Fernandes G S, Bhattacharya A, McWilliams D F, Ingham S L, Doherty M, Zhang W
Division of Rheumatology, Orthopaedics and Dermatology, School of Medicine, University of Nottingham, Nottingham, UK.
Arthritis Research UK Centre for Sport, Exercise and Osteoarthritis, Nottingham, UK.
Arthritis Res Ther. 2017 Mar 20;19(1):59. doi: 10.1186/s13075-017-1272-6.
Twenty-five percent of the British population over the age of 50 years experiences knee pain. Knee pain can limit physical ability and cause distress and bears significant socioeconomic costs. The objectives of this study were to develop and validate the first risk prediction model for incident knee pain in the Nottingham community and validate this internally within the Nottingham cohort and externally within the Osteoarthritis Initiative (OAI) cohort.
A total of 1822 participants from the Nottingham community who were at risk for knee pain were followed for 12 years. Of this cohort, two-thirds (n = 1203) were used to develop the risk prediction model, and one-third (n = 619) were used to validate the model. Incident knee pain was defined as pain on most days for at least 1 month in the past 12 months. Predictors were age, sex, body mass index, pain elsewhere, prior knee injury and knee alignment. A Bayesian logistic regression model was used to determine the probability of an OR >1. The Hosmer-Lemeshow χ statistic (HLS) was used for calibration, and ROC curve analysis was used for discrimination. The OAI cohort from the United States was also used to examine the performance of the model.
A risk prediction model for knee pain incidence was developed using a Bayesian approach. The model had good calibration, with an HLS of 7.17 (p = 0.52) and moderate discriminative ability (ROC 0.70) in the community. Individual scenarios are given using the model. However, the model had poor calibration (HLS 5866.28, p < 0.01) and poor discriminative ability (ROC 0.54) in the OAI cohort.
To our knowledge, this is the first risk prediction model for knee pain, regardless of underlying structural changes of knee osteoarthritis, in the community using a Bayesian modelling approach. The model appears to work well in a community-based population but not in individuals with a higher risk for knee osteoarthritis, and it may provide a convenient tool for use in primary care to predict the risk of knee pain in the general population.
在英国,50岁以上人群中有25%经历过膝关节疼痛。膝关节疼痛会限制身体活动能力,导致痛苦,并带来巨大的社会经济成本。本研究的目的是开发并验证诺丁汉社区首个膝关节疼痛发病风险预测模型,并在诺丁汉队列中进行内部验证,在骨关节炎倡议(OAI)队列中进行外部验证。
对诺丁汉社区1822名有膝关节疼痛风险的参与者进行了12年的随访。在这个队列中,三分之二(n = 1203)用于开发风险预测模型,三分之一(n = 619)用于验证模型。膝关节疼痛发病定义为在过去12个月中,多数日子疼痛至少持续1个月。预测因素包括年龄、性别、体重指数、其他部位疼痛、既往膝关节损伤和膝关节对线情况。使用贝叶斯逻辑回归模型确定比值比(OR)>1的概率。采用Hosmer-Lemeshow χ统计量(HLS)进行校准,采用ROC曲线分析进行鉴别。来自美国的OAI队列也用于检验该模型的性能。
采用贝叶斯方法开发了膝关节疼痛发病风险预测模型。该模型在校准方面表现良好,社区中的HLS为7.17(p = 0.52),鉴别能力中等(ROC为0.70)。使用该模型给出了个体情况。然而,该模型在OAI队列中的校准较差(HLS为5866.28,p < 0.01),鉴别能力也较差(ROC为0.54)。
据我们所知,这是社区中首个使用贝叶斯建模方法的膝关节疼痛风险预测模型,无论膝关节骨关节炎的潜在结构变化如何。该模型在基于社区的人群中似乎效果良好,但在膝关节骨关节炎风险较高的个体中效果不佳,它可能为初级保健提供一个方便的工具,用于预测普通人群中膝关节疼痛的风险。