MMApr 3

Differential Mental Disorder Detection with Psychology-Inspired Multimodal Stimuli

arXiv:2604.0279845.1h-index: 2
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This work addresses the problem of overlapping symptoms in mental health diagnosis for clinicians, offering an incremental improvement through a novel dataset and method.

The paper tackles the challenge of differential diagnosis for mental disorders by introducing psychology-inspired multimodal stimuli to elicit diverse responses, resulting in a framework that outperforms existing baselines in detecting depression, anxiety, and schizophrenia.

Differential diagnosis of mental disorders remains a fundamental challenge in real-world clinical practice, where multiple conditions often exhibit overlapping symptoms. However, most existing public datasets are developed under single-disorder settings and rely on limited data elicitation paradigms, restricting their ability to capture disorder-specific patterns. In this work, we investigate differential mental disorder detection through psychology-inspired multimodal stimuli, designed to elicit diverse emotional, cognitive, and behavioral responses grounded in findings from experimental psychology. Based on this paradigm, we collect a large-scale multimodal mental health dataset (MMH) covering depression, anxiety, and schizophrenia, with all diagnostic labels clinically verified by licensed psychiatrists. To effectively model the heterogeneous signals induced by diverse elicitation tasks, we further propose a paradigm-aware multimodal framework that leverages inter-disorder differences prior knowledge as prompt-guided semantic descriptions to capture task-specific affective and interaction contexts for multimodal representation learning in the new differential mental disorder detection task. Extensive experiments show that our framework consistently outperforms existing baselines, underscoring the value of psychology-inspired stimulus design for differential mental disorder detection.

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