Development of Intelligent Systems for Automated Healthcare Diagnostics and Patient Monitoring
Authors: Ravikanth Konda
DOI: https://doi.org/10.37082/IJIRMPS.v13.i2.232458
Short DOI: https://doi.org/g9hm9d
Country: USA
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Abstract: The convergence of intelligent systems in medicine is transforming diagnostics and patient monitoring and allowing real-time, data-informed clinical decision-making. The paper discusses the evolution of intelligent systems for computerized healthcare diagnosis and ongoing patient monitoring, centered on machine learning (ML), deep learning (DL), and Internet of Things (IoT) technologies. These are now widely implemented to identify anomalies, forecast disease development, and enable remote monitoring, particularly pertinent in post-pandemic healthcare environments. We offer a thorough examination of existing techniques, with an emphasis on developments in image recognition for diagnostics, wearable sensors for real-time health monitoring, and smart algorithms that can improve by themselves. The method section introduces a modular design with AI models trained on large-scale clinical data sets, cloud and edge computing, and real-time communication protocols. Results of testing through simulation and pilot projects in the field show order-of-magnitude improvements in accuracy, efficiency, and response time over conventional manual procedures. Data privacy, integration into current medical systems, and bias of AI models are identified problems, as are suggested directions for future work. This research adds to the existing body of evidence advocating for intelligent systems as essential facilitators of future healthcare infrastructure.
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Paper Id: 232458
Published On: 2025-03-07
Published In: Volume 13, Issue 2, March-April 2025