Weng Stephen F, Kai Joe, Andrew Neil H, Humphries Steve E, Qureshi Nadeem
Division of Primary Care, School of Medicine, University of Nottingham, UK.
Wolfson College, University of Oxford, UK.
Atherosclerosis. 2015 Feb;238(2):336-43. doi: 10.1016/j.atherosclerosis.2014.12.034. Epub 2014 Dec 20.
Heterozygous familial hypercholesterolaemia (FH) is a common autosomal dominant disorder. The vast majority of affected individuals remain undiagnosed, resulting in lost opportunities for preventing premature heart disease. Better use of routine primary care data offers an opportunity to enhance detection. We sought to develop a new predictive algorithm for improving identification of individuals in primary care who could be prioritised for further clinical assessment using established diagnostic criteria.
Data were analysed for 2,975,281 patients with total or LDL-cholesterol measurement from 1 Jan 1999 to 31 August 2013 using the Clinical Practice Research Datalink (CPRD). Included in this cohort study were 5050 documented cases of FH. Stepwise logistic regression was used to derive optimal multivariate prediction models. Model performance was assessed by its discriminatory accuracy (area under receiver operating curve [AUC]).
The FH prediction model (FAMCAT), consisting of nine diagnostic variables, showed high discrimination (AUC 0.860, 95% CI 0.848-0.871) for distinguishing cases from non-cases. Sensitivity analysis demonstrated no significant drop in discrimination (AUC 0.858, 95% CI 0.845-0.869) after excluding secondary causes of hypercholesterolaemia. Removing family history variables reduced discrimination (AUC 0.820, 95% CI 0.807-0.834), while incorporating more comprehensive family history recording of myocardial infraction significantly improved discrimination (AUC 0.894, 95% CI 0.884-0.904).
This approach offers the opportunity to enhance detection of FH in primary care by identifying individuals with greatest probability of having the condition. Such cases can be prioritised for further clinical assessment, appropriate referral and treatment to prevent premature heart disease.
杂合子家族性高胆固醇血症(FH)是一种常见的常染色体显性疾病。绝大多数受影响个体仍未被诊断出来,导致错失预防早发性心脏病的机会。更好地利用常规初级保健数据为提高检测率提供了契机。我们试图开发一种新的预测算法,以改进在初级保健中对那些可根据既定诊断标准优先进行进一步临床评估的个体的识别。
利用临床实践研究数据链(CPRD)对1999年1月1日至2013年8月31日期间进行总胆固醇或低密度脂蛋白胆固醇测量的2975281例患者的数据进行分析。该队列研究纳入了5050例记录在案的FH病例。采用逐步逻辑回归推导最佳多变量预测模型。通过其判别准确性(受试者操作特征曲线下面积[AUC])评估模型性能。
由九个诊断变量组成的FH预测模型(FAMCAT)在区分病例与非病例方面显示出高辨别力(AUC 0.860,95%可信区间0.848 - 0.871)。敏感性分析表明,排除高胆固醇血症的继发原因后,辨别力无显著下降(AUC 0.858,95%可信区间0.845 - 0.869)。去除家族史变量会降低辨别力(AUC 0.820,95%可信区间0.807 - 0.834),而纳入更全面的心肌梗死家族史记录则显著提高了辨别力(AUC 0.894,95%可信区间0.884 - 0.904)。
这种方法为通过识别最有可能患有该疾病的个体来提高初级保健中FH的检测率提供了机会。此类病例可优先进行进一步临床评估、适当转诊和治疗,以预防早发性心脏病。