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Despite decades of brain MRI research demonstrating atypical neuroanatomical substrate in patients with autism spectrum disorder (ASD), it remains unclear whether and to what extent disorder-selective neuroanatomical abnormalities occur in this spectrum. This, and the fact that multiple brain disorders report a common neuroanatomical substrate, makes transference and the application of neuroimaging findings into the clinical setting an open challenge.
Objectives
To investigate the selective neuroanatomical alteration profile of the ASD brain, we employed a meta-analytic, data-driven, and reverse inference-based approach (i.e.; Bayes fACtor mOdeliNg).
Methods
Eligible voxel-based morphometry data were extracted by a standardized search on BrainMap and MEDLINE databases (849 published experiments, 131 brain disorders, 22747 clinical subjects, 16572 x-y-z coordinates). Two distinct datasets were generated: the ASD dataset, composed of ASD-related data; and the non-ASD dataset, composed of all other clinical conditions data. Starting from the two unthresholded activation likelihood estimation (ALE) maps, the calculus of the Bayes fACtor mOdeliNg was performed. This allowed us to obtain posterior probability distributions on the evidence of brain alteration specificity in ASD.
Results
We revealed both cortical and cerebellar areas of neuroanatomical alteration selectivity in ASD. Eight clusters showed a selectivity value ≥ 90%, namely the bilateral precuneus, the right inferior occipital gyrus, left lobule IX, left Crus II, right Crus I, and the right lobule VIIIA (Fig. 1).
Conclusions
The identification of this neuroanatomical pattern provides new insights into the complex pathophysiology of ASD, opening attractive prospects for future neuroimaging-based interventions.
Neuroimaging methods are of interest to those in search of non-traditional methods, and hopefully new insights, for the study of syntax. To the extent that activation in a “syntax area” of the brain can be used to discriminate among syntactic theories, we must have good confidence in the localization of syntax to begin with. Therefore what seem like separate interests – the linguist’s interest in using neuroimaging experiments to understand language, and the neuroscientist’s interest in spatial localization of language – are in fact inseparable. Section 27.2 introduces the reader to the various neuroimaging methods currently available and provides a crash course in the cortical neuroanatomy relevant to language. Section 27.3 reviews attempts to localize syntax in the brain through the use of neuroimaging methods. Section 27.4 discusses attempts to use neuroimaging data to adjudicate linguistic questions: the adequacy of syntactic theories, parsing models, and particular structural analyses.
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