The Role of Artificial Intelligence in Mental Health: New Approaches for Diagnosis and Treatment

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Volume: 12 | Issue: 01 | Year 2026 | Subscription
International Journal of Software Computing and Testing
Received Date: 10/16/2025
Acceptance Date: 02/08/2026
Published On: 2026-05-01
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By: Ashutosh Kushwaha, Ansh Mishra, Ajit Kumar, and Sameer Awasthi.

1-3Student, Department of CSE-AIML, Bansal Institute of Engineering & Technology, Lucknow, Uttar Pradesh India
4HOD, Department of CSE-AIML, Bansal Institute of Engineering & Technology, Lucknow, Uttar Pradesh, India

Abstract

Artificial intelligence (AI) is increasingly reshaping mental health care by supporting early identification of mental health conditions, improving diagnostic accuracy, and enabling personalized intervention strategies for disorders such as depression, anxiety, and post-traumatic stress disorder. Advanced AI technologies, including machine learning algorithms and natural language processing techniques, allow analysis of large-scale behavioral, textual, and speech-based data to identify patterns related to emotional and cognitive health. These tools help clinicians make better decisions and plan treatments more effectively by leveraging data-based insights. AI-powered applications such as virtual therapy assistants, chatbots, and predictive monitoring systems provide continuous mental health support, particularly beneficial in areas where access to mental health professionals is limited.

Bringing AI into mental health care has the potential to expand access, support large numbers of patients, and track progress in real time. At the same time, serious issues such as protecting patient data, ensuring ethical use, reducing bias in algorithms, and maintaining transparency must be carefully managed to allow responsible and safe adoption. This study examines the applications, benefits, limitations, and future prospects of AI-driven mental health solutions. The findings suggest that AI has the potential to enhance the effectiveness and reach of mental health services when combined with human expertise, ensuring a balanced approach that maintains clinical accuracy while preserving empathy and patient-centered care.

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How to cite this article: Ashutosh Kushwaha, Ansh Mishra, Ajit Kumar, and Sameer Awasthi The Role of Artificial Intelligence in Mental Health: New Approaches for Diagnosis and Treatment. International Journal of Software Computing and Testing. 2026; 12(01): -p.

How to cite this URL: Ashutosh Kushwaha, Ansh Mishra, Ajit Kumar, and Sameer Awasthi, The Role of Artificial Intelligence in Mental Health: New Approaches for Diagnosis and Treatment. International Journal of Software Computing and Testing. 2026; 12(01): -p. Available from:https://journalspub.com/publication/ijsct/article=25345

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