Design of a regression model to predict the presence of depression during pregnancy based on emotional intelligence, parental care, anxiety and stress

Sandro Giovanazzi, Aquiles Pérez
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Abstract

Background: Emotion regulation involves the modulation of emotional experiences to facilitate goal attainment. Conversely, emotional difficulties are a pattern of emotional experiences and expressions that interfere with goal-directed behavior. Objectives: Design a new model to predict the presence of depression in women during pregnancy. Methods: Non-experimental, cross-sectional, explanatory study of depression in women during pregnancy (logistic regression) considering the variables emotional intelligence, parental care, anxiety and stress. The sample consisted of 273 pregnant women-mothers between 14 and 38 weeks pregnant, aged between 18 and 38 years, for a mean of 25.67 years (SD= 5.8). Results: The regression model is valid and significant in predicting the probability of occurrence of depression, explaining 82.4% of the variance of DV (Presence of depression) by the variables age, clarity and repair of depression dimensions. emotional intelligence, the maternal and paternal overprotection dimensions, and paternal care of the parental style variables; stress, work and single marital status. There is a 95.2% probability of success in the depression result when each of the model variables is incorporated. Conclusions: The best predictors of depression in pregnancy would be, on the one hand, higher levels or values of the variables and indicators age, reparation, maternal overprotection, paternal care, and stress, and on the other hand, low scores in the dimensions and values of clarity variables, and paternal overprotection; added to whether the woman works and is single. This combination of variables would be the individual and contextual conditions that influence said appearance.
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基于情商、父母照顾、焦虑和压力的回归模型设计,预测怀孕期间抑郁的存在
背景:情绪调节包括调节情绪体验以促进目标的实现。相反,情感困难是一种干扰目标导向行为的情感体验和表达模式。目的:设计一个新的模型来预测怀孕期间女性抑郁的存在。方法:考虑情绪智力、父母照顾、焦虑和压力等变量,对妊娠期女性抑郁的非实验、横断面、解释研究(logistic回归)。样本包括273名孕妇,母亲怀孕14至38周,年龄在18至38岁之间,平均年龄25.67岁(SD= 5.8)。结果:回归模型对抑郁发生概率的预测是有效且显著的,通过年龄、抑郁维度的清晰度和修复等变量解释了82.4%的抑郁存在方差。情绪智力、母亲和父亲过度保护维度、父亲照顾的父母风格变量;压力,工作和单身婚姻状况。当每个模型变量都被纳入时,在萧条结果中有95.2%的成功概率。结论:年龄、修复、母亲过度保护、父亲关爱、压力等变量和指标的水平或值较高,而清晰度变量和父亲过度保护的维度和值较低,是妊娠期抑郁的最佳预测因子;加上这个女人是否有工作和单身。这种变量的组合就是影响外表的个人和环境条件。
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审稿时长
12 weeks
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