Predictive modeling of neurobehavioral state and trait variation across development

A key goal of human neurodevelopmental research is to map neural and behavioral trajectories across both health and disease. A growing number of developmental consortia have begun to address this gap by providing open access to cross-sectional and longitudinal 'big data' repositories. Howe...

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Main Authors: Sara Sanchez-Alonso, Richard N. Aslin
Format: Article
Language:English
Published: Elsevier 2020-10-01
Series:Developmental Cognitive Neuroscience
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1878929320301055
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spelling doaj-5c64020e0ce049f5a9d50fe312a8a6b62020-11-25T03:44:28ZengElsevierDevelopmental Cognitive Neuroscience1878-92932020-10-0145100855Predictive modeling of neurobehavioral state and trait variation across developmentSara Sanchez-Alonso0Richard N. Aslin1Corresponding author.; Haskins Laboratories & Yale University, United StatesHaskins Laboratories & Yale University, United StatesA key goal of human neurodevelopmental research is to map neural and behavioral trajectories across both health and disease. A growing number of developmental consortia have begun to address this gap by providing open access to cross-sectional and longitudinal 'big data' repositories. However, it remains challenging to develop models that enable prediction of both within-subject and between-subject neurodevelopmental variation. Here, we present a conceptual and analytical perspective of two essential ingredients for mapping neurodevelopmental trajectories: state and trait components of variance. We focus on mapping variation across a range of neural and behavioral measurements and consider concurrent alterations of state and trait variation across development. We present a quantitative framework for combining both state- and trait-specific sources of neurobehavioral variation across development. Specifically, we argue that non-linear mixed growth models that leverage state and trait components of variance and consider environmental factors are necessary to comprehensively map brain-behavior relationships. We discuss this framework in the context of mapping language neurodevelopmental changes in early childhood, with an emphasis on measures of functional connectivity and their reliability for establishing robust neurobehavioral relationships. The ultimate goal is to statistically unravel developmental trajectories of neurobehavioral relationships that involve a combination of individual differences and age-related changes.http://www.sciencedirect.com/science/article/pii/S1878929320301055StateTraitNeurodevelopmentVarianceFunctional connectivityMixed growth model
collection DOAJ
language English
format Article
sources DOAJ
author Sara Sanchez-Alonso
Richard N. Aslin
spellingShingle Sara Sanchez-Alonso
Richard N. Aslin
Predictive modeling of neurobehavioral state and trait variation across development
Developmental Cognitive Neuroscience
State
Trait
Neurodevelopment
Variance
Functional connectivity
Mixed growth model
author_facet Sara Sanchez-Alonso
Richard N. Aslin
author_sort Sara Sanchez-Alonso
title Predictive modeling of neurobehavioral state and trait variation across development
title_short Predictive modeling of neurobehavioral state and trait variation across development
title_full Predictive modeling of neurobehavioral state and trait variation across development
title_fullStr Predictive modeling of neurobehavioral state and trait variation across development
title_full_unstemmed Predictive modeling of neurobehavioral state and trait variation across development
title_sort predictive modeling of neurobehavioral state and trait variation across development
publisher Elsevier
series Developmental Cognitive Neuroscience
issn 1878-9293
publishDate 2020-10-01
description A key goal of human neurodevelopmental research is to map neural and behavioral trajectories across both health and disease. A growing number of developmental consortia have begun to address this gap by providing open access to cross-sectional and longitudinal 'big data' repositories. However, it remains challenging to develop models that enable prediction of both within-subject and between-subject neurodevelopmental variation. Here, we present a conceptual and analytical perspective of two essential ingredients for mapping neurodevelopmental trajectories: state and trait components of variance. We focus on mapping variation across a range of neural and behavioral measurements and consider concurrent alterations of state and trait variation across development. We present a quantitative framework for combining both state- and trait-specific sources of neurobehavioral variation across development. Specifically, we argue that non-linear mixed growth models that leverage state and trait components of variance and consider environmental factors are necessary to comprehensively map brain-behavior relationships. We discuss this framework in the context of mapping language neurodevelopmental changes in early childhood, with an emphasis on measures of functional connectivity and their reliability for establishing robust neurobehavioral relationships. The ultimate goal is to statistically unravel developmental trajectories of neurobehavioral relationships that involve a combination of individual differences and age-related changes.
topic State
Trait
Neurodevelopment
Variance
Functional connectivity
Mixed growth model
url http://www.sciencedirect.com/science/article/pii/S1878929320301055
work_keys_str_mv AT sarasanchezalonso predictivemodelingofneurobehavioralstateandtraitvariationacrossdevelopment
AT richardnaslin predictivemodelingofneurobehavioralstateandtraitvariationacrossdevelopment
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