尼日利亚新生儿存活率的地域不平等:通过空间和人工神经网络分析得出的横截面证据。

IF 1.5 3区 社会学 Q2 DEMOGRAPHY
Daniel A Adeyinka, Nazeem Muhajarine
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引用次数: 0

摘要

本研究旨在提供新生儿死亡率的地域差异及其相关社会决定因素的实证证据,以期改善尼日利亚国家以下各级的新生儿存活率。本研究结合空间分析和人工智能技术,分析了 2016/2017 年尼日利亚多指标类集调查的数据。分析的重点是调查开始前五年出生的 30,924 名加权全国代表性活产婴儿的新生儿期。全局莫兰 I 指数和局部空间自相关聚类图指标用于确定热点和冷点。使用多层感知器神经网络确定尼日利亚各州和地缘政治区新生儿死亡率的主要决定因素。新生儿总死亡率为每 1000 例活产死亡 38 例。有证据表明,尼日利亚各地新生儿死亡率存在地域聚集现象(中北部和西北部地区更严重),主要原因是产妇接触大众传媒的机会较少(大众传媒在促进积极的健康行为方面发挥着关键作用)、生育间隔较短、在家庭生育顺序中的位置较高以及婴儿出生时产妇年龄较小。这项研究强调,尼日利亚有必要转变政策,实施针对各州和各地区的战略。针对不同性别、文化和地区的生殖、孕产妇和儿童健康干预措施可以解决新生儿存活率的地域不平等问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Geographic inequities in neonatal survival in Nigeria: a cross-sectional evidence from spatial and artificial neural network analyses.

This study was conducted to provide empirical evidence of geographical variations of neonatal mortality and its associated social determinants with a view to improving neonatal survival at the subnational level in Nigeria. With a combination of spatial analysis and artificial intelligence techniques, this study analysed data from the 2016/2017 Nigeria Multiple Indicator Cluster Survey. The analysis focused on the neonatal period of a weighted national representative population of 30,924 live births delivered five years before the survey commencement. Global Moran's I index and local indicator of spatial autocorrelation cluster maps were used to determine hot and cold spots. A multilayer perceptron neural network was used to identify the key determinants of neonatal mortality across the states and geopolitical zones in Nigeria. The overall neonatal mortality rate was 38 deaths per 1000 live births. There is evidence of geographic clustering of neonatal mortality across Nigeria (worse in the North-Central and North-West zones), majorly driven by poor maternal access to mass media (which plays a critical role in promoting positive health behaviours), short birth interval, a higher position in a family birth order, and young maternal age at child's birth. This study highlights the need for a policy shift towards implementing state and region-specific strategies in Nigeria. Gender-responsive, culturally, and regionally appropriate reproductive, maternal, and child health-targeted interventions may address geographical inequity in neonatal survival.

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来源期刊
CiteScore
3.00
自引率
6.70%
发文量
108
期刊介绍: Journal of Biosocial Science is a leading interdisciplinary and international journal in the field of biosocial science, the common ground between biology and sociology. It acts as an essential reference guide for all biological and social scientists working in these interdisciplinary areas, including social and biological aspects of reproduction and its control, gerontology, ecology, genetics, applied psychology, sociology, education, criminology, demography, health and epidemiology. Publishing original research papers, short reports, reviews, lectures and book reviews, the journal also includes a Debate section that encourages readers" comments on specific articles, with subsequent response from the original author.
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