女性产后抑郁症的预测:多种机器学习模型的开发和验证。

IF 7.5 2区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
Weijing Qi, Yongjian Wang, Yipeng Wang, Sha Huang, Cong Li, Haoyu Jin, Jinfan Zuo, Xuefei Cui, Ziqi Wei, Qing Guo, Jie Hu
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引用次数: 0

摘要

背景:产后抑郁症(PPD)是一个重要的公共卫生问题。本研究旨在开发和验证使用生物心理社会预测因子的机器学习(ML)模型来预测围产期妇女PPD的风险,并为PPD的早期发现提供几种风险评估工具。方法:从2021年8月至2022年8月期间的1138名围产期妇女中获得候选预测因子,包括精神病史以及人口统计学、社会心理和生理因素。产后6周用爱丁堡产后抑郁量表测量PPD的主要结局。采用7种特征选择方法和6种机器学习算法建立模型,并比较了它们的预测性能。结果:共确定了11个与PPD相关的潜在预测因素,并将其用于构建PPD的产前和产后预测模型。交叉验证结果表明,采用logistic回归(LR)[曲线下面积(AUC): 0.801, 0.858]和人工神经网络(ANN) (AUC: 0.787, 0.844)算法建立的模型预测效果最好。与产前模型相比,产后预测因子(主要照顾者和婆婆的护理)的加入显著提高了产后模型的预测性能。采用风险分层评分、nomogram和Shapley additive explanation对早期预测PPD的风险预测模型进行可视化解释。结论:LR和ANN模型的预测效果最好。应用这些模型和风险评估工具来早期预测和筛查产后抑郁症对公共卫生有几个影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of postpartum depression in women: development and validation of multiple machine learning models.

Background: Postpartum depression (PPD) is a significant public health issue. This study aimed to develop and validate machine learning (ML) models using biopsychosocial predictors to predict the risk of PPD for perinatal women and to provide several risk assessment tools for the early detection of PPD.

Methods: Candidate predictors, including history of mental illness and demographic, psychosocial, and physiological factors, were obtained from 1138 perinatal women between August 2021 and August 2022. The primary outcome of PPD was measured with the Edinburgh Postnatal Depression Scale at 6 weeks postpartum. Seven feature selection methods and six ML algorithms were employed to develop models, and their prediction performances were compared.

Results: A total of 11 potential predictive factors associated with PPD were identified and subsequently used to construct prenatal and postpartum predictive models for PPD. The cross-validation results showed that the models built on logistic regression (LR) [area under the curve (AUC): 0.801, 0.858] and artificial neural network (ANN) (AUC: 0.787, 0.844) algorithms exhibited the best prediction performance. In contrast to the prenatal models, the addition of postpartum predictors (primary caregiver and mother-in-law's care) remarkably improved the predictive performance of the postpartum models. The risk-stratification score, the nomogram, and the Shapley additive explanation were used to visualize and interpret the risk prediction model for predicting PPD in the early stage.

Conclusions: The LR and ANN models achieved the best predictive performances. Applying these models and risk assessment tools to early predict and screen PPD has several implications for public health.

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来源期刊
Journal of Translational Medicine
Journal of Translational Medicine 医学-医学:研究与实验
CiteScore
10.00
自引率
1.40%
发文量
537
审稿时长
1 months
期刊介绍: The Journal of Translational Medicine is an open-access journal that publishes articles focusing on information derived from human experimentation to enhance communication between basic and clinical science. It covers all areas of translational medicine.
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