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      Multivariate Connectome-Based Symptom Mapping in Post-Stroke Patients: Networks Supporting Language and Speech

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          Abstract

          Language processing relies on a widespread network of brain regions. Univariate post-stroke lesion-behavior mapping is a particularly potent method to study brain–language relationships. However, it is a concern that this method may overlook structural disconnections to seemingly spared regions and may fail to adjudicate between regions that subserve different processes but share the same vascular perfusion bed. For these reasons, more refined structural brain mapping techniques may improve the accuracy of detecting brain networks supporting language. In this study, we applied a predictive multivariate framework to investigate the relationship between language deficits in human participants with chronic aphasia and the topological distribution of structural brain damage, defined as post-stroke necrosis or cortical disconnection. We analyzed lesion maps as well as structural connectome measures of whole-brain neural network integrity to predict clinically applicable language scores from the Western Aphasia Battery (WAB). Out-of-sample prediction accuracy was comparable for both types of analyses, which revealed spatially distinct, albeit overlapping, networks of cortical regions implicated in specific aspects of speech functioning. Importantly, all WAB scores could be predicted at better-than-chance level from the connections between gray-matter regions spared by the lesion. Connectome-based analysis highlighted the role of connectivity of the temporoparietal junction as a multimodal area crucial for language tasks. Our results support that connectome-based approaches are an important complement to necrotic lesion-based approaches and should be used in combination with lesion mapping to fully elucidate whether structurally damaged or structurally disconnected regions relate to aphasic impairment and its recovery.

          SIGNIFICANCE STATEMENT We present a novel multivariate approach of predicting post-stroke impairment of speech and language from the integrity of the connectome. We compare it with multivariate prediction of speech and language scores from lesion maps, using cross-validation framework and a large ( n = 90) database of behavioral and neuroimaging data from individuals with post-stroke aphasia. Connectome-based analysis was similar to lesion-based analysis in terms of predictive accuracy and provided additional details about the importance of specific connections (in particular, between parietal and posterior temporal areas) for preserving speech functions. Our results suggest that multivariate predictive analysis of the connectome is a useful complement to multivariate lesion analysis, being less dependent on the spatial constraints imposed by underlying vasculature.

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          Author and article information

          Journal
          J Neurosci
          J. Neurosci
          jneuro
          jneurosci
          J. Neurosci
          The Journal of Neuroscience
          Society for Neuroscience
          0270-6474
          1529-2401
          22 June 2016
          22 December 2016
          : 36
          : 25
          : 6668-6679
          Affiliations
          [1] 1Department of Neurology, Medical University of South Carolina, Charleston, South Carolina 29425, and
          [2] 2Departments of Communication Sciences and Disorders and
          [3] 3Psychology, University of South Carolina, Columbia, South Carolina 29208
          Author notes
          Correspondence should be addressed to Grigori Yourganov, Department of Neurology, Medical University of South Carolina, 96 Jonathan Lucas Street, CSB 301, Charleston, SC 29425. yourgano@ 123456musc.edu

          Author contributions: J.F., C.R., and L.B. designed research; G.Y. and J.F. performed research; G.Y., C.R., E.G., and L.B. contributed unpublished reagents/analytic tools; G.Y. analyzed data; G.Y., J.F., E.G., and L.B. wrote the paper.

          Article
          PMC4916245 PMC4916245 4916245 4396-15
          10.1523/JNEUROSCI.4396-15.2016
          4916245
          27335399
          99cf99cb-333d-49d1-b3ad-511729e86ecd
          Copyright © 2016 the authors 0270-6474/16/366668-12$15.00/0
          History
          : 8 December 2015
          : 2 May 2016
          : 5 May 2016
          Categories
          Articles
          Neurobiology of Disease

          support vector regression,stroke,multivariate analysis,connectome,brain lesions,aphasia

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