Objective metrics for language lateralization of fMRI examinations: a new model for the classification of hemispheric dominance in healthy subjects and epileptic patients (original) (raw)

2021, arXiv (Cornell University)

Purpose: to compare different methods to calculate Laterality Index (LI), a metric which allows to evaluate hemispheric brain language dominance in functional MRI examinations (fMRI). Methods: Two methods were considered for calculating LI: LIAVE and LIVOL, respectively based on the differences between measurements of average and volume of fMRI signal in brain hemispheres. Laterality curves were obtained calculating values of LIVOL with increasing thresholds of fMRI signal and fitted with sigmoidal functions. A model for dominant and co-dominant classification based on fit parameters has been developed. The two methods and the sigmoidal model were applied to two cohorts of 93 epileptic patients and 27 healthy subjects undergoing language fMRI examinations with association, understanding and fluency tasks. Results: Despite the different definitions, LIAVE and LIVOL resulted in equivalent classification of language lateralization. The agreement of neuroradiological clinical reports with classification of language lateralization resulting from the proposed methods ranged from 94.6% to 89.2% for LI metrics and up to 100% for the sigmoidal model. The fit parameters of the sigmoidal function defined empirical thresholds useful for classification between dominant and co-dominant, providing similar values for subjects and epileptic patients for fluency and association tasks. This result supports the idea of a unique model for language lateralization classification in epileptic patients and healthy subjects. Conclusions: Language lateralization in fMRI can be effectively assessed by objective metrics. A novel approach based on sigmoidal fit of laterality curves resulted in higher agreement with clinical reports providing further information about the strength of language lateralization.

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