A multivariate approach to investigate the associations of electrophysiological indices with schizophrenia clinical and functional outcome

Author:

Giuliani Luigi,Koutsouleris Nikolaos,Giordano Giulia Maria,Koenig Thomas,Mucci ArmidaORCID,Perrottelli AndreaORCID,Reuf AnneORCID,Altamura Mario,Bellomo AntonelloORCID,Brugnoli Roberto,Corrivetti Giulio,Di Lorenzo GiorgioORCID,Girardi Paolo,Monteleone Palmiero,Niolu Cinzia,Galderisi SilvanaORCID,Maj Mario,

Abstract

Abstract Background Different electrophysiological (EEG) indices have been investigated as possible biomarkers of schizophrenia. However, these indices have a very limited use in clinical practice, as their associations with clinical and functional outcomes remain unclear. This study aimed to investigate the associations of multiple EEG markers with clinical variables and functional outcomes in subjects with schizophrenia (SCZs). Methods Resting-state EEGs (frequency bands and microstates) and auditory event-related potentials (MMN-P3a and N100-P3b) were recorded in 113 SCZs and 57 healthy controls (HCs) at baseline. Illness- and functioning-related variables were assessed both at baseline and at 4-year follow-up in 61 SCZs. We generated a machine-learning classifier for each EEG parameter (frequency bands, microstates, N100-P300 task, and MMN-P3a task) to identify potential markers discriminating SCZs from HCs, and a global classifier. Associations of the classifiers’ decision scores with illness- and functioning-related variables at baseline and follow-up were then investigated. Results The global classifier discriminated SCZs from HCs with an accuracy of 75.4% and its decision scores significantly correlated with negative symptoms, depression, neurocognition, and real-life functioning at 4-year follow-up. Conclusions These results suggest that a combination of multiple EEG alterations is associated with poor functional outcomes and its clinical and cognitive determinants in SCZs. These findings need replication, possibly looking at different illness stages in order to implement EEG as a possible tool for the prediction of poor functional outcome.

Publisher

Royal College of Psychiatrists

Subject

Psychiatry and Mental health

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