Department of Nutrition and Dietetics, Faculty of Health Care Vesalius, University College Ghent, Keramiekstraat 80, B-9000 Ghent, Belgium.
Br J Nutr. 2012 Sep 28;108(6):1118-25. doi: 10.1017/S0007114511006295. Epub 2011 Dec 5.
Studies using 24 h urine collections need to incorporate ways to validate the completeness of the urine samples. Models to predict urinary creatinine excretion (UCE) have been developed for this purpose; however, information on their usefulness to identify incomplete urine collections is limited. We aimed to develop a model for predicting UCE and to assess the performance of a creatinine index using para-aminobenzoic acid (PABA) as a reference. Data were taken from the European Food Consumption Validation study comprising two non-consecutive 24 h urine collections from 600 subjects in five European countries. Data from one collection were used to build a multiple linear regression model to predict UCE, and data from the other collection were used for performance testing of a creatinine index-based strategy to identify incomplete collections. Multiple linear regression (n 458) of UCE showed a significant positive association for body weight (β = 0·07), the interaction term sex × weight (β = 0·09, reference women) and protein intake (β = 0·02). A significant negative association was found for age (β = -0·09) and sex (β = -3·14, reference women). An index of observed-to-predicted creatinine resulted in a sensitivity to identify incomplete collections of 0·06 (95 % CI 0·01, 0·20) and 0·11 (95 % CI 0·03, 0·22) in men and women, respectively. Specificity was 0·97 (95 % CI 0·97, 0·98) in men and 0·98 (95 % CI 0·98, 0·99) in women. The present study shows that UCE can be predicted from weight, age and sex. However, the results revealed that a creatinine index based on these predictions is not sufficiently sensitive to exclude incomplete 24 h urine collections.
使用 24 小时尿液收集的研究需要纳入验证尿液样本完整性的方法。为此,已经开发了预测尿肌酐排泄量(UCE)的模型;然而,关于其用于识别不完整尿液收集的有用性的信息有限。我们旨在开发预测 UCE 的模型,并评估使用对氨基苯甲酸(PABA)作为参考的肌酐指数的性能。数据来自欧洲食物消费验证研究,该研究包括五个欧洲国家的 600 名受试者的两个非连续 24 小时尿液收集。一个收集的数据用于构建预测 UCE 的多元线性回归模型,另一个收集的数据用于测试基于肌酐指数的策略来识别不完整收集的性能。UCE 的多元线性回归(n 458)显示,体重(β = 0.07)、性别×体重的交互项(β = 0.09,参考女性)和蛋白质摄入量(β = 0.02)呈显著正相关。年龄(β = -0.09)和性别(β = -3.14,参考女性)呈显著负相关。观察到的与预测肌酐的比值指数导致对男女不完整收集的敏感性分别为 0.06(95 % CI 0.01,0.20)和 0.11(95 % CI 0.03,0.22)。特异性分别为男性 0.97(95 % CI 0.97,0.98)和女性 0.98(95 % CI 0.98,0.99)。本研究表明,UCE 可以根据体重、年龄和性别进行预测。然而,结果表明,基于这些预测的肌酐指数不能足够敏感地排除不完整的 24 小时尿液收集。