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Title: EVALUATION OF MICRO-EXPRESSION RECOGNITION TECHNOLOGY FOR
DEPRESSION EARLY WARNING SYSTEM IN PSYCHOLOGICAL INTERVENTIONS
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Authors: Ziyan Xin
, Yaying Tang
and Yanxin Su, China |
Abstract: Depression is a major global public health concern, affecting approximately 280 million people
worldwide, according to the World Health Organization. This condition profoundly disrupts
individuals' work, education, and family life, with severe cases leading to suicide. Self-report
questionnaires, clinical interviews, and physiological assessments are the main ways that
depression is currently screened for and diagnosed. However, these methods have significant
flaws, such as being subjective and relying on people to report their feelings honestly. To enhance
the accuracy and efficiency of early depression detection, this study recruited 1,073 first-year high
school students from Wannian No. 1 High School in Wannian County, Shangrao City, Jiangxi
Province. By integrating micro-expression recognition technology with the CES-D questionnaire,
we developed an early warning system for depression based on micro-expression recognition,
aiming to provide a more objective and automated screening approach.
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