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用于儿童超重早期预防的婴儿超重风险检查表的验证、最佳阈值确定及临床应用

Validation, Optimal Threshold Determination, and Clinical Utility of the Infant Risk of Overweight Checklist for Early Prevention of Child Overweight.

作者信息

Redsell Sarah A, Weng Stephen, Swift Judy A, Nathan Dilip, Glazebrook Cris

机构信息

1 Faculty of Health, Social Care, and Education, Anglia Ruskin University , Cambridge, United Kingdom .

2 School of Medicine, Division of Primary Care, University of Nottingham , Nottingham, United Kingdom .

出版信息

Child Obes. 2016 Jun;12(3):202-9. doi: 10.1089/chi.2015.0246. Epub 2016 Apr 19.

Abstract

BACKGROUND

Previous research has demonstrated the predictive validity of the Infant Risk of Overweight Checklist (IROC). This study further establishes the predictive accuracy of the IROC using data from the Avon Longitudinal Study of Parents and Children (ALSPAC) and examines the optimal threshold for determining high risk of childhood overweight.

METHODS

Using the IROC algorithm, we calculated the risk of being overweight, based on International Obesity Task Force criteria, in the first year of life for 980 children in the ALSPAC cohort at 5 years. Discrimination was assessed by the area under the receiver operating curve (AUC c-statistic). Net reclassification index (NRI) was calculated for risk thresholds ranging from 2.5% to 30%, which determine cutoffs for identifying infants at risk of becoming overweight.

RESULTS

At 5 years of age, 12.3% of boys and 19.6% of girls were categorized overweight. Discrimination (AUC c-statistic) ranged from 0.67 (95% confidence interval [CI], 0.62-0.72) when risk scores were calculated directly to 0.93 (95% CI, 0.88-0.98) when the algorithm was recalibrated and missing values of the risk factor algorithm were imputed. The NRI showed that there were positive gains in reclassification using risk thresholds from 5% to 20%, with the maximum NRI being at 10%.

CONCLUSIONS

This study confirms that the IROC has moderately good validity for assessing overweight risk in infants and offers an optimal threshold for determining high risk. The IROC algorithm has been imbedded into a computer program for Proactive Assessment of Obesity Risk during Infancy, which facilitates early overweight prevention through communication of risk to parents.

摘要

背景

先前的研究已证明婴儿超重风险检查表(IROC)的预测效度。本研究利用来自阿冯父母与儿童纵向研究(ALSPAC)的数据进一步确定IROC的预测准确性,并探讨确定儿童超重高风险的最佳阈值。

方法

我们使用IROC算法,根据国际肥胖特别工作组的标准,计算了ALSPAC队列中980名5岁儿童在出生后第一年超重的风险。通过受试者工作特征曲线下面积(AUC c统计量)评估辨别力。计算了风险阈值从2.5%到30%的净重新分类指数(NRI),这些阈值确定了识别有超重风险婴儿的临界值。

结果

5岁时,12.3%的男孩和19.6%的女孩被归类为超重。辨别力(AUC c统计量)范围从直接计算风险分数时的0.67(95%置信区间[CI],0.62 - 0.72)到重新校准算法并估算风险因素算法缺失值时的0.93(95%CI,0.88 - 0.98)。NRI表明,使用5%至20%的风险阈值进行重新分类有正向增益,最大NRI在10%。

结论

本研究证实IROC在评估婴儿超重风险方面具有中等良好的效度,并提供了确定高风险的最佳阈值。IROC算法已被嵌入到婴儿期肥胖风险主动评估的计算机程序中,通过向家长传达风险促进早期超重预防。

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