Tensor factorization approach for ERP-based assessment of schizotypy in a novel auditory oddball task on perceived family stress.
Ahmad ZandbaglehSattar MirzakuchakiMohammad Reza DaliriPreethi PremkumarLuis CarretiéSaeid SaneiPublished in: Journal of neural engineering (2022)
Objective . Schizotypy, a potential phenotype for schizophrenia, is a personality trait that depicts psychosis-like signs in the normal range of psychosis continuum. Family communication may affect the social functioning of people with schizotypy. Greater family stress, such as irritability, criticism and less praise, is perceived at a higher level of schizotypy. This study aims to determine the differences between people with high and low levels of schizotypy using electroencephalography (EEG) during criticism, praise and neutral comments. EEGs were recorded from 29 participants in the general community who varied from low schizotypy to high schizotypy (HS) during a novel emotional auditory oddball task. Approach . We consider the difference in event-related potential parameters, namely the amplitude and latency of P300 subcomponents (P3a and P3b), between pairs of target words (standard, positive, negative and neutral). A model based on tensor factorization is then proposed to detect these components from the EEG using the CANDECOMP/PARAFAC decomposition technique. Finally, we employ the mutual information estimation method to select influential features for classification. Main results. The highest classification accuracy, sensitivity, and specificity of 93.1%, 94.73%, and 90% are obtained via leave-one-out cross validation. Significance . This is the first attempt to investigate the identification of individuals with psychometrically-defined HS from brain responses that are specifically associated with perceiving family stress and schizotypy. By measuring these brain responses to social stress, we achieve the goal of improving the accuracy in detection of early episodes of psychosis.
Keyphrases
- resting state
- mental health
- functional connectivity
- working memory
- healthcare
- machine learning
- depressive symptoms
- social support
- physical activity
- bipolar disorder
- white matter
- heat stress
- multiple sclerosis
- social media
- genome wide
- human health
- cerebral ischemia
- brain injury
- dna methylation
- health information
- real time pcr