Quality of anthropometric data in India's National Family Health Survey: Disentangling interviewer and area effect using a cross-classified multilevel model.

SSM - Population Health Pub Date : 2022-10-06 eCollection Date: 2022-09-01 DOI:10.1016/j.ssmph.2022.101253
Laxmi Kant Dwivedi, Kajori Banerjee, Radhika Sharma, Rakesh Mishra, Sowmya Ramesh, Damodar Sahu, Sanjay K Mohanty, K S James
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引用次数: 1

Abstract

India has adopted a target-based approach to reduce the scourge of child malnourishment. Because the monitoring and evaluation required by this approach relies primarily on large-scale data, a data quality assessment is essential. As field teams are the primary mode of data collection in large-scale surveys, this study attempts to understand their contribution to variations in child anthropometric measures. This research can help disentangle the confounding effects of regions/districts and field teams on the quality of child anthropometric data. The anthropometric z-scores of 2,25,002 children below five years were obtained from the fourth round of India's National Family and Health Survey (NFHS-4), 2015-16. Unadjusted and adjusted standard deviations (SD) of the anthropometric measures were estimated to assess the variations in measurements. In addition, a cross-classified multilevel model (CCMM) approach was adopted to estimate the contribution of geographical regions/districts and teams to variations in anthropometric measures. The unadjusted SDs of the measures of stunting, wasting, and underweight were 1.7, 1.4, and 1.2, respectively. The SD of stunting was above the World Health Organisation threshold (0.8-1.2), as well as the Demographic and Health Survey mark. After adjusting for team-level characteristics, the SDs of all three measures reduced marginally, indicating that team-level workload had a marginal but significant role in explaining the variations in anthropometric z-scores. The CCMM showed that the maximum contribution to variations in anthropometric z-scores came from community-level (Primary Sampling Unit (PSU)) characteristics. Team-level characteristics had a higher contribution to variations in anthropometric z-scores than district-level attributes. Variations in measurement were higher for child height than weight. The present study decomposes the effects of district- and team-level factors and highlights the nuances of introducing teams as a level of analysis in multilevel modelling. Population size, density, and terrain variations between PSUs should be considered when allocating field teams in large-scale surveys.

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印度全国家庭健康调查中人体测量数据的质量:使用交叉分类多层模型解开访谈者和区域效应。
印度采取了以目标为基础的办法来减少儿童营养不良的祸害。由于这种方法所需的监测和评价主要依赖于大规模数据,因此数据质量评估是必不可少的。由于实地小组是大规模调查中数据收集的主要模式,本研究试图了解他们对儿童人体测量变化的贡献。这项研究可以帮助解开地区/地区和实地小组对儿童人体测量数据质量的混淆效应。从2015-16年第四轮印度国家家庭与健康调查(NFHS-4)中获得了2,25,002名5岁以下儿童的人体测量z分数。估计未调整和调整的人体测量标准偏差(SD),以评估测量值的变化。此外,采用交叉分类多层模型(cross-classified multi - level model, CCMM)方法估算了地理区域/地区和团队对人体测量变化的贡献。发育迟缓、消瘦和体重不足的未校正标准差分别为1.7、1.4和1.2。发育迟缓的标准差高于世界卫生组织的阈值(0.8-1.2),也高于人口与健康调查的标准。在调整团队水平特征后,所有三种测量方法的标准差都略有降低,这表明团队水平的工作量在解释人体测量z分数的变化方面具有边际但显著的作用。CCMM显示,对人体测量z分数变化的最大贡献来自社区水平(初级抽样单位(PSU))特征。团队水平的特征比地区水平的特征对人体测量z分数的变化贡献更大。儿童身高的测量差异大于体重的测量差异。本研究分解了地区和团队层面因素的影响,并强调了在多层次建模中引入团队作为分析层面的细微差别。在大规模调查中分配实地小组时,应考虑到psu之间的人口规模、密度和地形变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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