Predicting pregnancy loss and its determinants among reproductive-aged women using supervised machine learning algorithms in Sub-Saharan Africa.

IF 2.3 Q2 OBSTETRICS & GYNECOLOGY
Frontiers in global women's health Pub Date : 2025-02-10 eCollection Date: 2025-01-01 DOI:10.3389/fgwh.2025.1456238
Tirualem Zeleke Yehuala, Sara Beyene Mengesha, Nebebe Demis Baykemagn
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Abstract

Background: Pregnancy loss is a significant public health issue globally, particularly in Sub-Saharan Africa (SSA), where maternal health outcomes continue to be a major concern. Despite notable progress in improving maternal health, pregnancy-related complications, including s due to miscarriages, stillbirths, and induced abortions, continue to impact women's health, social wellbeing, and economic stability in the region. This study aims to identify the key predictors of pregnancy loss and develop effective predictive models for pregnancy loss among reproductive-aged women in SSA.

Methods: We derived the data for this cross-sectional study from the most recent Demographic and Health Survey of Sub-Saharan African countries. Python software was used to process the data, and machine learning techniques such as Random Forest, Decision Tree, Logistic Regression, Extreme Gradient Boosting, and Gaussian were applied. The performance of the predictive models was evaluated using several standard metrics, including the ROC curve, accuracy score, precision, recall, and F-measure.

Result: The final experimental results indicated that the Random Forest model performed the best in predicting pregnancy loss, achieving an accuracy of 98%, precision of 98%, F-measure of 83%, ROC curve of 94%, and recall of 77%. The Gaussian model had the lowest classification accuracy, with an accuracy of 92.64% compared to the others. Based on SHPY values, unmarried women may be more likely to experience pregnancy loss, particularly in contexts where premarital pregnancies are stigmatized. The use of antenatal care and family planning services can significantly impact the risk of pregnancy loss. Women from lower-income backgrounds may face challenges in accessing prenatal care or safe reproductive health services, leading to higher risks of loss. Additionally, higher levels of education are often correlated with increased awareness of family planning methods and better access to healthcare, which can reduce the likelihood of unintended pregnancy loss.

Conclusion: The Random Forest machine learning model demonstrates greater predictive power in estimating pregnancy loss risk factors. Machine learning can help facilitate early prediction and intervention for women at high risk of pregnancy loss. Based on these findings, we recommend policy measures aimed at reducing pregnancy loss Sub-Saharan African countries.

使用监督机器学习算法预测撒哈拉以南非洲育龄妇女的妊娠损失及其决定因素。
背景:妊娠丢失是全球的一个重大公共卫生问题,特别是在撒哈拉以南非洲(SSA),孕产妇健康结果仍然是一个主要问题。尽管在改善孕产妇保健方面取得了显著进展,但与妊娠有关的并发症,包括流产、死胎和人工流产造成的并发症,继续影响该区域妇女的健康、社会福利和经济稳定。本研究旨在确定SSA育龄妇女妊娠丢失的关键预测因素,并建立有效的妊娠丢失预测模型。方法:我们从撒哈拉以南非洲国家最近的人口与健康调查中获得了这项横断面研究的数据。使用Python软件处理数据,并应用随机森林、决策树、逻辑回归、极端梯度增强和高斯等机器学习技术。使用几个标准指标评估预测模型的性能,包括ROC曲线、准确度评分、精密度、召回率和F-measure。结果:最终实验结果表明,随机森林模型预测流产的准确率为98%,精密度为98%,F-measure为83%,ROC曲线为94%,召回率为77%。高斯模型的分类准确率最低,为92.64%。根据SHPY的价值观,未婚妇女更有可能经历流产,特别是在婚前怀孕受到歧视的情况下。使用产前保健和计划生育服务可显著影响流产风险。来自低收入背景的妇女在获得产前护理或安全生殖健康服务方面可能面临挑战,从而导致更高的损失风险。此外,较高的教育水平往往与提高对计划生育方法的认识和更好地获得保健有关,这可以减少意外怀孕损失的可能性。结论:随机森林机器学习模型在估计流产风险因素方面具有更强的预测能力。机器学习可以帮助促进对高危流产妇女的早期预测和干预。基于这些发现,我们建议采取旨在减少撒哈拉以南非洲国家妊娠损失的政策措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.70
自引率
0.00%
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审稿时长
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