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用于在人口统计学和种族多样化的美国队列中开发儿科肥胖风险评分的变量验证。

Validation of Variables for Use in Pediatric Obesity Risk Score Development in Demographically and Racially Diverse United States Cohorts.

机构信息

Division of Pediatric Gastroenterology, Hepatology and Nutrition, Department of Pediatrics, University of California, San Francisco, San Francisco, CA.

Center for Environmental Research and Children's Health, University of California, Berkeley, Berkeley, CA.

出版信息

J Pediatr. 2024 Dec;275:114219. doi: 10.1016/j.jpeds.2024.114219. Epub 2024 Jul 31.

Abstract

OBJECTIVE

To evaluate the performance of childhood obesity prediction models in four independent cohorts in the United States, using previously validated variables obtained easily from medical records as measured in different clinical settings.

STUDY DESIGN

Data from four prospective cohorts, Latinx, Eating, and Diabetes; Stress in Pregnancy Study; Project Viva; and Center for the Health Assessment of Mothers and Children of Salinas were used to test childhood obesity risk models and predict childhood obesity by ages 4 through 6, using five clinical variables (maternal age, maternal prepregnancy body mass index, birth weight Z-score, weight-for-age Z-score change, and breastfeeding), derived from a previously validated risk model and as measured in each cohort's clinical setting. Multivariable logistic regression was performed within each cohort, and performance of each model was assessed based on discrimination and predictive accuracy.

RESULTS

The risk models performed well across all four cohorts, achieving excellent discrimination. The area under the receiver operator curve was 0.79 for Center for the Health Assessment of Mothers and Children of Salinas and Project Viva, 0.83 for Stress in Pregnancy Study, and 0.86 for Latinx, Eating, and Diabetes. At a 50th percentile threshold, the sensitivity of the models ranged from 12% to 53%, and specificity was ≥ 90%. The negative predictive values were ≥ 80% for all cohorts, and the positive predictive values ranged from 62% to 86%.

CONCLUSION

All four risk models performed well in each independent and demographically diverse cohort, demonstrating the utility of these five variables for identifying children at high risk for developing early childhood obesity in the United States.

摘要

目的

评估四个美国独立队列中儿童肥胖预测模型的性能,这些模型使用先前验证过的变量,这些变量可以从医疗记录中获得,并且在不同的临床环境下进行测量。

研究设计

使用拉丁裔、饮食和糖尿病前瞻性队列研究;妊娠压力研究;生活项目和萨利纳斯母婴健康评估中心的数据,来测试儿童肥胖风险模型,并通过 5 个临床变量(母亲年龄、母亲孕前体重指数、出生体重 Z 分数、体重与年龄 Z 分数变化和母乳喂养)预测儿童在 4 至 6 岁时肥胖的风险,这些变量是从以前验证过的风险模型中推导出来的,并在每个队列的临床环境中进行测量。在每个队列中进行多变量逻辑回归,根据区分度和预测准确性评估每个模型的性能。

结果

该风险模型在所有四个队列中表现良好,具有出色的区分度。接受者操作特征曲线下面积为中心的母亲和儿童健康评估的 0.79 萨利纳斯和生活项目,妊娠压力研究为 0.83,拉丁裔、饮食和糖尿病为 0.86。在 50%的阈值下,模型的敏感性范围为 12%至 53%,特异性≥90%。所有队列的阴性预测值均≥80%,阳性预测值范围为 62%至 86%。

结论

所有四个风险模型在每个独立的和人口统计学上多样化的队列中表现良好,证明了这五个变量在美国识别儿童早期肥胖高风险的有效性。

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