Literature DB >> 25845802

Multiscale Modeling of Gene-Behavior Associations in an Artificial Neural Network Model of Cognitive Development.

Michael S C Thomas1, Neil A Forrester1, Angelica Ronald1.   

Abstract

In the multidisciplinary field of developmental cognitive neuroscience, statistical associations between levels of description play an increasingly important role. One example of such associations is the observation of correlations between relatively common gene variants and individual differences in behavior. It is perhaps surprising that such associations can be detected despite the remoteness of these levels of description, and the fact that behavior is the outcome of an extended developmental process involving interaction of the whole organism with a variable environment. Given that they have been detected, how do such associations inform cognitive-level theories? To investigate this question, we employed a multiscale computational model of development, using a sample domain drawn from the field of language acquisition. The model comprised an artificial neural network model of past-tense acquisition trained using the backpropagation learning algorithm, extended to incorporate population modeling and genetic algorithms. It included five levels of description-four internal: genetic, network, neurocomputation, behavior; and one external: environment. Since the mechanistic assumptions of the model were known and its operation was relatively transparent, we could evaluate whether cross-level associations gave an accurate picture of causal processes. We established that associations could be detected between artificial genes and behavioral variation, even under polygenic assumptions of a many-to-one relationship between genes and neurocomputational parameters, and when an experience-dependent developmental process interceded between the action of genes and the emergence of behavior. We evaluated these associations with respect to their specificity (to different behaviors, to function vs. structure), to their developmental stability, and to their replicability, as well as considering issues of missing heritability and gene-environment interactions. We argue that gene-behavior associations can inform cognitive theory with respect to effect size, specificity, and timing. The model demonstrates a means by which researchers can undertake multiscale modeling with respect to cognition and develop highly specific and complex hypotheses across multiple levels of description.
Copyright © 2015 Cognitive Science Society, Inc.

Entities:  

Keywords:  Artificial neural networks; Development; Gene-behavior associations; Gene-environment interactions; Individual differences; Missing heritability; Multiscale models; Population modeling; Socioeconomic status

Mesh:

Year:  2015        PMID: 25845802     DOI: 10.1111/cogs.12230

Source DB:  PubMed          Journal:  Cogn Sci        ISSN: 0364-0213


  3 in total

1.  Computational modeling of interventions for developmental disorders.

Authors:  Michael S C Thomas; Anna Fedor; Rachael Davis; Juan Yang; Hala Alireza; Tony Charman; Jackie Masterson; Wendy Best
Journal:  Psychol Rev       Date:  2019-06-06       Impact factor: 8.934

2.  A neurocomputational model of developmental trajectories of gifted children under a polygenic model: When are gifted children held back by poor environments?

Authors:  Michael S C Thomas
Journal:  Intelligence       Date:  2018 Jul-Aug

3.  Do more intelligent brains retain heightened plasticity for longer in development? A computational investigation.

Authors:  Michael S C Thomas
Journal:  Dev Cogn Neurosci       Date:  2016-04-13       Impact factor: 6.464

  3 in total

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