The Connectivity Fingerprints of Highly-Skilled and Disordered Reading Persist Across Cognitive Domains

The capacity to produce and understand written language is a uniquely human skill that exists on a continuum, and foundational to other facets of human cognition. Multivariate classifiers based on support vector machines (SVM) have provided much insight into the networks underlying reading skill bey...

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Main Author: Chris McNorgan
Format: Article
Language:English
Published: Frontiers Media S.A. 2021-02-01
Series:Frontiers in Computational Neuroscience
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fncom.2021.590093/full
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spelling doaj-8462a2af8a0546729b710209d171db512021-02-12T04:46:14ZengFrontiers Media S.A.Frontiers in Computational Neuroscience1662-51882021-02-011510.3389/fncom.2021.590093590093The Connectivity Fingerprints of Highly-Skilled and Disordered Reading Persist Across Cognitive DomainsChris McNorganThe capacity to produce and understand written language is a uniquely human skill that exists on a continuum, and foundational to other facets of human cognition. Multivariate classifiers based on support vector machines (SVM) have provided much insight into the networks underlying reading skill beyond what traditional univariate methods can tell us. Shallow models like SVM require large amounts of data, and this problem is compounded when functional connections, which increase exponentially with network size, are predictors of interest. Data reduction using independent component analyses (ICA) mitigates this problem, but conventionally assumes linear relationships. Multilayer feedforward networks, in contrast, readily find optimal low-dimensional encodings of complex patterns that include complex nonlinear or conditional relationships. Samples of poor and highly-skilled young readers were selected from two open access data sets using rhyming and mental multiplication tasks, respectively. Functional connectivity was computed for the rhyming task within a functionally-defined reading network and used to train multilayer feedforward classifier models to simultaneously associate functional connectivity patterns with lexicality (word vs. pseudoword) and reading skill (poor vs. highly-skilled). Classifiers identified validation set lexicality with significantly better than chance accuracy, and reading skill with near-ceiling accuracy. Critically, a series of replications used pre-trained rhyming-task models to classify reading skill from mental multiplication task participants' connectivity with near-ceiling accuracy. The novel deep learning approach presented here provides the clearest demonstration to date that reading-skill dependent functional connectivity within the reading network influences brain processing dynamics across cognitive domains.https://www.frontiersin.org/articles/10.3389/fncom.2021.590093/fullfunctional connectivitydyslexiacognitionmachine learningmath cognitionlearning disabilities
collection DOAJ
language English
format Article
sources DOAJ
author Chris McNorgan
spellingShingle Chris McNorgan
The Connectivity Fingerprints of Highly-Skilled and Disordered Reading Persist Across Cognitive Domains
Frontiers in Computational Neuroscience
functional connectivity
dyslexia
cognition
machine learning
math cognition
learning disabilities
author_facet Chris McNorgan
author_sort Chris McNorgan
title The Connectivity Fingerprints of Highly-Skilled and Disordered Reading Persist Across Cognitive Domains
title_short The Connectivity Fingerprints of Highly-Skilled and Disordered Reading Persist Across Cognitive Domains
title_full The Connectivity Fingerprints of Highly-Skilled and Disordered Reading Persist Across Cognitive Domains
title_fullStr The Connectivity Fingerprints of Highly-Skilled and Disordered Reading Persist Across Cognitive Domains
title_full_unstemmed The Connectivity Fingerprints of Highly-Skilled and Disordered Reading Persist Across Cognitive Domains
title_sort connectivity fingerprints of highly-skilled and disordered reading persist across cognitive domains
publisher Frontiers Media S.A.
series Frontiers in Computational Neuroscience
issn 1662-5188
publishDate 2021-02-01
description The capacity to produce and understand written language is a uniquely human skill that exists on a continuum, and foundational to other facets of human cognition. Multivariate classifiers based on support vector machines (SVM) have provided much insight into the networks underlying reading skill beyond what traditional univariate methods can tell us. Shallow models like SVM require large amounts of data, and this problem is compounded when functional connections, which increase exponentially with network size, are predictors of interest. Data reduction using independent component analyses (ICA) mitigates this problem, but conventionally assumes linear relationships. Multilayer feedforward networks, in contrast, readily find optimal low-dimensional encodings of complex patterns that include complex nonlinear or conditional relationships. Samples of poor and highly-skilled young readers were selected from two open access data sets using rhyming and mental multiplication tasks, respectively. Functional connectivity was computed for the rhyming task within a functionally-defined reading network and used to train multilayer feedforward classifier models to simultaneously associate functional connectivity patterns with lexicality (word vs. pseudoword) and reading skill (poor vs. highly-skilled). Classifiers identified validation set lexicality with significantly better than chance accuracy, and reading skill with near-ceiling accuracy. Critically, a series of replications used pre-trained rhyming-task models to classify reading skill from mental multiplication task participants' connectivity with near-ceiling accuracy. The novel deep learning approach presented here provides the clearest demonstration to date that reading-skill dependent functional connectivity within the reading network influences brain processing dynamics across cognitive domains.
topic functional connectivity
dyslexia
cognition
machine learning
math cognition
learning disabilities
url https://www.frontiersin.org/articles/10.3389/fncom.2021.590093/full
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