Design of an IoT-based smart healthcare eco system for precise ageing illness detection and prognosis

Kamlesh Mani, Kamlesh Kumar Singh, Ratnesh Litoriya
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Abstract

The article aims to provide a comprehensive review of the current state of smart healthcare systems, focusing on important topics such as the use of wearables and smartphones for health monitoring, the application of AI and machine learning for illness detection, and the integration of assistive frameworks like social robots for ambient-supported living. One of the key aspects discussed in the study is the software integration architectures required for the development of smart healthcare systems and the seamless integration of data. Analytics and various AI technologies are utilized in conjunction to create these systems. The article examines the different approaches employed in the development of these systems, highlighting the contributions of each framework, the overall functioning methodology, performance outputs, and comparative advantages and limitations. Moreover, the article also addresses current research challenges and identifies prospective future directions. It emphasizes the shortcomings of existing smart healthcare systems and proposes strategies for introducing innovative frameworks to overcome these limitations. The analysis aims to provide detailed insights into recent advancements in smart healthcare systems, enabling specialists to contribute to the field with their expertise. Overall, the article serves as a valuable resource for understanding the current landscape of smart healthcare systems, shedding light on recent breakthroughs, and encouraging further research and development in this rapidly evolving field.
基于物联网的智能医疗生态系统设计,实现老年疾病的精准检测与预测
本文旨在全面回顾智能医疗系统的现状,重点关注可穿戴设备和智能手机的健康监测、人工智能和机器学习在疾病检测中的应用以及社交机器人等辅助框架的集成等重要主题。研究中讨论的关键方面之一是开发智能医疗保健系统所需的软件集成架构和数据的无缝集成。分析和各种人工智能技术被结合使用来创建这些系统。本文考察了这些系统开发中采用的不同方法,强调了每个框架的贡献、整体功能方法、性能输出以及比较优势和局限性。此外,本文还讨论了当前的研究挑战,并确定了未来的发展方向。它强调了现有智能医疗保健系统的缺点,并提出了引入创新框架以克服这些限制的策略。该分析旨在提供有关智能医疗保健系统最新进展的详细见解,使专家能够利用他们的专业知识为该领域做出贡献。总的来说,这篇文章是了解智能医疗保健系统现状的宝贵资源,揭示了最近的突破,并鼓励在这个快速发展的领域进一步研究和开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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