R. Banupriya’s research while affiliated with K.S.R. College of Engineering and other places

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Publications (2)


Open Challenges: Research Opportunities in Healthcare Sectors Using Metaverse
  • Chapter

June 2024

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3 Reads

M. K. Nivodhini

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R. Banupriya

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S. Vadivel

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P. Vasuki

Challenges include technological integration with existing healthcare systems, ensuring user experience and adoption, safeguarding data security and privacy, addressing ethical dilemmas and biases, bridging the digital divide for accessibility, validating effectiveness through evidence-based practice, navigating regulatory compliance, promoting health equity, overcoming technical limitations, and ensuring long-term sustainability and cost-effectiveness. Research opportunities abound, spanning virtual clinics and telemedicine for remote consultations, immersive medical education and training environments, remote monitoring and tele-rehabilitation programs, leveraging the immersive nature of the Metaverse for health behavior change and wellness initiatives, innovative data visualization and analysis techniques, patient-centered engagement strategies, addressing ethical and regulatory considerations, designing inclusive virtual experiences, fostering collaborative research endeavors, and evaluating the long-term impact and scalability of Metaverse-enabled healthcare interventions.


Deep Learning Frameworks in the Healthcare Industry

February 2024

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7 Reads

Applications of deep learning extend to electronic health records (EHR) and predictive analytics, where theoretical models decipher patterns within vast datasets, enabling personalized healthcare strategies and disease progression predictions. Theoretical underpinnings of natural language processing (NLP) in healthcare are explored, emphasizing how algorithms theoretically improve clinical documentation, voice recognition, and patient interaction through virtual assistants. The theoretical exploration of issues such as data privacy, algorithmic bias, and interpretability highlights the complexities of responsibly deploying deep learning in medical decision-making. Personalized medicine, continuous monitoring, and improved disease prognosis emerge as theoretical directions, presenting collaborative opportunities between the technology industry, healthcare providers, and researchers. This abstract encapsulates the theoretical journey, illuminating the potential for enhanced diagnostics, treatment, and patient outcomes.