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Quantifying cross-sectional and longitudinal associations in mental health symptoms within families: network models applied to UK cohort data

Por: Bai · Y. · Rayner · A. · Abel · K. M. · Cartwright-Hatton · S. · Wan · M. W. · Pierce · M.
Objectives

Families offer promising targets for mental health interventions. Existing evidence investigates parent-child dyads or partners; we use an innovative approach to look at triads of parents and their children. This gives us more detail on mental health dimensions and individuals central to mental health transmission in families.

Design

Both cross-sectional and longitudinal network models

Setting

We identified triads of children (under age 16), mothers and fathers from the UK Household Longitudinal Study, between 2009 and 2022.

Participants and methods

Cross-sectional networks captured independent associations between family members’ mental health (n=8795 families). Longitudinal networks examined directional temporal associations among family members’ emotional symptoms (n=3757 families).

Primary outcome measures

Children’s and parents’ mental health dimensions were assessed using the Strengths and Difficulties Questionnaire and the General Health Questionnaire, respectively.

Results

Mothers’ mental health, particularly emotional symptoms, was linked to children’s mental health, while fathers’ symptoms showed no independent association. In the longitudinal network, maternal feelings of being overwhelmed were associated with children’s future worry, affecting symptoms of nervousness and unhappiness, which then fed back into worsening maternal emotional symptoms.

Conclusions

Investigating family mental health using network models highlights mothers’ central role. The longitudinal relationship between maternal feelings of being overwhelmed and children’s anxiety, and the subsequent feedback into maternal anxiety, indicates a promising target for intervention.

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