1370Introducing network analysis to measure early life adversity

Abstract Focus of Presentation Many studies have investigated associations between early life adversity (ELA) and outcomes across the life course. A defining characteristic of ELA is its complex nature, as many individual adverse experiences (e.g., parental mental health problems, financial difficul...

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Veröffentlicht in:International journal of epidemiology 2021-09, Vol.50 (Supplement_1)
Hauptverfasser: De Vries, Tjeerd Rudmer, Arends, Iris, Rod, Naja Hulvej, Oldehinkel, Albertine J., Bültmann, Ute
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container_issue Supplement_1
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container_title International journal of epidemiology
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creator De Vries, Tjeerd Rudmer
Arends, Iris
Rod, Naja Hulvej
Oldehinkel, Albertine J.
Bültmann, Ute
description Abstract Focus of Presentation Many studies have investigated associations between early life adversity (ELA) and outcomes across the life course. A defining characteristic of ELA is its complex nature, as many individual adverse experiences (e.g., parental mental health problems, financial difficulties) co-occur and interact over time. Commonly used methods for measuring ELA have not been able to elucidate pathways through which individual AEs are associated with each other during early life. We propose using network analysis to overcome this research gap. Findings Figure 1 shows the conditional associations between AEs in childhood and adolescence in an undirected network model, based on empirical data from the longitudinal TRAILS cohort. First, we found that the network model allows us to explain co-occurrences between AEs. For example: the co-occurrence of parental illness and financial difficulties in childhood is likely due to parental unemployment. Second, we identified which AEs are associated over time, e.g., familial conflicts in childhood and adolescence are strongly associated, the latter being associated with parental divorce in adolescence. 1370 Figure 1 Undirected network model for early life adversity Conclusions/Implications These findings add to the literature by providing insight into how individual AEs are conditionally associated, in distinct developmental periods and over time. The findings can be used in future research on pathways between AEs and guide the development of interventions. Key messages Undirected network models are a promising alternative approach to measuring ELA that can provide insight into pathways through which AEs co-occur and interact over time.
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Second, we identified which AEs are associated over time, e.g., familial conflicts in childhood and adolescence are strongly associated, the latter being associated with parental divorce in adolescence. 1370 Figure 1 Undirected network model for early life adversity Conclusions/Implications These findings add to the literature by providing insight into how individual AEs are conditionally associated, in distinct developmental periods and over time. The findings can be used in future research on pathways between AEs and guide the development of interventions. 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Second, we identified which AEs are associated over time, e.g., familial conflicts in childhood and adolescence are strongly associated, the latter being associated with parental divorce in adolescence. 1370 Figure 1 Undirected network model for early life adversity Conclusions/Implications These findings add to the literature by providing insight into how individual AEs are conditionally associated, in distinct developmental periods and over time. The findings can be used in future research on pathways between AEs and guide the development of interventions. 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title 1370Introducing network analysis to measure early life adversity
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