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一项关于儿童早期体重指数轨迹与超重风险之间关联的前瞻性队列研究

[A prospective cohort study of association between early childhood body mass index trajectories and the risk of overweight].

作者信息

Yue Zhihan, Han Na, Bao Zheng, Lyu Jinlang, Zhou Tianyi, Ji Yuelong, Wang Hui, Liu Jue, Wang Haijun

机构信息

Department of Maternal and Child Health, Peking University School of Public Health, Beijing 100191, China.

Tongzhou Maternal and Child Health Hospital of Beijing, Beijing 101101, China.

出版信息

Beijing Da Xue Xue Bao Yi Xue Ban. 2024 Jun 18;56(3):390-396. doi: 10.19723/j.issn.1671-167X.2024.03.003.

Abstract

OBJECTIVE

To compare the association between body mass index (BMI) trajectories determined by different methods and the risk of overweight in early childhood in a prospective cohort study, and to identify children with higher risk of obesity during critical growth windows of early childhood.

METHODS

A total of 1 330 children from Peking University Birth Cohort in Tongzhou (PKUBC-T) were included in this study. The children were followed up at birth, 1, 3, 6, 9, 12, 18, and 24 months and 3 years of age to obtain their height/length and weight data, and calculate BMI Z-score. Latent class growth mixture modeling (GMM) and longitudinal data-based -means clustering algorithm (KML) were used to determine the grouping of early childhood BMI trajectories from birth to 24 mouths. Linear regression was used to compare the association between early childhood BMI trajectories determined by different methods and BMI Z-score at 3 years of age. The predictive performance of early childhood BMI trajectories determined by different methods in predicting the risk of overweight (BMI Z-score > 1) at 3 years was compared using the average area under the curve (AUC) of 5-fold cross-validation in Logistic regression models.

RESULTS

In the study population included in this research, the three-category trajectories determined using GMM were classified as low, medium, and high, accounting for 39.7%, 54.1%, and 6.2% of the participants, respectively. The two-category trajectories determined using the KML method were classified as low and high, representing 50. 3% and 49. 7% of the participants, respectively. The three-category trajectories determined using the KML method were classified as low, medium, and high, accounting for 31.1%, 47.4%, and 21.5% of the participants, respectively. There were certain differences in the growth patterns reflected by the early childhood BMI trajectories determined using different methods. Linear regression analysis found that after adjusting for maternal ethnicity, educational level, delivery mode, parity, maternal age at delivery, gestational week at delivery, children' s gender, and breastfeeding at 1 month of age, the association between the high trajectory group in the three-category trajectories determined by the KML method (manifested by a slightly higher BMI at birth, followed by rapid growth during infancy and a stable-high BMI until 24 months) and BMI Z-scores at 3 years was the strongest. Logistic regression analysis revealed that the three-category trajectory grouping determined by the KML method had the best predictive performance for the risk of overweight at 3 years. The results were basically consistent after additional adjustment for the high bound score of the child' s diet balanced index, average daily physical activity time, and screen time.

CONCLUSION

This study used different methods to identify early childhood BMI trajectories with varying characteristics, and found that the high trajectory group determined by the KML method was better able to identify children with a higher risk of overweight in early childhood. This provides scientific evidence for selecting appropriate methods to define early childhood BMI trajectories.

摘要

目的

在一项前瞻性队列研究中,比较不同方法确定的体重指数(BMI)轨迹与幼儿期超重风险之间的关联,并识别幼儿关键生长窗口期肥胖风险较高的儿童。

方法

本研究纳入了1330名来自北京大学通州出生队列(PKUBC-T)的儿童。对这些儿童在出生时、1、3、6、9、12、18、24个月及3岁时进行随访,以获取他们的身高/身长和体重数据,并计算BMI Z评分。采用潜在类别生长混合模型(GMM)和基于纵向数据的均值聚类算法(KML)来确定从出生到24个月幼儿期BMI轨迹的分组。使用线性回归比较不同方法确定的幼儿期BMI轨迹与3岁时BMI Z评分之间的关联。在逻辑回归模型中,使用5折交叉验证的平均曲线下面积(AUC)比较不同方法确定的幼儿期BMI轨迹在预测3岁时超重风险(BMI Z评分>1)方面的预测性能。

结果

在本研究纳入的研究人群中,使用GMM确定的三类轨迹分为低、中、高,分别占参与者的39.7%、54.1%和6.2%。使用KML方法确定的两类轨迹分为低和高,分别占参与者的50.3%和49.7%。使用KML方法确定的三类轨迹分为低、中、高,分别占参与者的31.1%、47.4%和21.5%。不同方法确定的幼儿期BMI轨迹所反映的生长模式存在一定差异。线性回归分析发现,在调整了母亲的种族、教育水平、分娩方式、产次、分娩时母亲年龄、分娩孕周、儿童性别和1月龄时的母乳喂养情况后,KML方法确定的三类轨迹中的高轨迹组(表现为出生时BMI略高,随后在婴儿期快速增长,直到24个月时BMI稳定在较高水平)与3岁时的BMI Z评分之间的关联最强。逻辑回归分析显示KML方法确定的三类轨迹分组对3岁时超重风险的预测性能最佳。在进一步调整儿童饮食平衡指数的高分值、平均每日体育活动时间和屏幕时间后,结果基本一致。

结论

本研究使用不同方法识别了具有不同特征的幼儿期BMI轨迹,发现KML方法确定的高轨迹组更能识别幼儿期超重风险较高的儿童。这为选择合适的方法定义幼儿期BMI轨迹提供了科学依据。

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