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模糊集定性比较分析与模糊认知图:探究妊娠结局与产妇抑郁

Fuzzy‑set qualitative comparative analysis and fuzzy cognitive maps: Exploring pregnancy outcomes and maternal depression.

作者信息

Sarantaki Antigoni, Nomikou Anastasia, Tzimourta Katerina, Orovou Eirini, Gourounti Kleanthi, Barbounaki Stavroula

机构信息

Midwifery Department, Faculty of Health and Care Sciences, University of West Attica, 12243 Athens, Greece.

Biomedical Technology and Digital Health Laboratory, Department of Electrical and Computer Engineering, Faculty of Engineering, University of Western Macedonia, 50100 Kozani, Greece.

出版信息

Med Int (Lond). 2025 Mar 27;5(3):30. doi: 10.3892/mi.2025.229. eCollection 2025 May-Jun.

Abstract

The maternal antenatal attachment scale (MAAS), the pregnancy outcome questionnaire (POQ) and the Centre for Epidemiologic Studies Depression Scale (CESD), among other approaches, have been developed to address pregnancy-related psychological issues. However, the need to develop and validate effective scales to screen the complex experiences of pregnant women continues to be extensively discussed in the literature. The aim of the present study was to build and validate fuzzy models that represent the necessary and sufficient causal combinations that lead to higher levels of anxiety regarding pregnancy outcomes, maternal prenatal attachment to the unborn child and depressive symptoms, respectively. For this purpose, measurements from the MAAS, POQ and CESD scales, along with demographic data, were collected from 135 pregnant women, including cases of natural conception (NC) and assisted reproduction (ART) births. Fuzzy-set qualitative comparative analysis (FSQCA) was employed to produce sets of causal combinations, which were validated against their consistency and coverage. These combinations were then used to develop and validate fuzzy cognitive maps (FCMs) to model the fluctuations in the status of pregnant women. To the best of our knowledge, the present study is the first to utilize FSQCA or FCM to address this issue. The results indicated that the POQ was the distinguishing factor between NC and ART that led to higher MAAS levels. Marital status (MS) and state anxiety were found to lead to higher POQ levels for pregnancies derived from NC. For pregnancies following ART, the factors to consider include income, week of pregnancy, MS, MAAS intensity and trait anxiety. POQ was found to lead to higher levels of CESD for ART pregnancies, while NC, MS and state anxiety are also prerequisites. On the whole, the present study demonstrates that the proposed FSQCA- and FCM-based approach enables obstetricians and midwives to incorporate their expertise in evaluating cases on an individual basis, while also providing a framework for creating intelligent systems to support healthcare policy decisions.

摘要

为解决与妊娠相关的心理问题,已开发出多种方法,如孕产妇产前依恋量表(MAAS)、妊娠结局问卷(POQ)和流行病学研究中心抑郁量表(CESD)等。然而,开发和验证有效的量表以筛查孕妇复杂经历的必要性在文献中仍被广泛讨论。本研究的目的是构建并验证模糊模型,这些模型分别代表导致对妊娠结局、孕产妇对未出生胎儿的产前依恋以及抑郁症状产生更高焦虑水平的必要和充分因果组合。为此,从135名孕妇中收集了MAAS、POQ和CESD量表的测量数据以及人口统计学数据,其中包括自然受孕(NC)和辅助生殖(ART)分娩的案例。采用模糊集定性比较分析(FSQCA)生成因果组合集,并根据其一致性和覆盖度进行验证。然后利用这些组合来开发和验证模糊认知图(FCM),以模拟孕妇状态的波动。据我们所知,本研究是首次利用FSQCA或FCM来解决这一问题。结果表明,POQ是导致MAAS水平较高的NC和ART之间的区分因素。发现婚姻状况(MS)和状态焦虑会导致NC妊娠的POQ水平较高。对于ART妊娠,需要考虑的因素包括收入、孕周、MS、MAAS强度和特质焦虑。发现POQ会导致ART妊娠的CESD水平较高,而NC、MS和状态焦虑也是前提条件。总体而言,本研究表明,所提出的基于FSQCA和FCM的方法使产科医生和助产士能够在个体病例评估中融入他们的专业知识,同时也为创建支持医疗保健政策决策的智能系统提供了一个框架。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bbd5/11995386/38368888b858/mi-05-03-00229-g04.jpg

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