School of Nursing and School of Medicine, University of Pennsylvania, 418 Curie Blvd., Room 426, Claire M. Fagin Hall, Philadelphia, PA 19104-6096, USA.
School of Nursing and School of Medicine, University of Pennsylvania, 418 Curie Blvd., Room 426, Claire M. Fagin Hall, Philadelphia, PA 19104-6096, USA; Department of Biostatistics, Epidemiology and Informatics, Perelman School of Medicine, University of Pennsylvania, Philadelphia, Pennsylvania, USA.
Comput Methods Programs Biomed. 2024 Nov;256:108402. doi: 10.1016/j.cmpb.2024.108402. Epub 2024 Aug 28.
This study aimed to predict early adolescent sleep problems using pregnancy and childbirth risk factors through machine learning algorithms, and to evaluate model performance internally and externally.
Data from the China Jintan Child Cohort study (CJCC; n=848) for model development and the US Healthy Brain and Behavior Study (HBBS; n=454) for external validation were employed. Maternal pregnancy histories, obstetric data, and adolescent sleep problems were collected. Several machine learning techniques were employed, including least absolute shrinkage and selection operator, logistic regression, random forest, naïve bayes, extreme gradient boosting, decision tree, and neural network. The area under the receiver operating characteristic curve, sensitivity, specificity, accuracy, and root mean square of residuals were used to evaluate model performance.
Key predictors for CJCC adolescents' sleep problems include gestational age, birthweight, duration of delivery, and maternal happiness during pregnancy. In HBBS adolescents, the duration of postnatal depressive emotions was the primary perinatal predictor. The prediction models developed in the CJCC had good-to-excellent internal validation performance but poor performance in predicting the sleep problems in HBBS adolescents.
The identification of specific perinatal risk factors associated with adolescent sleep problems can inform targeted interventions during and after pregnancy to mitigate these risks. Health providers should consider integrating these predictive factors into routine pre- and postnatal assessments to identify at-risk populations. The variability in model performance across different cohorts highlights the need for context-specific models and the cautious application of predictive analytics across diverse populations. Future research should focus on refining predictive models to account for such variations, potentially through the incorporation of additional socio-cultural factors and genetic markers. This study emphasizes the importance of personalized and culturally sensitive approaches in the prediction and management of adolescent sleep problems, leveraging advanced computational methods to enhance maternal and child health outcomes.
本研究旨在通过机器学习算法,利用妊娠和分娩风险因素预测青少年早期睡眠问题,并对内部和外部模型性能进行评估。
使用中国金坛儿童队列研究(CJCC;n=848)的数据进行模型开发和美国健康大脑与行为研究(HBBS;n=454)进行外部验证。收集了母亲的妊娠史、产科数据和青少年睡眠问题。采用了几种机器学习技术,包括最小绝对收缩和选择算子、逻辑回归、随机森林、朴素贝叶斯、极端梯度提升、决策树和神经网络。使用受试者工作特征曲线下面积、敏感性、特异性、准确性和残差均方根来评估模型性能。
CJCC 青少年睡眠问题的关键预测因素包括胎龄、出生体重、分娩持续时间和母亲孕期幸福感。在 HBBS 青少年中,产后抑郁情绪持续时间是主要的围产期预测因素。在 CJCC 中开发的预测模型具有良好到优秀的内部验证性能,但在预测 HBBS 青少年的睡眠问题方面表现不佳。
识别与青少年睡眠问题相关的特定围产期风险因素,可以为孕期和产后的针对性干预提供信息,以减轻这些风险。卫生保健提供者应考虑将这些预测因素纳入常规产前和产后评估中,以识别高危人群。不同队列中模型性能的差异突出了需要针对特定情况制定模型以及在不同人群中谨慎应用预测分析的必要性。未来的研究应致力于改进预测模型,以考虑到这些变化,可能通过纳入额外的社会文化因素和遗传标记。本研究强调了在预测和管理青少年睡眠问题时采用个性化和文化敏感方法的重要性,利用先进的计算方法来提高母婴健康结果。