Construction and Validation of a Model for Predicting Fear of Childbirth: A Cross-Sectional Population Study via Machine Learning.

IF 2.6 4区 医学 Q2 OBSTETRICS & GYNECOLOGY International Journal of Women's Health Pub Date : 2025-02-06 eCollection Date: 2025-01-01 DOI:10.2147/IJWH.S508153
Zhi-Lin Zhang, Kang-Jia Chen, Hui Chen, Miao-Miao Zhu, Jing-Jing Gu, Li-Shuai Jiang, Lan Zheng, Shu-Guang Zhou
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Abstract

Background: Fear of childbirth (FOC) is a psychological state of fear and distress that pregnant women experience when they approach labor. This fear can have significant negative effects on both the mother and the newborn, making it crucial to study the influencing factors of FOC to implement early interventions.

Objective: First, identify the risk factors for FOC occurrence, then construct a predictive model for FOC and evaluate its predictive efficiency.

Methods: A total of 901 pregnant women who underwent regular prenatal check-ups at Anhui Women and Children's Medical Center were selected. Participants completed questionnaires. General information and relevant medical data of the patients were collected for data aggregation. The data was randomly divided into a training set (n = 632) and a testing set (n = 269) in a 7:3 ratio. Univariate analysis of risk factors for FOC was performed on the training set data. Using univariate logistic regression and multivariate logistic regression to analyze the risk factors associated with the occurrence of FOC, we constructed a FOC risk predictive model via ten different machine learning methods and evaluated the predictive performance of the model.

Results: Our study indicated that educational level, history of adverse pregnancy outcomes, history of cesarean section, planned pregnancy, assisted reproduction, income, payment, SAS scores, and age are independent risk factors for FOC. The risk predictive model included six factors, such as gravidity, history of adverse pregnancy outcomes, history of cesarean section, planned pregnancy, payment, and SSRS scores. The model was built using ten types of machine learning and was evaluated to perform well.

Conclusion: Gravidity, history of adverse pregnancy outcomes, history of cesarean section, planned pregnancy, payment method, and SSRS score are risk factors for FOC in late-pregnancy women. The risk predictive model established in this study has a high clinical reference value.

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一个预测分娩恐惧的模型的构建和验证:通过机器学习的横断面人口研究。
背景:分娩恐惧(Fear of birth, FOC)是孕妇临产时所经历的一种恐惧和痛苦的心理状态。这种恐惧会对母亲和新生儿产生显著的负面影响,因此研究FOC的影响因素对实施早期干预至关重要。目的:首先识别FOC发生的危险因素,然后构建FOC预测模型并评价其预测效率。方法:选取安徽省妇女儿童医疗中心定期产前检查的孕妇901例。参与者完成问卷调查。收集患者一般情况及相关医疗资料进行数据汇总。数据按7:3的比例随机分为训练集(n = 632)和测试集(n = 269)。对训练集数据进行FOC危险因素的单因素分析。采用单变量logistic回归和多变量logistic回归分析与FOC发生相关的风险因素,通过10种不同的机器学习方法构建了FOC风险预测模型,并对模型的预测性能进行了评价。结果:我们的研究表明,教育程度、不良妊娠结局史、剖宫产史、计划妊娠史、辅助生殖史、收入、支付、SAS评分和年龄是FOC的独立危险因素。风险预测模型包括妊娠、不良妊娠结局史、剖宫产史、计划妊娠、支付、SSRS评分等6个因素。该模型使用十种类型的机器学习来构建,并被评估为表现良好。结论:妊娠、不良妊娠结局史、剖宫产史、计划妊娠、支付方式、SSRS评分是晚期妊娠妇女发生FOC的危险因素。本研究建立的风险预测模型具有较高的临床参考价值。
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来源期刊
International Journal of Women's Health
International Journal of Women's Health OBSTETRICS & GYNECOLOGY-
CiteScore
3.70
自引率
0.00%
发文量
194
审稿时长
16 weeks
期刊介绍: International Journal of Women''s Health is an international, peer-reviewed, open access, online journal. Publishing original research, reports, editorials, reviews and commentaries on all aspects of women''s healthcare including gynecology, obstetrics, and breast cancer. Subject areas include: Chronic conditions including cancers of various organs specific and not specific to women Migraine, headaches, arthritis, osteoporosis Endocrine and autoimmune syndromes - asthma, multiple sclerosis, lupus, diabetes Sexual and reproductive health including fertility patterns and emerging technologies to address infertility Infectious disease with chronic sequelae including HIV/AIDS, HPV, PID, and other STDs Psychological and psychosocial conditions - depression across the life span, substance abuse, domestic violence Health maintenance among aging females - factors affecting the quality of life including physical, social and mental issues Avenues for health promotion and disease prevention across the life span Male vs female incidence comparisons for conditions that affect both genders.
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