CompSci & AI Advances

From the Journal:

CompSci & AI Advances

Volume 1, Issue 1 (March 2024)


Intelligent HealthTech: Building an Adaptive Learning Ecosystem for Optimized Patient Care

Uma Maheshwari R., Paulchamy B., Kalpana K., Ibrahim M. Alwayle, Raziullah Khan

Uma Maheshwari R. 1

Paulchamy B. 1,*

Kalpana K. 1,*

Ibrahim M. Alwayle 2

Raziullah Khan 3

1 Hindusthan Educational Institutions, Avinashi Road, behind Nava India, Coimbatore, Tamil Nadu 641028, India

2 Department of Computer Science, College of Science and Arts, Sharurah 68341, Najran University, Saudi Arabia

3 Technical Architect at HCL, 5167 Vinings Bend, Dublin, Ohio 43016, USA

* Author to whom correspondence should be addressed:

luckshanthpaul@gmail.com (Paulchamy)

kalps.tamil@gmail.com (Kalpana)

ABSTRACT

The rapid evolution of healthcare technologies necessitates the development of innovative systems that optimize patient care while addressing the complexities of modern healthcare. This paper introduces Intelligent HealthTech, a cutting-edge adaptive learning ecosystem aimed at revolutionizing patient care through the integration of AI-driven diagnostics, personalized treatment planning, and continuous learning mechanisms. By harnessing the power of machine learning algorithms, big data analytics, and real-time patient monitoring, the system provides tailored healthcare solutions that adapt dynamically to individual patient needs. Core components include predictive analytics for early disease detection, adaptive treatment protocols based on real-time patient responses, and feedback loops to refine predictive and diagnostic models continuously. This patient-centered ecosystem not only enhances clinical decision-making but also minimizes delays in treatment, improves resource allocation, and bolsters overall healthcare efficiency. Experimental validation demonstrates significant advancements in patient outcomes, system adaptability, and healthcare resource utilization. Furthermore, Intelligent HealthTech emphasizes modular design, enabling seamless integration with existing infrastructures while ensuring scalability and robust data security. By creating a dynamic interplay between technology and healthcare processes, the proposed system establishes a transformative framework that addresses the increasing demand for personalized and efficient healthcare. The findings position Intelligent HealthTech as a pivotal solution in modern healthcare systems, paving the way for more proactive, data-driven, and patient-focused care.

Significance of the Study:

This research addresses the critical need for personalized and efficient healthcare in an evolving medical landscape. Intelligent HealthTech enhances patient care through real-time adaptation and predictive analytics, empowering clinicians with data-driven insights for timely interventions. Its modular and secure architecture ensures broad scalability and compliance with healthcare standards, positioning it as a transformative solution for diverse applications. This framework paves the way for advanced AI applications in healthcare, establishing a new benchmark for proactive, patient-centered care.

Summary of the Study:

This study introduces Intelligent HealthTech, an adaptive learning ecosystem designed to revolutionize healthcare by integrating AI-driven diagnostics, personalized treatment planning, and real-time monitoring. By leveraging machine learning, big data analytics, and continuous feedback loops, the system dynamically tailors care to individual patient needs. Experimental results highlight significant improvements in patient outcomes, resource utilization, and clinical decision-making efficiency. The modular, secure design ensures compatibility with existing infrastructures, making Intelligent HealthTech a scalable solution for modern, data-driven healthcare systems.