Terefe Bewuketu, Bikale Kebede Fentahun, Nigussie Abrha Nega, Fentaw Shiferaw Yalelet, Kahsay Asgedom Dejen, Keflie Assefa Solomon, Tezera Assimamaw Nega
Department of Community Health Nursing, School of Nursing, College of Medicine and Health Sciences, University of Gondar, Post Office Box: 196, Gondar, Ethiopia.
Stratigic Affairs Executive Office, Ministry of Health, Addis Ababa, Ethiopia.
BMC Public Health. 2025 May 30;25(1):2003. doi: 10.1186/s12889-025-23218-w.
Perinatal mortality, which includes stillbirths and early neonatal deaths, is a critical indicator of maternal and newborn health, especially in developing countries. It highlights the effectiveness of healthcare systems and socioeconomic inequalities. Despite global efforts, such as the Sustainable Development Goals (SDGs), to reduce perinatal mortality, developing countries continue to experience high rates due to factors like inadequate access to quality healthcare, maternal health issues, and socioeconomic disparities. Since, there is limited evidence in the region, this study investigates perinatal mortality in East Africa, using data from Demographic and Health Surveys (DHS) to identify key determinants and inform policy interventions aimed at improving health outcomes.
This study utilized data from the DHS conducted in East Africa. A weighted sample of 101,728 children was included in the analysis using R-4.4.0 software. Descriptive data, including frequencies and texts, were performed. A multilevel modeling analysis was employed to analyze perinatal mortality, considering both individual-level factors and contextual factors. The multilevel model accounts for clustering within countries and allows for the examination of both fixed and random effects that influence perinatal mortality. For the multivariable analysis, variables with a p-value ≤ 0.2 in the univariate analysis were considered. The Adjusted Odds Ratio (AOR) with a 95% Confidence Interval (CI) and a p-value < 0.05 was reported to indicate statistical significance and degree of association in the final model.
The overall pooled effect size of perinatal mortality is 3.67 (2.92, 4.59), with Tanzania having the highest rate and Comoros having the lowest rate. Women aged 25-34 years (AOR = 0.86, 95% CI: 0.81, 0.95), 35-49 years (AOR = 0.89, 95% CI: 0.79, 0.97), and 35-49 years (AOR = 0.89, 95% CI: 0.79, 0.97) compared to women aged 15-24 years, gave birth the first before the age of 20 (AOR = 1.09, 95% CI: 1.03, 1.28), have secondary or higher education (AOR = 0.76, 95% CI: 0.69, 0.81), not being married (AOR = 1.11, 95% CI: 1.05, 1.21), poorer (AOR = 0.94, 95% CI: 0.89, 0.98), and richest women (AOR = 0.95, 95% CI: 0.91, 0.97) compared to the poorest women, mass media exposure (AOR = 1.09, 95% CI: 1.03, 1.15), women with 3-5 children (AOR = 1.16, 95% CI: 1.08, 1.21), and with more than 5 children had even greater odds (AOR = 1.36, 95% CI: 1.29, 1.44), twin births (AOR = 3.62, 95% CI: 3.41, 3.79), modern contraceptive (AOR = 0.82, 95% CI: 0.81, 0.91), had history of abortion (AOR = 8.53, 95% CI: 8.29, 8.79), birth interval of 24-36 (AOR = 0.68, 95% CI: 0.65, 0.73), and 37-59 months (AOR = 0.61, 95% CI: 0.55, 0.67) compared to intervals of < 24 months respectively, having health insurance (AOR = 0.87, 95% CI: 0.82, 0.92), rural residence (AOR = 1.05, 95% CI: 1.02, 1.18), residing in low-income (AOR = 1.33, 95% CI: 1.28, 1.49), and higher literacy rates (AOR = 0.81, 95% CI: 0.79, 0.89) were statistically associated with perinatal mortality respectively.
The study reveals several significant factors associated with perinatal mortality in East Africa. Factors such as women who gave birth before the age of 20, not married, mass media exposure, having more children, twin births, history of abortion, residing in rural areas, and in low-income countries were linked to higher odds of perinatal mortality, however, being older age, better education, better wealth, modern contraception, longer birth intervals, have health insurance, and high literacy rate countries were linked to lower odds of perinatal mortality. To reduce perinatal mortality in East Africa, targeted interventions should focus on improving educational attainment for women, enhancing access to health insurance, and promoting the use of modern contraceptive methods. Additionally, policies aimed at supporting unmarried mothers, managing multiple births, and addressing rural healthcare disparities are essential.
围产期死亡率包括死产和早期新生儿死亡,是孕产妇和新生儿健康的关键指标,在发展中国家尤为如此。它凸显了医疗保健系统的有效性以及社会经济不平等现象。尽管全球为实现可持续发展目标等做出了努力以降低围产期死亡率,但由于获得优质医疗保健的机会不足、孕产妇健康问题以及社会经济差距等因素,发展中国家的围产期死亡率仍然居高不下。鉴于该地区的相关证据有限,本研究利用人口与健康调查(DHS)的数据对东非的围产期死亡率进行调查,以确定关键决定因素并为旨在改善健康结果的政策干预提供依据。
本研究使用了在东非进行的人口与健康调查数据。采用R - 4.4.0软件对101,728名儿童的加权样本进行分析。进行了包括频率和文本在内的描述性数据统计。采用多层次建模分析来分析围产期死亡率,同时考虑个体层面因素和背景因素。多层次模型考虑了国家内部的聚类情况,并允许对影响围产期死亡率的固定效应和随机效应进行检验。对于多变量分析,在单变量分析中p值≤0.2的变量被纳入考虑。报告了最终模型中具有95%置信区间(CI)和p值<0.05的调整优势比(AOR),以表明统计显著性和关联程度。
围产期死亡率的总体合并效应量为3.67(2.92, 4.59),其中坦桑尼亚的发生率最高,科摩罗的发生率最低。与15 - 24岁的女性相比,25 - 34岁(AOR = 0.86,95% CI:0.81, 0.95)、35 - 49岁(AOR = 0.89,95% CI:0.79, 0.97)的女性,首次生育年龄在20岁之前(AOR = 1.09,95% CI:1.03, 1.28),接受过中等或高等教育(AOR = 0.76,95% CI:0.69, 0.81),未婚(AOR = 1.11,95% CI:1.05, 1.21),较贫困(AOR = 0.94,95% CI:0.89, 0.98)以及最富有的女性(AOR = 0.95,95% CI:0.91, 0.97)与最贫困女性相比,接触大众媒体(AOR = 1.09,95% CI:1.03, 1.15),育有3 - 5个孩子的女性(AOR = 1.16,95% CI:1.08, 1.21)以及育有超过5个孩子的女性的风险更高(AOR = 1.36,95% CI:1.29, 1.44),双胞胎分娩(AOR = 3.62,95% CI:3.41, 3.79),使用现代避孕方法(AOR = 0.82,95% CI:0.81, 0.91),有堕胎史(AOR = 8.53,95% CI:8.29, 8.79),分娩间隔为24 - 36个月(AOR = 0.68,95% CI:0.65, 0.73)以及37 - 59个月(AOR = 0.61,95% CI:0.55, 0.67)与<24个月的间隔相比,拥有医疗保险(AOR = 0.87,95% CI:0.82, 0.92),农村居住(AOR = 1.05,95% CI:1.02, 1.18),居住在低收入地区(AOR = 1.33,95% CI:1.28, 1.49)以及识字率较高(AOR = 0.81,95% CI:0.79, 0.89)分别与围产期死亡率存在统计学关联。
该研究揭示了与东非围产期死亡率相关的几个重要因素。诸如20岁之前生育、未婚、接触大众媒体、子女较多、双胞胎分娩、有堕胎史、居住在农村地区以及低收入国家等因素与围产期死亡率较高的几率相关,然而,年龄较大、教育程度较高、财富状况较好、使用现代避孕方法、分娩间隔较长、拥有医疗保险以及识字率较高的国家与围产期死亡率较低的几率相关。为降低东非的围产期死亡率,有针对性的干预措施应侧重于提高女性的教育水平、增加获得医疗保险的机会以及推广使用现代避孕方法。此外,旨在支持未婚母亲、管理多胞胎分娩以及解决农村医疗差距的政策至关重要。