NeuroWell: AI-Powered Wearable & Therapy Hub for Mental Health

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This is an unedited manuscript accepted for publication and provided as an Article in Press for early access at the author’s request. The article will undergo copyediting, typesetting, and galley proof review before final publication. Please be aware that errors may be identified during production that could affect the content. All legal disclaimers of the journal apply.

Year : 2026 | Volume : 3 | 01 | Page :
    By

    Dr. Pooja Sahni,

  • Ms. Rachna Manchanda,

  • Dr. Rinkesh Mittal,

  • Ms. Nidhi Chahal,

  • Annaya Singh,

  • Aryan Goyal,

  • Aryan Rathee,

  1. Professor, Department of Electronics and Communication Engineering, Punjab, India
  2. Assistant Professor, Department of Electronics and Communication Engineering, Punjab, India
  3. Professor, Department of Electronics and Communication Engineering, Punjab, India
  4. Assistant Professor, Department of Electronics and Communication Engineering, Punjab, India
  5. Student, Department of Electronics and Communication Engineering, Punjab, India
  6. Student, Department of Electronics and Communication Engineering, Punjab, India
  7. Student, Department of Electronics and Communication Engineering, Punjab, India

Abstract

Mental health problems such as anxiety, depression, PTSD and sleep disorders affect millions of people worldwide and are a major burden on health systems, with traditional treatment methods usually leading to suboptimal outcomes due to a lack of real-time monitoring, individual intervention or availability. NeuroWell is a cutting-edge artificial intelligence platform combining bio-sensing, neurostimulation and digital therapy into a single mental health support system, using state-of-the-art technologies like EEG, HRV and AI to continuously assess emotions and propose adaptive therapies through virtual reality therapy and haptic feedback. NeuroWell aims to improve patient outcomes, reduce healthcare costs and democratize mental health services by providing remote patient monitoring and individualized treatment. NeuroWell seeks to enhance patient outcomes, lessen healthcare costs, and democratize mental health services by providing remote patient monitoring and individualized care. The growing need for creative mental health solutions around the world supports the viability of this study, which is a significant and timely development in digital mental healthcare.

Keywords: AI, bio-sensing, EEG, GSR, HRV, mental health, neurostimulation, VR therapy

How to cite this article:
Dr. Pooja Sahni, Ms. Rachna Manchanda, Dr. Rinkesh Mittal, Ms. Nidhi Chahal, Annaya Singh, Aryan Goyal, Aryan Rathee. NeuroWell: AI-Powered Wearable & Therapy Hub for Mental Health. International Journal of Brain Sciences. 2026; 03(01):-.
How to cite this URL:
Dr. Pooja Sahni, Ms. Rachna Manchanda, Dr. Rinkesh Mittal, Ms. Nidhi Chahal, Annaya Singh, Aryan Goyal, Aryan Rathee. NeuroWell: AI-Powered Wearable & Therapy Hub for Mental Health. International Journal of Brain Sciences. 2026; 03(01):-. Available from: https://journals.stmjournals.com/ijbs/article=2026/view=237770


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Ahead of Print Subscription Original Research
Volume 03
01
Received 20/01/2026
Accepted 31/01/2026
Published 11/02/2026
Publication Time 22 Days


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