Multi‐parameter machine learning approach to the neuroanatomical basis of developmental dyslexia

Despite decades of research, the anatomical abnormalities associated with developmental dyslexia are still not fully described. Studies have focused on between‐group comparisons in which different neuroanatomical measures were generally explored in isolation, disregarding potential interactions betw...

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Published inHuman brain mapping Vol. 38; no. 2; pp. 900 - 908
Main Authors Płoński, Piotr, Gradkowski, Wojciech, Altarelli, Irene, Monzalvo, Karla, van Ermingen‐Marbach, Muna, Grande, Marion, Heim, Stefan, Marchewka, Artur, Bogorodzki, Piotr, Ramus, Franck, Jednoróg, Katarzyna
Format Journal Article
LanguageEnglish
Published United States John Wiley & Sons, Inc 01.02.2017
Wiley
John Wiley and Sons Inc
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ISSN1065-9471
1097-0193
1097-0193
DOI10.1002/hbm.23426

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Summary:Despite decades of research, the anatomical abnormalities associated with developmental dyslexia are still not fully described. Studies have focused on between‐group comparisons in which different neuroanatomical measures were generally explored in isolation, disregarding potential interactions between regions and measures. Here, for the first time a multivariate classification approach was used to investigate grey matter disruptions in children with dyslexia in a large (N = 236) multisite sample. A variety of cortical morphological features, including volumetric (volume, thickness and area) and geometric (folding index and mean curvature) measures were taken into account and generalizability of classification was assessed with both 10‐fold and leave‐one‐out cross validation (LOOCV) techniques. Classification into control vs. dyslexic subjects achieved above chance accuracy (AUC = 0.66 and ACC = 0.65 in the case of 10‐fold CV, and AUC = 0.65 and ACC = 0.64 using LOOCV) after principled feature selection. Features that discriminated between dyslexic and control children were exclusively situated in the left hemisphere including superior and middle temporal gyri, subparietal sulcus and prefrontal areas. They were related to geometric properties of the cortex, with generally higher mean curvature and a greater folding index characterizing the dyslexic group. Our results support the hypothesis that an atypical curvature pattern with extra folds in left hemispheric perisylvian regions characterizes dyslexia. Hum Brain Mapp 38:900–908, 2017. © 2016 Wiley Periodicals, Inc.
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ISSN:1065-9471
1097-0193
1097-0193
DOI:10.1002/hbm.23426