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探索用于预测尼日利亚育龄妇女生育偏好的机器学习算法。

Exploring machine learning algorithms for predicting fertility preferences among reproductive age women in Nigeria.

作者信息

Tadese Zinabu Bekele, Nimani Teshome Demis, Mare Kusse Urmale, Gubena Fetlework, Wali Ismail Garba, Sani Jamilu

机构信息

Department of Health Informatics, College of Medicine and Health Science, Samara University, Samara, Ethiopia.

Department of Epidemiology and Biostatistics, School of Public Health College of Medicine and Health Science, Haramaya University, Harar, Ethiopia.

出版信息

Front Digit Health. 2025 Jan 16;6:1495382. doi: 10.3389/fdgth.2024.1495382. eCollection 2024.

Abstract

BACKGROUND

Fertility preferences refer to the number of children an individual would like to have, regardless of any obstacles that may stand in the way of fulfilling their aspirations. Despite the creation and application of numerous interventions, the overall fertility rate in West African nations, particularly Nigeria, is still high at 5.3% according to 2018 Nigeria Demographic and Health Survey data. Hence, this study aimed to predict the fertility preferences of reproductive age women in Nigeria using state-of-the-art machine learning techniques.

METHODS

Secondary data analysis from the recent 2018 Nigeria Demographic and Health Survey dataset was employed using feature selection to identify predictors to build machine learning models. Data was thoroughly assessed for missingness and weighted to draw valid inferences. Six machine learning algorithms, namely, Logistic Regression, Support Vector Machine, K-Nearest Neighbors, Decision Tree, Random Forest, and eXtreme Gradient Boosting, were employed on a total sample size of 37,581 in Python 3.9 version. Model performance was assessed using accuracy, precision, recall, F1-score, and area under the receiver operating characteristic curve (AUROC). Permutation and Gini techniques were used to identify the feature's importance.

RESULTS

Random Forest achieved the highest performance with an accuracy of 92%, precision of 94%, recall of 91%, F1-score of 92%, and AUROC of 92%. Factors influencing fertility preferences were number of children, age group, and ideal family size. Region, contraception intention, ethnicity, and spousal occupation had a moderate influence. The woman's occupation, education, and marital status had a lower impact.

CONCLUSION

This study highlights the potential of machine learning for analyzing complex demographic data, revealing hidden factors associated with fertility preferences among Nigerian women. In conclusion, these findings can inform more effective family planning interventions, promoting sustainable development across Nigeria.

摘要

背景

生育偏好是指个人希望生育的子女数量,无论实现其愿望可能会遇到何种障碍。尽管已经制定并应用了众多干预措施,但根据2018年尼日利亚人口与健康调查数据,西非国家,尤其是尼日利亚的总体生育率仍然很高,为5.3%。因此,本研究旨在使用最先进的机器学习技术预测尼日利亚育龄妇女的生育偏好。

方法

采用最近的2018年尼日利亚人口与健康调查数据集进行二次数据分析,通过特征选择来识别预测因素,以构建机器学习模型。对数据进行了全面的缺失值评估,并进行加权以得出有效的推论。在Python 3.9版本中,对总共37581个样本使用了六种机器学习算法,即逻辑回归、支持向量机、K近邻、决策树、随机森林和极端梯度提升。使用准确率、精确率、召回率、F1分数和接收器操作特征曲线下面积(AUROC)评估模型性能。使用排列和基尼技术来确定特征的重要性。

结果

随机森林的性能最高,准确率为92%,精确率为94%,召回率为91%,F1分数为92%,AUROC为92%。影响生育偏好的因素有子女数量、年龄组和理想家庭规模。地区、避孕意愿、种族和配偶职业有中等影响。女性的职业、教育程度和婚姻状况影响较小。

结论

本研究突出了机器学习在分析复杂人口数据方面的潜力,揭示了与尼日利亚女性生育偏好相关的隐藏因素。总之,这些发现可为更有效的计划生育干预措施提供参考,促进尼日利亚的可持续发展。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/69d6/11781225/0e2f91bb26d6/fdgth-06-1495382-g001.jpg

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