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由人工智能驱动的用于智能健康慢性病管理的边缘物联网架构的改进

Improvement of an Edge-IoT Architecture Driven by Artificial Intelligence for Smart-Health Chronic Disease Management.

作者信息

Cruz Castañeda William Alberto, Bertemes Filho Pedro

机构信息

Electrical Engineering Department, Santa Catarina State University, Joinville 89219-710, Brazil.

出版信息

Sensors (Basel). 2024 Dec 13;24(24):7965. doi: 10.3390/s24247965.

Abstract

One of the health challenges in the 21st century is to rethink approaches to non-communicable disease prevention. A solution is a smart city that implements technology to make health smarter, enables healthcare access, and contributes to all residents' overall well-being. Thus, this paper proposes an architecture to deliver smart health. The architecture is anchored in the Internet of Things and edge computing, and it is driven by artificial intelligence to establish three foundational layers in smart care. Experimental results in a case study on glucose prediction noninvasively show that the architecture senses and acquires data that capture relevant characteristics. The study also establishes a baseline of twelve regression algorithms to assess the non-invasive glucose prediction performance regarding the mean squared error, root mean squared error, and r-squared score, and the catboost regressor outperforms the other models with 218.91 and 782.30 in MSE, 14.80 and 27.97 in RMSE, and 0.81 and 0.31 in R2, respectively, on training and test sets. Future research works involve extending the performance of the algorithms with new datasets, creating and optimizing embedded AI models, deploying edge-IoT with embedded AI for wearable devices, implementing an autonomous AI cloud engine, and implementing federated learning to deliver scalable smart health in a smart city context.

摘要

21世纪的健康挑战之一是重新思考非传染性疾病的预防方法。一个解决方案是建设智慧城市,利用技术使健康更智能,确保医疗保健可及,并促进所有居民的整体福祉。因此,本文提出了一种提供智能健康的架构。该架构以物联网和边缘计算为基础,并由人工智能驱动,在智能护理中建立三个基础层。在无创血糖预测的案例研究中的实验结果表明,该架构能够感知并获取捕捉相关特征的数据。该研究还建立了十二种回归算法的基线,以评估关于均方误差、均方根误差和r平方得分的无创血糖预测性能,在训练集和测试集上,CatBoost回归器分别在均方误差方面以218.91和782.30、在均方根误差方面以14.80和27.97、在R2方面以0.81和0.31的成绩优于其他模型。未来的研究工作包括用新数据集扩展算法性能、创建和优化嵌入式人工智能模型、为可穿戴设备部署带有嵌入式人工智能的边缘物联网、实现自主人工智能云引擎以及实施联邦学习,以便在智慧城市环境中提供可扩展的智能健康。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/eab3/11679357/cb88dc4bf07a/sensors-24-07965-g001.jpg

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