Hagos Seifu, Hailemariam Damen, WoldeHanna Tasew, Lindtjørn Bernt
Department of Reproductive Health and Health Service Management, School of Public Health, College of Health Sciences, Addis Ababa University, Addis Ababa, Ethiopia.
Center for International Health, University of Bergen, Bergen, Norway.
PLoS One. 2017 Feb 7;12(2):e0170785. doi: 10.1371/journal.pone.0170785. eCollection 2017.
Understanding the spatial distribution of stunting and underlying factors operating at meso-scale is of paramount importance for intervention designing and implementations. Yet, little is known about the spatial distribution of stunting and some discrepancies are documented on the relative importance of reported risk factors. Therefore, the present study aims at exploring the spatial distribution of stunting at meso- (district) scale, and evaluates the effect of spatial dependency on the identification of risk factors and their relative contribution to the occurrence of stunting and severe stunting in a rural area of Ethiopia.
A community based cross sectional study was conducted to measure the occurrence of stunting and severe stunting among children aged 0-59 months. Additionally, we collected relevant information on anthropometric measures, dietary habits, parent and child-related demographic and socio-economic status. Latitude and longitude of surveyed households were also recorded. Local Anselin Moran's I was calculated to investigate the spatial variation of stunting prevalence and identify potential local pockets (hotspots) of high prevalence. Finally, we employed a Bayesian geo-statistical model, which accounted for spatial dependency structure in the data, to identify potential risk factors for stunting in the study area.
Overall, the prevalence of stunting and severe stunting in the district was 43.7% [95%CI: 40.9, 46.4] and 21.3% [95%CI: 19.5, 23.3] respectively. We identified statistically significant clusters of high prevalence of stunting (hotspots) in the eastern part of the district and clusters of low prevalence (cold spots) in the western. We found out that the inclusion of spatial structure of the data into the Bayesian model has shown to improve the fit for stunting model. The Bayesian geo-statistical model indicated that the risk of stunting increased as the child's age increased (OR 4.74; 95% Bayesian credible interval [BCI]:3.35-6.58) and among boys (OR 1.28; 95%BCI; 1.12-1.45). However, maternal education and household food security were found to be protective against stunting and severe stunting.
Stunting prevalence may vary across space at different scale. For this, it's important that nutrition studies and, more importantly, control interventions take into account this spatial heterogeneity in the distribution of nutritional deficits and their underlying associated factors. The findings of this study also indicated that interventions integrating household food insecurity in nutrition programs in the district might help to avert the burden of stunting.
了解发育迟缓的空间分布以及中尺度上起作用的潜在因素对于干预措施的设计和实施至关重要。然而,关于发育迟缓的空间分布知之甚少,而且在报告的风险因素的相对重要性方面存在一些差异。因此,本研究旨在探索中尺度(区)水平上发育迟缓的空间分布,并评估空间依赖性对埃塞俄比亚农村地区风险因素识别及其对发育迟缓和重度发育迟缓发生的相对贡献的影响。
开展了一项基于社区的横断面研究,以测量0至59个月儿童中发育迟缓和重度发育迟缓的发生率。此外,我们收集了有关人体测量指标、饮食习惯、父母及儿童相关人口统计学和社会经济状况的相关信息。还记录了被调查家庭的纬度和经度。计算局部安塞尔林莫兰指数(Local Anselin Moran's I)以研究发育迟缓患病率的空间变化并识别高患病率的潜在局部聚集区(热点)。最后,我们采用了贝叶斯地理统计模型,该模型考虑了数据中的空间依赖性结构,以识别研究区域内发育迟缓的潜在风险因素。
总体而言,该地区发育迟缓和重度发育迟缓的患病率分别为43.7% [95%置信区间:40.9, 46.4] 和21.3% [95%置信区间:19.5, 23.3]。我们在该地区东部发现了发育迟缓高患病率的统计学显著聚集区(热点),在西部发现了低患病率聚集区(冷点)。我们发现,将数据的空间结构纳入贝叶斯模型已显示出能改善发育迟缓模型的拟合度。贝叶斯地理统计模型表明,发育迟缓的风险随着儿童年龄的增加而增加(比值比4.74;95%贝叶斯可信区间[BCI]:3.35 - 6.58),在男孩中也是如此(比值比1.28;95%BCI;1.12 - 1.45)。然而,发现母亲教育程度和家庭粮食安全对发育迟缓和重度发育迟缓具有保护作用。
发育迟缓患病率可能在不同尺度的空间上有所不同。因此,营养研究以及更重要的是控制干预措施考虑营养缺乏及其潜在相关因素分布中的这种空间异质性非常重要。本研究结果还表明,将家庭粮食不安全纳入该地区营养项目的干预措施可能有助于避免发育迟缓的负担。