In an effort to intervene before psychosis onset and prevent morbidity, a major recent focus in schizophrenia research has been the identification of young people during a putative prodromal period, so as to develop safe and effective interventions to modify disease course. Over the past decade, studies at Columbia and elsewhere have evaluated clinical high-risk (CHR) individuals across a wide range of cognitive processes to try to identify core deficits of schizophrenia evident before psychosis onset. Subthreshold thought disorder and impaired emotion recognition have emerged as profound deficits that predate, rather than follow, psychosis onset and thus may be indicators of schizophrenia liability, consistent with studies in other risk cohorts, including genetic high risk. Further, subthreshold thought disorder and emotion recognition deficit are significantly correlated, suggesting shared neural substrates in temporoparietal regions. This study aims to identify the neural mechanisms that underlie subthreshold thought disorder and emotion recognition deficit in 125 CHR individuals followed prospectively for psychosis outcome. CHR cohorts are enriched with early cases of schizophrenia, as 20-25% develop schizophrenia and related psychotic disorders within 1-2 years. CHR cohorts may be optimal for studying core characteristics of illness as they otherwise have low-level symptoms, less illness chronicity and minimum exposure to antipsychotics. 25 individuals with schizophrenia and 50 healthy volunteers are included for comparison. Subthreshold thought disorder and emotion recognition deficits will be studied across behavioral, physiological and circuit levels. For thought disorder, we will use automated speech analysis approaches developed in collaboration with IBM to identify constituent impairments in semantics and syntax, and a listening task that elicits reliable activation in language circuits. Our automated machine-learning approach to speech analysis, informed by artificial intelligence, derives the semantic meaning of words and phrases by drawing on a large corpus of text, similar to how humans assign meaning to what they read or hear. Emotion recognition will be measured using standard tasks, naturalistic tasks with dynamic face stimuli and parametric face morph tasks that discriminate between perception and appraisal; task-related BOLD activity will be used to identify relevant circuits. Associations with basic sensory impairment will be tested, including novel auditory mismatch negativity paradigms. Resting state functional connectivity (RSFC) methods will be used for circuit-level analysis of language production and emotion recognition across stages of illness, to determine unique and shared substrates of these constructs in early schizophrenia. If successful, this proposal will identify neural targets for remediation of cognitive impairments.

Public Health Relevance

Schizophrenia is an important public health concern. Core characteristics of schizophrenia that predate psychosis onset include subtle thought disorder and profound deficits in recognizing emotions in others' faces and voices. This proposal will evaluate mechanisms underlying these language and social cognitive deficits through the use of neuroimaging, electrophysiology and automated speech analysis, in order to develop new preventive strategies for schizophrenia.

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
Research Project (R01)
Project #
5R01MH107558-04
Application #
9481191
Study Section
Neural Basis of Psychopathology, Addictions and Sleep Disorders Study Section (NPAS)
Program Officer
Rumsey, Judith M
Project Start
2017-12-19
Project End
2021-04-30
Budget Start
2018-05-04
Budget End
2019-04-30
Support Year
4
Fiscal Year
2018
Total Cost
Indirect Cost
Name
Icahn School of Medicine at Mount Sinai
Department
Psychiatry
Type
Schools of Medicine
DUNS #
078861598
City
New York
State
NY
Country
United States
Zip Code
10029
Corcoran, Cheryl M; Carrillo, Facundo; Fernández-Slezak, Diego et al. (2018) Prediction of psychosis across protocols and risk cohorts using automated language analysis. World Psychiatry 17:67-75
Corcoran, Cheryl M; Stoops, Anastasia; Lee, Migyung et al. (2018) Developmental trajectory of mismatch negativity and visual event-related potentials in healthy controls: Implications for neurodevelopmental vs. neurodegenerative models of schizophrenia. Schizophr Res 191:101-108
Corcoran, Cheryl M; Cecchi, Guillermo A (2018) Computational Approaches to Behavior Analysis in Psychiatry. Neuropsychopharmacology 43:225-226
Lieberman, J A; Girgis, R R; Brucato, G et al. (2018) Hippocampal dysfunction in the pathophysiology of schizophrenia: a selective review and hypothesis for early detection and intervention. Mol Psychiatry 23:1764-1772
Crump, Francesca M; Arndt, Leigh; Grivel, Margaux et al. (2018) Attenuated first-rank symptoms and conversion to psychosis in a clinical high-risk cohort. Early Interv Psychiatry 12:1213-1216
Masucci, Michael D; Lister, Amanda; Corcoran, Cheryl M et al. (2018) Motor Dysfunction as a Risk Factor for Conversion to Psychosis Independent of Medication Use in a Psychosis-Risk Cohort. J Nerv Ment Dis 206:356-361
Corcoran, Cheryl (2017) Taking care of the carers: support for families of persons with early psychosis. World Psychiatry 16:267-268
Poe, Sarah-Lucy; Brucato, Gary; Bruno, Nicolina et al. (2017) Sleep disturbances in individuals at clinical high risk for psychosis. Psychiatry Res 249:240-243
Redman, Samantha L; Corcoran, Cheryl M; Kimhy, David et al. (2017) Effects of early trauma on psychosis development in clinical high-risk individuals and stability of trauma assessment across studies: a review. Arch Psychol (Chic) 1:
Vadhan, Nehal P; Corcoran, Cheryl M; Bedi, Gill et al. (2017) Acute effects of smoked marijuana in marijuana smokers at clinical high-risk for psychosis: A preliminary study. Psychiatry Res 257:372-374

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