Centre for Global Health, University of Dublin, Trinity College, 7-9 South Leinster Street, Dublin 2, Dublin, Ireland.
GOAL Global, Carnegie House, Library Road, Dun Laoighre, Co Dublin, Ireland.
Public Health Nutr. 2021 Apr;24(6):1265-1274. doi: 10.1017/S1368980020004048. Epub 2020 Oct 16.
To determine (i) whether distinct groups of infants under 6 months old (U6M) were identifiable as malnourished based on anthropometric measures and if so to determine the probability of admittance to GOAL Ethiopia's Management of At Risk Mothers and Infants (MAMI) programme based on group membership; (ii) whether there were discrepancies in admission using recognised anthropometric criteria, compared with group membership and (iii) the barriers and potential solutions to identifying malnutrition within U6M.
Mixed-methods approaches were used, whereby data collected by GOAL Ethiopia underwent: factor mixture modelling, χ2 analysis and logistic regression analysis. Qualitative analysis was performed through coding of key informant interviews.
Data were collected in two refugee camps in Ethiopia. Key informant interviews were conducted remotely with international MAMI programmers and nutrition experts.
Participants were 3444 South-Sudanese U6M and eleven key informants experienced in MAMI programming.
Well-nourished and malnourished groups were identified, with notable discrepancies between group membership and MAMI programme admittance. Despite weight for age z-scores (WAZ) emerging as the most discriminant measure to identify malnutrition, admittance was most strongly associated with mid-upper arm circumference (MUAC). Misconceptions surrounding malnutrition, a dearth of evidence and issues with the current identification protocol emerged as barriers to identifying malnutrition among U6M.
Our model suggests that WAZ is the most discriminating anthropometric measure for malnutrition in this population. However, the challenges of using WAZ should be weighed up against the more scalable, but potentially overly sensitive and less accurate use of MUAC among U6M.
确定(i)是否可以根据人体测量指标将 6 个月以下的婴儿(U6M)分为营养不良组,如果可以,那么根据分组情况,确定婴儿能否进入 GOAL 埃塞俄比亚的高危产妇和婴儿管理(MAMI)计划;(ii)与分组情况相比,使用公认的人体测量标准进行入院时是否存在差异;以及(iii)确定 U6M 中营养不良的障碍和潜在解决方案。
采用混合方法,GOAL 埃塞俄比亚收集的数据经过:因素混合模型、卡方分析和逻辑回归分析。通过对关键知情人访谈进行编码进行定性分析。
数据收集于埃塞俄比亚的两个难民营。与国际 MAMI 程序员和营养专家进行了远程关键知情人访谈。
参与者为 3444 名南苏丹 U6M 和 11 名在 MAMI 编程方面经验丰富的关键知情人。
确定了营养良好和营养不良的组群,分组情况和 MAMI 计划入院之间存在显著差异。尽管体重与年龄的 Z 分数(WAZ)作为识别营养不良的最具区分性指标,但与 MUAC 相比,入院与 MUAC 关系最密切。在识别 U6M 中的营养不良方面,出现了对营养不良的误解、缺乏证据以及当前识别协议的问题等障碍。
我们的模型表明,WAZ 是该人群中识别营养不良的最具区分性的人体测量指标。然而,使用 WAZ 的挑战应该与 MUAC 的更具可扩展性但潜在过于敏感和不太准确的使用相权衡。