Braegen Monitor: Virtual Diagnosis And Home Training For Children With Cognitive Disabilities

Year : 2025 | Volume : 12 | Issue : 02 | Page : 44 54
    By

    M Banupriya,

  • A D Vinolin,

  • A N Shree Varsha,

  • R Kali Muthu,

  • M Bala Karthik,

  1. Assistant Professor, Department of Artificial Intelligence and Data Science Hindusthan Institute of Technology, Coimbatore, India, Coimbatore, India
  2. Student, Department of Artificial Intelligence and Data Science Hindusthan Institute of Technology, Coimbatore, India, Coimbatore, India
  3. Student, Department of Artificial Intelligence and Data Science Hindusthan Institute of Technology, Coimbatore, India, Coimbatore, India
  4. Student, Department of Artificial Intelligence and Data Science Hindusthan Institute of Technology, Coimbatore, India, Coimbatore, India
  5. Student, Department of Artificial Intelligence and Data Science Hindusthan Institute of Technology, Coimbatore, India, Coimbatore, India

Abstract

Braegen Monitor is an innovative software solution designed to support children with cognitive disabilities by providing personalized home-training and engagement activities. The platform enables caretakers to submit EEG reports through the app, which are then virtually analyzed by a child psychiatrist. This ensures timely and professional diagnosis without the stress of frequent hospital visits. A unique feature of Braegen Monitor is the psychiatrist’s personal interview with the caretaker or parent to assess their understanding of the child’s disorder. This step helps identify gaps in knowledge and provides tailored guidance on special care strategies, ensuring that caregivers are well-equipped to support their child’s developmental needs. The platform operates on a pay-per-appointment model, ensuring psychiatrists are compensated for their expertise, thus encouraging medical professionals to contribute to the cause. Additionally, Braegen Monitor offers video-based resources such as meditation sessions and specialized activities tailored to each child’s mental health requirements. Future enhancements include integrating AI-powered bots for improved accessibility, making professional support more readily available. With its focus on convenience, expert guidance, and personalized care, Braegen Monitor aims to revolutionize cognitive health support for children, providing ease for caregivers and fostering a nurturing environment for development.

Keywords: Cognitive disabilities, Child psychiatry, EEG diagnosis, Home-based therapy, Personalized mental health care, Special care guidance, AI in healthcare, Telepsychiatry, Parental counseling, Assistive technology.

[This article belongs to Research & Reviews: A Journal of Bioinformatics ]

How to cite this article:
M Banupriya, A D Vinolin, A N Shree Varsha, R Kali Muthu, M Bala Karthik. Braegen Monitor: Virtual Diagnosis And Home Training For Children With Cognitive Disabilities. Research & Reviews: A Journal of Bioinformatics. 2025; 12(02):44-54.
How to cite this URL:
M Banupriya, A D Vinolin, A N Shree Varsha, R Kali Muthu, M Bala Karthik. Braegen Monitor: Virtual Diagnosis And Home Training For Children With Cognitive Disabilities. Research & Reviews: A Journal of Bioinformatics. 2025; 12(02):44-54. Available from: https://journals.stmjournals.com/rrjobi/article=2025/view=211853


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Regular Issue Subscription Review Article
Volume 12
Issue 02
Received 26/03/2025
Accepted 09/04/2025
Published 02/06/2025
Publication Time 68 Days


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