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Risk Prediction Measures for Case-Cohort and Nested Case-Control Designs: An Application to Cardiovascular Disease

机译:病例队列和嵌套病例对照设计的风险预测措施:在心血管疾病中的应用

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摘要

Case-cohort and nested case-control designs are often used to select an appropriate subsample of individuals from prospective cohort studies. Despite the great attention that has been given to the calculation of association estimators, no formal methods have been described for estimating risk prediction measures from these 2 sampling designs. Using real data from the Swedish Twin Registry (2004–2009), the authors sampled unstratified and stratified (matched) case-cohort and nested case-control subsamples and compared them with the full cohort (as “gold standard”). The real biomarker (high density lipoprotein cholesterol) and simulated biomarkers (BIO1 and BIO2) were studied in terms of association with cardiovascular disease, individual risk of cardiovascular disease at 3 years, and main prediction metrics. Overall, stratification improved efficiency, with stratified case-cohort designs being comparable to matched nested case-control designs. Individual risks and prediction measures calculated by using case-cohort and nested case-control designs after appropriate reweighting could be assessed with good efficiency, except for the finely matched nested case-control design, where matching variables could not be included in the individual risk estimation. In conclusion, the authors have shown that case-cohort and nested case-control designs can be used in settings where the research aim is to evaluate the prediction ability of new markers and that matching strategies for nested case-control designs may lead to biased prediction measures.
机译:病例队列和嵌套病例对照设计通常用于从前瞻性队列研究中选择合适的个体子样本。尽管已经对关联估计量的计算给予了极大的关注,但尚未描述用于从这两个抽样设计中估计风险预测措施的正式方法。作者利用瑞典双生子注册中心(2004-2009)的真实数据,对未分层和分层(匹配)的病例队列和嵌套病例对照子样本进行了抽样,并将其与整个队列(“金标准”)进行了比较。研究了真实的生物标志物(高密度脂蛋白胆固醇)和模拟生物标志物(BIO1和BIO2)与心血管疾病的关系,3年时心血管疾病的个体风险以及主要预测指标。总体而言,分层提高了效率,分层案例队列设计与匹配的嵌套案例控制设计相当。经过适当的加权后,使用案例队列和嵌套案例控制设计计算出的个体风险和预测措施可以得到很好的评估,但精细匹配的嵌套案例控制设计不能将匹配变量包括在个体风险估计中。总之,作者表明,病例组和巢状病例对照设计可用于研究目的是评估新标记的预测能力的环境中,而巢状病例对照设计的匹配策略可能会导致偏差预测措施。

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