Advanced AI Paradigms in Mental Health: An In-depth Exploration of Detection, Therapy, and Computational Efficacy

Authors

  • Nahid Neoaz Wilmington University, USA Author
  • Mohammad Hasan Amin Kettering University, Michigan Author

DOI:

https://doi.org/10.70445/giaic.1.1.2025.40-46

Keywords:

Artificial Intelligence, Mental Health, Depression Detection, EEG-based Diagnostics, VPSYC System, Facial Recognition, Computational Algorithms, Cat Swarm Optimization

Abstract

This study reveals how AI changes mental health diagnosis and therapy through advanced systems that find and help people with depression. We explore how the VPSYC platform uses AI to assess mental health conditions and then show an EEG-based solution that can detect depression and anxiety. The research looks at how well facial recognition can perform while considering its expenses and how cat swarm optimization helps resolve difficult computing issues like graph coloring. Our analysis studies the algorithms' behavior and effectiveness as we identify their value in developing mental health tools. This research method helps advance discussions about using AI in mental health services by showing what AI can do today and what it might achieve in the future.

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Published

2025-01-25