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一种新的基于形状的方法,用于识别从出生到 11 岁的胎龄调整生长模式。

A novel shape-based approach to identify gestational age-adjusted growth patterns from birth to 11 years of age.

机构信息

Department of Nutritional Sciences, Temerty Faculty of Medicine, University of Toronto, 1 King's College Circle, Medical Sciences Building, Toronto, ON, M5S 1A8, Canada.

Translational Medicine Program, Hospital for Sick Children, Peter Gilgan Centre for Research and Learning, 686 Bay Street, Toronto, ON, M5G 0A4, Canada.

出版信息

Sci Rep. 2023 Jan 31;13(1):1709. doi: 10.1038/s41598-023-28485-4.

Abstract

Child growth patterns assessment is critical to design public health interventions. However, current analytical approaches may overlook population heterogeneity. To overcome this limitation, we developed a growth trajectories clustering pipeline that incorporates a shape-respecting distance, baseline centering (i.e., birth-size normalized trajectories) and Gestational Age (GA)-correction to characterize shape-based child growth patterns. We used data from 3945 children (461 preterm) in the 2004 Pelotas Birth Cohort with at least 3 measurements between birth (included) and 11 years of age. Sex-adjusted weight-, length/height- and body mass index-for-age z-scores were derived at birth, 3 months, and at 1, 2, 4, 6 and 11 years of age (INTERGROWTH-21st and WHO growth standards). Growth trajectories clustering was conducted for each anthropometric index using k-means and a shape-respecting distance, accounting or not for birth size and/or GA-correction. We identified 3 trajectory patterns for each anthropometric index: increasing (High), stable (Middle) and decreasing (Low). Baseline centering resulted in pattern classification that considered early life growth traits. GA-correction increased the intercepts of preterm-born children trajectories, impacting their pattern classification. Incorporating shape-based clustering, baseline centering and GA-correction in growth patterns analysis improves the identification of subgroups meaningful for public health interventions.

摘要

儿童生长模式评估对于设计公共卫生干预措施至关重要。然而,目前的分析方法可能忽略了人群异质性。为了克服这一局限性,我们开发了一种生长轨迹聚类分析管道,该方法结合了形状保持距离、基线中心化(即出生大小标准化轨迹)和胎龄(GA)校正,以描述基于形状的儿童生长模式。我们使用了 2004 年佩洛塔斯出生队列中 3945 名儿童(461 名早产儿)的数据,这些儿童在出生(含)和 11 岁之间至少有 3 次测量。在出生时、3 个月时以及 1、2、4、6 和 11 岁时,根据性别调整了体重、长度/身高和体重指数年龄 z 分数(INTERGROWTH-21 标准和世卫组织生长标准)。对于每个体格指标,我们使用 k-means 算法和形状保持距离进行生长轨迹聚类分析,同时考虑或不考虑出生大小和/或 GA 校正。对于每个体格指标,我们确定了 3 种轨迹模式:增加(高)、稳定(中)和减少(低)。基线中心化导致了考虑早期生命生长特征的模式分类。GA 校正增加了早产儿出生轨迹的截距,影响了他们的模式分类。将基于形状的聚类、基线中心化和 GA 校正纳入生长模式分析,可以更好地识别对公共卫生干预具有重要意义的亚组。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c58a/9889302/e1c15437d8a1/41598_2023_28485_Fig1_HTML.jpg

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