JPRN-jRCT1030210514
Completed
N/A
Development and exploration of an AI model to classify healthy subject and suspected schizophrenia patient based on free conversations with medical staff
Yuichiro Tsutsumi0 sites150 target enrollmentDecember 26, 2021
Overview
- Phase
- N/A
- Intervention
- Not specified
- Conditions
- Not specified
- Sponsor
- Yuichiro Tsutsumi
- Enrollment
- 150
- Status
- Completed
- Last Updated
- 2 years ago
Overview
Brief Summary
No summary available.
Investigators
Eligibility Criteria
Inclusion Criteria
- •1\) Schizophrenia
- •Between 18 and 65 years of age at the time of consent and diagnosed with schizophrenia according to the DSM\-5\.
- •2\) Healthy Subject
- •Between the ages of 18 and 65 years old at the time of consent.
- •1\)2\) in Common
- •\*Who speak Japanese as his/her mother tongue and able to have an interview (conversation with doctors and medical staff)
- •\*Who can obtain written consent from the person and also his / her substitute if the subject is under 20 years old.
Exclusion Criteria
- •\*Who has been judged by a doctor to have difficulty in having conversation due to deafness, dysarthria, aphasia, etc.
- •\*Who has been diagnosed of having a pyschiatric disorder such as depression
- •\*Who has been diagnosed of a dementia or judged to have cognitive dysfunction due to neurological diseases (epilepsy, stroke, etc.)
- •\*Who has been judged by a doctor not to be suitable for this trial by any reasons
Outcomes
Primary Outcomes
Not specified
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