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巴基斯坦孕期铁补充趋势的区域差异及其多层次预测因素

Regional variations in the trend of iron supplementation during pregnancy and its multi-level predictors in Pakistan.

作者信息

Shahzad Ruhma, Zakar Rubeena, Shahzad Hamda, Zakar Nazoora Manal, Tariq Fiza, Ahmed Razan, Fischer Florian

机构信息

Department of Public Health, Institute of Social and Cultural Studies, University of the Punjab, Lahore, Pakistan.

Department of Pediatrics, Shalamar Teaching Hospital, Lahore, Pakistan.

出版信息

Sci Rep. 2025 Aug 4;15(1):28452. doi: 10.1038/s41598-025-14616-6.

Abstract

Iron supplementation during pregnancy is a key intervention preventing and treating iron deficiency anemia, which is associated with adverse maternal and neonatal outcomes, including severe maternal anemia, miscarriage, hemorrhage, preterm birth, and low birth weight. Despite this, a comprehensive understanding of the trends and predictors of iron supplementation across different regions and provinces in Pakistan remains limited. This study aims to assess both the temporal trends in iron supplementation among pregnant women and its multi-level determinants. This research utilizes repeated cross-sectional study design using secondary data from four waves of the Pakistan Demographic and Health Survey (PDHS; 2006-07 to 2019) to analyze the regional variations on the trend of iron supplementation. Participants included ever married women of reproductive age who have responded to the question of "uptake of iron supplementation during last pregnancy". Various individual, community and institutional level factors from the data set of PDHS 2019 were used as independent factors to study the predictors of iron supplementation among women during pregnancy. For studying the trends, rate differences, rate ratios, changes in percentages and differences in percentages of iron supplementation during pregnancy were calculated, while for analyzing the predictors of iron supplementation, binary logistic regression models were used. There has been a 44.1% increase in iron supplementation among pregnant women nationwide, with regional increases of 61.7% in rural areas and 19.9% in urban areas, leading to a current national supplementation rate of 65.4%. Factors such as older age, rural residency, living in Sindh or Baluchistan, smoking history, higher number of pregnancies and losses, and more children born or deceased were associated with lower odds of iron supplementation(p < 0.005). Conversely, higher education, residency in Gilgit Baltistan, Azad Jammu and Kashmi, as well as Khyber Pakhtunkhwa, and lady health worker's advice regarding antenatal care were the significant factors with antenatal care utilization as the strongest predictor of supplementation in both unadjusted (OR = 30.07; 95% CI: 23.55-38.40) and adjusted models (AOR = 31.29; 95% CI: 14.37-68.11). Although over half of pregnant women in the study population take iron supplements, the rate is still lower compared to many other countries. Significant regional disparities suggest the need for targeted efforts to increase supplementation rates and improve maternal health outcomes, such as increasing healthcare access in underperforming regions, expanding educational campaigns, and strengthening community-based programs to improve supplementation adherence.

摘要

孕期补铁是预防和治疗缺铁性贫血的一项关键干预措施,缺铁性贫血与不良的孕产妇和新生儿结局相关,包括严重的孕产妇贫血、流产、出血、早产和低出生体重。尽管如此,对于巴基斯坦不同地区和省份补铁的趋势及预测因素仍缺乏全面了解。本研究旨在评估孕妇补铁的时间趋势及其多层次决定因素。本研究采用重复横断面研究设计,利用来自巴基斯坦人口与健康调查(PDHS;2006 - 07年至2019年)四轮的二手数据,分析补铁趋势的区域差异。参与者包括曾回答过“上次孕期是否服用铁补充剂”问题的已婚育龄妇女。来自2019年PDHS数据集的各种个体、社区和机构层面因素被用作独立因素,以研究孕期妇女补铁的预测因素。为研究趋势,计算了孕期补铁的率差、率比、百分比变化和百分比差异,而在分析补铁的预测因素时,使用了二元逻辑回归模型。全国孕妇的补铁率增加了44.1%,农村地区增加了61.7%,城市地区增加了19.9%,目前全国补铁率为65.4%。年龄较大、农村居住、居住在信德省或俾路支省、有吸烟史、怀孕和流产次数较多以及生育或死亡子女较多等因素与较低的补铁几率相关(p < 0.005)。相反,高等教育、居住在吉尔吉特 - 巴尔蒂斯坦、阿扎德查谟和克什米尔以及开伯尔 - 普赫图赫瓦,以及女性卫生工作者关于产前护理的建议是重要因素,产前护理利用在未调整模型(OR = 30.07;95% CI:23.55 - 38.40)和调整模型(AOR = 31.29;95% CI:14.37 - 68.11)中都是补铁最强的预测因素。尽管研究人群中超过一半的孕妇服用铁补充剂,但与许多其他国家相比,这一比例仍然较低。显著的区域差异表明需要有针对性地努力提高补铁率并改善孕产妇健康结局,例如增加表现不佳地区的医疗服务可及性、扩大教育宣传活动以及加强社区项目以提高补铁依从性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/95fb/12321979/5a47947e8f79/41598_2025_14616_Fig1_HTML.jpg

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