivariable logistic regressions of derivation group via R language. Those models were further tested in the validation group for external validation. RESULTS: A total of 839 knees were enrolled, with 98 knees received knee replacement during the first 108 months. Glucocorticoid injection history, knee OA in the contralateral side, extensor muscle strength, area of cartilage deficiency, bone marrow lesion, and meniscus extrusion were selected to develop the nomogram after multivariable logistic regression analysis. The bias-corrected C-index and AUC of our nomogram in the validation group were 0.804 and 0.822, respectively. CONCLUSION: Our predicting model provided simplified identification of patients with high risk of rapid progression in knee OA, which showed adequate predictive discrimination and calibration. KEY POINTS: • Knee OA progresses in a heterogeneous way and rises to a challenge when making treatment strategies. • Our predicting model provided simplified identification of patients with high risk of rapid progression in knee OA.
背景:膝关节骨关节炎(OA)呈异质性进展,大多数患者在几十年内逐渐恶化,而有些患者进展迅速,需要进行膝关节置换。本研究旨在建立一个预测模型,能够对早期膝关节 OA 患者未来发生膝关节置换的风险进行量化预测。
方法:从 Osteoarthritis Initiative 数据库中检索出具有早期膝关节 OA、完整 MRI 测量值和随访时间大于 108 个月的患者。选择了 25 个候选预测因子,包括人口统计学数据、临床结果和影像学参数。将随访的前 108 个月内是否进行膝关节置换作为主要结局。患者按三比一的比例随机分为推导组和验证组。通过 R 语言对推导组进行多变量逻辑回归,建立基于列线图的预测模型。进一步在验证组中对这些模型进行外部验证。
结果:共纳入 839 个膝关节,其中 98 个膝关节在随访的前 108 个月内接受了膝关节置换。多变量逻辑回归分析后,选择糖皮质激素注射史、对侧膝关节 OA、伸肌力量、软骨缺损面积、骨髓病变和半月板外突来建立列线图。验证组中我们的列线图的偏置校正 C 指数和 AUC 分别为 0.804 和 0.822。
结论:我们的预测模型简化了识别膝关节 OA 快速进展高风险患者的方法,具有足够的预测区分度和校准度。
关键点:• 膝关节 OA 呈异质性进展,这给制定治疗策略带来了挑战。• 我们的预测模型简化了识别膝关节 OA 快速进展高风险患者的方法。
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