Lund University, Faculty of Medicine, Department of Clinical Sciences Lund, Orthopaedics, Clinical Epidemiology Unit, Lund, Sweden; National Advisory Unit on Rehabilitation in Rheumatology, Department of Rheumatology, Diakonhjemmet Hospital, Oslo, Norway.
Lund University, Faculty of Medicine, Department of Clinical Sciences Lund, Orthopaedics, Clinical Epidemiology Unit, Lund, Sweden.
Osteoarthritis Cartilage. 2018 Aug;26(8):1027-1032. doi: 10.1016/j.joca.2018.05.010. Epub 2018 May 21.
Improved prediction modeling in osteoarthritis (OA) may encourage risk reduction through calculation of individual and population lifetime risks. There are currently no prediction models for hand OA. Thus, we aimed to 1) develop a prediction model for hand OA in men and 2) to contrast its discriminative performance to a prediction model for lung cancer and chronic obstructive pulmonary disease (COPD).
We included 40,118 men aged 18 years undergoing mandatory conscription in Sweden 1969-70. Incident hand OA and lung cancer/COPD were obtained from diagnostic codes in the Swedish National Patient Register 1987-2010, i.e., until subjects were 59 years of age. We studied the strongest candidate predictors from five domains; socioeconomic, local biomechanical, systemic, lifestyle-related and general health factors, using logistic regression with backward elimination of candidate predictors with P > 0.2 to determine final models. To avoid overfitting we used bootstrapping.
The strongest predictors for hand OA were body mass index (BMI), elbow flexor strength, systolic blood pressure, lower education and sleep problems. We observed excellent agreement between observed and predicted values, yet the discrimination was moderate (Area Under the Curve [AUC] = 0.62, 95% CI = 0.58-0.64). The discrimination in the prediction model for lung cancer/COPD was good (AUC = 0.74, 95% CI = 0.72-0.76).
This prediction model for hand OA was capable of discriminating between persons with and without hand OA to a similar extent that has been previously reported for knee OA. Still, prediction of OA is more challenging than for chronic pulmonary disease.
在骨关节炎(OA)中,改进的预测模型可以通过计算个体和人群的终身风险来鼓励降低风险。目前尚无手部 OA 的预测模型。因此,我们的目的是 1)建立男性手部 OA 的预测模型,2)对比该模型与肺癌和慢性阻塞性肺疾病(COPD)预测模型的判别性能。
我们纳入了 1969-1970 年在瑞典进行强制性兵役的 40118 名 18 岁男性。1987-2010 年期间,通过瑞典国家患者登记处的诊断代码获得手部 OA 新发病例和肺癌/COPD。直到研究对象 59 岁时。我们使用逻辑回归和候选预测因素的后向消除法,从五个领域中选择最强的候选预测因素;社会经济、局部生物力学、全身、生活方式相关和总体健康因素,来确定最终模型。为了避免过度拟合,我们使用了自举法。
手部 OA 的最强预测因素是体重指数(BMI)、肘屈肌力量、收缩压、低教育程度和睡眠问题。我们观察到观察值和预测值之间具有极好的一致性,但区分度中等(曲线下面积[AUC] = 0.62,95%置信区间[CI] = 0.58-0.64)。肺癌/COPD 预测模型的区分度较好(AUC = 0.74,95% CI = 0.72-0.76)。
这个手部 OA 的预测模型能够区分有无手部 OA 的个体,其区分度与之前报道的膝关节 OA 相似。然而,OA 的预测比慢性肺部疾病更具挑战性。