Faculdade de Saúde Pública, Universidade de São Paulo, São Paulo, São Paulo, Brasil.
Fundação Universidade Federal do ABC, Santo André, São Paulo, Brasil.
Nutr Rev. 2024 Nov 1;82(11):1514-1523. doi: 10.1093/nutrit/nuad142.
Poor anthropometric data quality affect the prevalence of malnutrition and could harm public policy planning.
This systematic review and meta-analysis was designed to identify different methods to evaluate and clean anthropometric data, and to calculate the frequency of implausible values for weight and height obtained from these methodologies.
Studies about anthropometric data quality and/or anthropometric data cleaning were searched for in the MEDLINE, LILACS, SciELO, Embase, Scopus, Web of Science, and Google Scholar databases in October 2020 and updated in January 2023. In addition, references of included studies were searched for the identification of potentially eligible studies.
Paired researchers selected studies, extracted data, and critically appraised the selected publications.
Meta-analysis of the frequency of implausible values and 95% confidence interval (CI) was estimated. Heterogeneity (I2) and publication bias were examined by meta-regression and funnel plot, respectively.
In the qualitative synthesis, 123 reports from 104 studies were included, and in the quantitative synthesis, 23 studies of weight and 14 studies of height were included. The study reports were published between 1980 and 2022. The frequency of implausible values for weight was 0.55% (95%CI, 0.29-0.91) and for height was 1.20% (95%CI, 0.44-2.33). Heterogeneity was not affected by the methodological quality score of the studies and publication bias was discarded.
Height had twice the frequency of implausible values compared with weight. Using a set of indicators of quality to evaluate anthropometric data is better than using indicators singly.
PROSPERO registration no. CRD42020208977.
人体测量数据质量差会影响营养不良的流行程度,并可能损害公共政策规划。
本系统评价和荟萃分析旨在确定评估和清理人体测量数据的不同方法,并计算这些方法获得的体重和身高不合理值的频率。
于 2020 年 10 月在 MEDLINE、LILACS、SciELO、Embase、Scopus、Web of Science 和 Google Scholar 数据库中搜索关于人体测量数据质量和/或人体测量数据清理的研究,并于 2023 年 1 月更新。此外,还通过检索纳入研究的参考文献来确定潜在合格的研究。
配对研究人员选择研究、提取数据并批判性地评价选定的出版物。
对不合理值的频率进行荟萃分析并估计 95%置信区间 (CI)。通过 meta 回归和漏斗图分别检查异质性 (I2) 和发表偏倚。
在定性综合中,纳入了 104 项研究中的 123 份报告,在定量综合中,纳入了 23 项体重研究和 14 项身高研究。研究报告的发表时间为 1980 年至 2022 年。体重不合理值的频率为 0.55%(95%CI,0.29-0.91),身高不合理值的频率为 1.20%(95%CI,0.44-2.33)。异质性不受研究方法质量评分的影响,并且排除了发表偏倚。
身高的不合理值频率是体重的两倍。使用一组质量指标评估人体测量数据比单独使用指标更好。
PROSPERO 注册号 CRD42020208977。