Adem Jibril Bashir, Nebi Tewodros Desalegn, Walle Agmasie Damtew, Mamo Daniel Niguse, Wado Sudi Jemal, Enyew Ermias Bekele, Kebede Shimels Derso
Department of Public Health, Arsi University, Asella, Ethiopia.
Health Informatics, Debre Markos University College of Health Science, Debre Markos, Ethiopia.
BMJ Public Health. 2025 Apr 17;3(1):e000962. doi: 10.1136/bmjph-2024-000962. eCollection 2025.
Reducing maternal and infant mortality, preventing unintended pregnancies and improving the health of women and their families are all strongly associated with use of family planning (FP). It is widely believed that intentions are a strong predictor of behaviours, and many interventions that aim to change behaviour, including those targeting FP use, rely on evaluating programme effectiveness through analysis of behavioural intentions. Understanding a woman's intention to use FP is crucial in predicting and promoting its actual use. Thus, using explainable machine learning algorithms, this study aimed to identify the key determinants of intention to use FP among women of reproductive age in Ethiopia.
Secondary data from the Ethiopian Performance Monitoring and Accountability 2021 survey were analysed using R and Python on Google Colab. Eight machine learning classifiers were employed to identify significant determinants of intention to use FP in a weighted sample of 5993 women. Performance metrics evaluated these classifiers. Data preparation techniques, such as feature engineering, handling missing values and addressing imbalanced categories, were applied. A SHAP (SHapley Additive exPlanations) analysis identified the most influential predictors, clarifying their impact on model outcomes.
Using 10-fold cross-validation and balanced training data, the random forest model achieved an accuracy of 77.0% (95% CI 74.73%, 79.33%) and an area under the curve of 85.0% (95% CI 81.43%, 88.63%), making it the most effective model. The SHAP analysis revealed the key determinants of intention to use FP, including age at first use of FP, partner's age, marital status, religion, pregnancy status, unmet needs for FP, family size and household relationship dynamics.
This research highlights the sociodemographic, economic and personal factors influencing intention to use FP in Ethiopia. Addressing barriers such as perceived side effects, unmet needs for FP and partner involvement can improve FP uptake. Insights from this study can inform targeted interventions and policies to enhance the health and well-being of women in Ethiopia.
降低孕产妇和婴儿死亡率、预防意外怀孕以及改善妇女及其家庭的健康状况都与计划生育的使用密切相关。人们普遍认为意图是行为的有力预测指标,许多旨在改变行为的干预措施,包括那些针对计划生育使用的措施,都依赖于通过分析行为意图来评估项目效果。了解女性使用计划生育的意图对于预测和促进其实际使用至关重要。因此,本研究使用可解释的机器学习算法,旨在确定埃塞俄比亚育龄妇女使用计划生育意图的关键决定因素。
利用R和Python在谷歌Colab上分析了来自埃塞俄比亚2021年绩效监测与问责调查的二手数据。使用八个机器学习分类器来确定在5993名女性的加权样本中使用计划生育意图的重要决定因素。性能指标对这些分类器进行了评估。应用了数据准备技术,如特征工程、处理缺失值和解决类别不平衡问题。SHAP(Shapley值加法解释)分析确定了最具影响力的预测因素,阐明了它们对模型结果的影响。
使用10折交叉验证和平衡训练数据,随机森林模型的准确率达到77.0%(95%置信区间74.73%,79.33%),曲线下面积为85.0%(95%置信区间81.43%,88.63%),使其成为最有效的模型。SHAP分析揭示了使用计划生育意图的关键决定因素,包括首次使用计划生育的年龄、伴侣年龄、婚姻状况、宗教信仰、怀孕状况、未满足的计划生育需求、家庭规模和家庭关系动态。
本研究突出了影响埃塞俄比亚使用计划生育意图的社会人口、经济和个人因素。解决诸如感知到的副作用、未满足的计划生育需求和伴侣参与等障碍可以提高计划生育的采用率。本研究的见解可为有针对性的干预措施和政策提供参考,以增强埃塞俄比亚妇女的健康和福祉。