2020
DOI: 10.1001/jamanetworkopen.2020.17850
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Association of Childhood Violence Exposure With Adolescent Neural Network Density

Abstract: Key Points Question Are violence exposure and social deprivation associated with person-specific patterns (heterogeneity) of adolescent resting-state functional connectivity? Findings In this cohort study of 175 adolescents, childhood violence exposure, but not social deprivation, was associated with reduced adolescent resting-state density of the salience and default mode networks. A data-driven algorithm, blinded to childhood adversity, identified youth w… Show more

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Cited by 37 publications
(31 citation statements)
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“…The subgrouping using community detection provides the model with more known priors that refines and improves the search for individual connections ( Beltz & Gates, 2017 ). Because each subgroup is defined by similarities in features, each is best described by their shared network features (e.g., Goetschius et al, 2020 ). Using both individual and subgroup level network features increase reliability of estimates for both individual and subgroups in comparison to other network approaches ( Gates et al, 2017 , Gates and Molenaar, 2012 , Smith et al, 2011 ).…”
Section: Methodsmentioning
confidence: 99%
“…The subgrouping using community detection provides the model with more known priors that refines and improves the search for individual connections ( Beltz & Gates, 2017 ). Because each subgroup is defined by similarities in features, each is best described by their shared network features (e.g., Goetschius et al, 2020 ). Using both individual and subgroup level network features increase reliability of estimates for both individual and subgroups in comparison to other network approaches ( Gates et al, 2017 , Gates and Molenaar, 2012 , Smith et al, 2011 ).…”
Section: Methodsmentioning
confidence: 99%
“…Indeed, a number of recent empirical studies designed specifically to evaluate propositions of dimensional models yield evidence consistent with these ideas. This includes work supporting the predicted distinctions between threat and deprivation in their associations with a range of developmental outcomes, such as amygdala reactivity to threat, aversive learning, cognitive control, and even pubertal timing (Goetschius et al, 2020;Hein et al, 2020;Lambert, King, Monahan, & McLaughlin, 2017;Machlin, Miller, Snyder, McLaughlin, & Sheridan, 2019;Miller, Machlin, McLaughlin, & Sheridan, 2020;Miller et al, 2018;Peckins et al, 2020;Rosen, Meltzoff, Sheridan, & McLaughlin, 2019;Sheridan, Peverill, & McLaughlin, 2017;Sheridan et al, 2020;Sumner, Colich, Uddin, Armstrong, & McLaughlin, 2019;Sun, Fang, Wan, Su, & Tao, 2020;Wolf & Suntheimer, 2019). Perhaps the strongest evidence comes from systematic reviews and meta-analyses that document clearly divergent associations of threat and deprivation with neural structure and function (McLaughlin, Weissman, & Bitran, 2019) and measures of biological aging, including pubertal timing and cellular aging (Colich, Rosen, Williams, & McLaughlin, 2020).…”
Section: Problem 3: Consistent Differences In the Downstream Consequences Of Different Dimensions Of Early Experience Have Been Observedmentioning
confidence: 98%
“…During model generation, GIMME identifies shared connectivity patterns while accounting for individual heterogeneity using a community detection algorithm (walktrap) (Gates & Molenaar, 2012), which simulations have proven to be a reliable method of detecting subgroups of network patterns (Gates et al, 2017;Pons & Latapy, 2005). Because each subgroup is defined by similarities in features, each is best described by their shared network features (e.g., Goetschius et al, 2020). Using both individual and subgroup level network features increase reliability of estimates for both individual and subgroups in comparison to other network approaches (Gates et al, 2017;Gates & Molenaar, 2012;Smith et al, 2011).…”
Section: Inventory Of Callous-unemotional Traits (Icu)mentioning
confidence: 99%