2020
DOI: 10.1101/2020.02.11.944744
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Integration of Brain and Behavior Measures for Identification of Data-Driven Groups Cutting Across Children with ASD, ADHD, or OCD

Abstract: Autism spectrum disorder (ASD), obsessive-compulsive disorder (OCD) and attentiondeficit/hyperactivity disorder (ADHD) are clinically and biologically heterogeneous neurodevelopmental disorders (NDDs). The objective of the present study was to integrate brain imaging and behavioral measures to identify new brain-behavior subgroups cutting across these disorders. A subset of the data from the Province of Ontario Neurodevelopmental Disorder (POND) Network including participants with different NDDs (aged 6-16 yea… Show more

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Cited by 17 publications
(23 citation statements)
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“…SNF belongs to a broader family of techniques of multiview learning algorithms (e.g., multiple kernel learning, multi-table matrix factorization). We opted to use SNF because (1) it is an unsupervised learning technique, (2) it is explicitly optimized to control for differing dimensionalities amongst input data modalities [87], and (3) it has been shown to be effective at disentangling heterogeneity in psychiatric populations [35,76].…”
Section: Similarity Network Fusionmentioning
confidence: 99%
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“…SNF belongs to a broader family of techniques of multiview learning algorithms (e.g., multiple kernel learning, multi-table matrix factorization). We opted to use SNF because (1) it is an unsupervised learning technique, (2) it is explicitly optimized to control for differing dimensionalities amongst input data modalities [87], and (3) it has been shown to be effective at disentangling heterogeneity in psychiatric populations [35,76].…”
Section: Similarity Network Fusionmentioning
confidence: 99%
“…Despite extensive validation in the original article [87], its successful application to similar neuroimaging datasets [35,76], and the exhaustive parameter search employed in the current article, we wanted to assess the stability of SNF as it applies to the current dataset. We first compare clustering assignments generated from SNF when varying the dimensionality of cortical thickness data (see Data dimensionality variation).…”
Section: Stability Of Snfmentioning
confidence: 99%
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“…A principal challenge is to parsimoniously integrate these multi-view data in order to take full advantage of each source of information 15 . How to account for multiple sources of data to characterize heterogeneous patient samples is a topic of significant interest in computational medicine 16,17 , with important applications for oncology 18,19 , psychiatry [20][21][22] , and neurology 7 . Indeed, recent advances in techniques like multiple kernel learning have yielded promising results for integrating disparate data modalities in the context of supervised and unsupervised problems 23,24 .…”
Section: Introductionmentioning
confidence: 99%