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揭示产后创伤后应激障碍:利用决策树和逻辑回归预测中国女性的风险因素

Unveiling postpartum PTSD: predicting risk factors using decision trees and logistic regression in Chinese women.

作者信息

Nie Xiao Fei, Xu Lan Lan, Guo Wen Ping, Li Jin Hui, Cheng Li, Zhang Tao Tao, Li Jun-Yan

机构信息

School of nursing, Hubei University of Medicine, Shi Yan, China.

Shiyan RenMin Hospital (Affiliated Hospital of Hubei University of Medicine), Shi Yan, China.

出版信息

BMC Psychiatry. 2025 Aug 19;25(1):798. doi: 10.1186/s12888-025-07261-w.

Abstract

BACKGROUND

While traditional logistic regression emphasizes main effects with limited capacity for interaction detection, emerging decision trees excel in uncovering complex associations. However, no studies have yet integrated both approaches to investigate postpartum posttraumatic stress disorder (PP-PTSD). This study aims to explore the factors associated with postpartum posttraumatic stress disorder (PP-PTSD) in Chinese women using decision tree and logistic regression models, while also comparing the predictive performance of both approaches.

METHODS

This cross-sectional study recruited postpartum women using convenience sampling between June 2021 and December 2022. PTSD was assessed using the City Birth Trauma Scale (City BiTS). The Perceived Social Support Scale (PSSS), Simplified Coping Style Questionnaire (SCSQ), Pregnancy Stress Rating Scale (PSRS), and Connor-Davidson Resilience Scale (CD-RISC) were employed to evaluate perceived social support, psychological coping strategies, pregnancy stress and resilience, respectively. Decision tree and logistic regression models were applied to identify factors associated with PTSD.

RESULTS

Among 704 valid participants, 36 (5.11%) screened positive for PP-PTSD. Logistic regression identified postpartum duration, sleep quality, pregnancy stress, family support, and positive coping as significant predictors of PP-PTSD (p < 0.05). The decision tree model highlighted postpartum sleep quality as the primary determinant, followed by pregnancy stress and postpartum duration. While both models achieved perfect sensitivity (100%), logistic regression demonstrated superior overall performance, with a 2.28% higher classification accuracy (97.73% vs. 95.45%) and enhanced specificity (97.9% vs. 88.9%). The AUC values further validated this advantage (0.992 vs. 0.968).

CONCLUSIONS

This study utilized Logistic Regression and Decision Tree models to identify key factors influencing PP-PTSD, which include postpartum duration, sleep quality, pregnancy stress, family support, and positive coping. The identified modifiable factors enable targeted PP-PTSD prevention, with Logistic Regression providing high-accuracy screening tools and Decision Trees simplifying risk assessment in community settings.

摘要

背景

传统逻辑回归强调主效应,检测交互作用的能力有限,而新兴的决策树在揭示复杂关联方面表现出色。然而,尚未有研究将这两种方法结合起来调查产后创伤后应激障碍(PP-PTSD)。本研究旨在使用决策树和逻辑回归模型探索中国女性产后创伤后应激障碍(PP-PTSD)的相关因素,同时比较这两种方法的预测性能。

方法

本横断面研究于2021年6月至2022年12月采用便利抽样法招募产后女性。使用城市分娩创伤量表(City BiTS)评估创伤后应激障碍。分别采用领悟社会支持量表(PSSS)、简易应对方式问卷(SCSQ)、妊娠压力评定量表(PSRS)和康纳-戴维森韧性量表(CD-RISC)评估领悟社会支持、心理应对策略、妊娠压力和韧性。应用决策树和逻辑回归模型识别与创伤后应激障碍相关的因素。

结果

在704名有效参与者中,36人(5.11%)产后创伤后应激障碍筛查呈阳性。逻辑回归确定产后持续时间、睡眠质量、妊娠压力、家庭支持和积极应对是产后创伤后应激障碍的重要预测因素(p < 0.05)。决策树模型突出了产后睡眠质量是主要决定因素,其次是妊娠压力和产后持续时间。虽然两种模型的敏感性均达到完美(100%),但逻辑回归显示出更好的整体性能,分类准确率高2.28%(97.73%对95.45%),特异性增强(97.9%对88.9%)。AUC值进一步验证了这一优势(0.992对0.968)。

结论

本研究利用逻辑回归和决策树模型确定了影响产后创伤后应激障碍的关键因素,包括产后持续时间、睡眠质量、妊娠压力、家庭支持和积极应对。确定的可改变因素有助于针对性地预防产后创伤后应激障碍,逻辑回归提供了高精度的筛查工具,决策树简化了社区环境中的风险评估。

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