The Effects of a Chatbot-Based Interpretation Bias Modification on Early Adulthood Depression
J. Lee, D. Lee

TL;DR
A chatbot-based program reduced depression symptoms in early adults by modifying negative thinking patterns.
Contribution
This study demonstrates the effectiveness of chatbot-based interpretation bias modification in reducing depression.
Findings
The CBM-I group showed significant reduction in depression scores compared to the control group.
Resilience and attention control improved significantly in the CBM-I group.
Chatbot-based interventions may offer new mental health treatment possibilities.
Abstract
Depression, particularly in early adulthood, presents a significant mental health challenge with far-reaching implications. Innovative approaches to address and alleviate depressive symptoms are of paramount importance in this context. One such approach involves the utilization of technology, specifically chatbot-based programs, to target specific cognitive biases associated with depression. The central objective is to empirically examine whether this program can effectively influence depressive mood and negative cognition in individuals grappling with depressive symptoms. To ascertain the program’s efficacy, participants were divided into two groups: the CBM-I group (n=20), which underwent interpretation bias modification training, and the Mood Check group(n=20), which served as a control and engaged in a simple mood-checking exercise. A battery of psychological measures was…
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Taxonomy
TopicsGrit, Self-Efficacy, and Motivation · Mental Health via Writing · Digital Mental Health Interventions
