Yu Dahai, Peat George, Bedson John, Edwards John J, Turkiewicz Aleksandra, Jordan Kelvin P
Arthritis Research UK Primary Care Centre, Research Institute for Primary Care & Health Sciences, Keele University, Keele, Staffordshire ST5 5BG, United Kingdom.
Arthritis Research UK Primary Care Centre, Research Institute for Primary Care & Health Sciences, Keele University, Keele, Staffordshire ST5 5BG, United Kingdom.
J Clin Epidemiol. 2016 Aug;76:218-28. doi: 10.1016/j.jclinepi.2016.02.025. Epub 2016 Mar 8.
To establish the association between prior knee-pain consultations and early diagnosis of knee osteoarthritis (OA) by weighted cumulative exposure (WCE) models.
Data were from an electronic health care record (EHR) database (Consultations in Primary Care Archive). WCE functions for modeling the cumulative effect of time-varying knee-pain consultations weighted by recency were derived as a predictive tool in a population-based case-control sample and validated in a prospective cohort sample. Two WCE functions ([i] weighting of the importance of past consultations determined a priori; [ii] flexible spline-based estimation) were comprehensively compared with two simpler models ([iii] time since most recent consultation; total number of past consultations) on model goodness of fit, discrimination, and calibration both in derivation and validation phases.
People with the most recent and most frequent knee-pain consultations were more likely to have high WCE scores that were associated with increased risk of knee OA diagnosis both in derivation and validation phases. Better model goodness of fit, discrimination, and calibration were observed for flexible spline-based WCE models.
WCE functions can be used to model prediagnostic symptoms within routine EHR data and provide novel low-cost predictive tools contributing to early diagnosis.
通过加权累积暴露(WCE)模型建立既往膝关节疼痛会诊与膝关节骨关节炎(OA)早期诊断之间的关联。
数据来自电子医疗记录(EHR)数据库(初级保健档案中的会诊记录)。在基于人群的病例对照样本中,推导了用于模拟按近期加权的随时间变化的膝关节疼痛会诊累积效应的WCE函数,作为一种预测工具,并在前瞻性队列样本中进行了验证。在推导和验证阶段,将两个WCE函数([i]预先确定过去会诊重要性的加权;[ii]基于灵活样条的估计)与两个更简单的模型([iii]距最近一次会诊的时间;过去会诊的总数)在模型拟合优度、区分度和校准方面进行了全面比较。
在推导和验证阶段,最近和最频繁进行膝关节疼痛会诊的人更有可能获得高WCE分数,这与膝关节OA诊断风险增加相关。基于灵活样条的WCE模型显示出更好的模型拟合优度、区分度和校准。
WCE函数可用于在常规EHR数据中模拟诊断前症状,并提供有助于早期诊断的新型低成本预测工具。