Department of Mathematics, University of Miami, Miami, Florida, United States of America.
Department of Global Community Health and Behavioral Sciences, Tulane University, New Orleans, Louisiana, United States of America.
PLoS One. 2023 Mar 24;18(3):e0283627. doi: 10.1371/journal.pone.0283627. eCollection 2023.
Preventing malnutrition is one of the primary objectives of many humanitarian agencies, and household surveys are regularly employed to monitor food insecurity caused by political, economic, or environmental crises. Consumption frequencies for standard food groups are often collected to characterize the depth of food insecurity in a community and measure the impact of food assistance programs, producing a vector of bounded, correlated counts for each household. While aggregate indicators are typically used to summarize these results with a single statistic, they can be difficult to interpret and provide insufficient detail to judge the effectiveness of assistance programs. To address these limitations, we have developed a multivariate modeling framework for consumption frequency data. We introduce methods to update baseline models for the analysis of the smaller and more variable surveys typically collected in crisis settings, and we present an application of our approach to national consumption data collected in Yemen in 2014 and 2016 by the World Food Programme. The approach provides more nuanced and interpretable information about consumption changes in response to shocks and the effectiveness of humanitarian assistance.
预防营养不良是许多人道主义机构的主要目标之一,经常采用家庭调查来监测由政治、经济或环境危机引起的粮食不安全。通常会收集标准食物组的消费频率,以描述社区粮食不安全的深度,并衡量粮食援助计划的影响,为每个家庭生成一组有界相关的计数。虽然通常使用综合指标来用单个统计数据来总结这些结果,但它们难以解释,并且提供的细节不足以判断援助计划的有效性。为了解决这些限制,我们开发了一种用于消费频率数据的多元建模框架。我们介绍了一些方法来更新基线模型,以分析在危机环境中通常收集的规模较小且更具变化性的调查,我们还介绍了我们的方法在也门的应用,该应用基于世界粮食计划署在 2014 年和 2016 年收集的全国消费数据。该方法提供了关于应对冲击和人道主义援助效果的消费变化的更细致和可解释的信息。