基于深度学习的患者监测的基于云的分散式智能医疗

Sripriya Arunachalam, Shanthi H J, G. Sivagurunathan, Shyamali Das, D. Anand, Thanga Raj M
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摘要

在过去的几年中,在线上可用于即时共享、持久存档和查询的数字信息数量急剧增加。它扩大了使用数字数据的可能性,这些数据既分散又特别,以便快速做出决策。目前,电子医疗是电子健康档案和远程医疗通讯最受欢迎的领域之一。近年来,电子健康档案(EHR)的安全已成为一个备受关注的话题,以往的工作采用了各种方法,以合理的价格更好地确保电子健康档案的保密性和安全性。目前的研究存在许多严重的问题,包括计算复杂性、处理时间增加、信息泄露、易受各种攻击、可扩展性困难等。临床数据分析存在一些困难,但疾病预测是其中最重要的困难之一。该研究旨在将深度学习(DL)分类算法应用于疾病预测。最近出现了一种利用云计算、雾计算和IoMT进行疾病诊断的技术。在雾层中进行快速深度学习分类分析。与备选模型Bi-CNN相比,医疗保健模型在Bi-LSTM模拟中的效率显著提高:准确率为97.31%,召回率为97.58%,精度为96.90%,F1-measure为94.90%,特异性为97.25%,G-mean为94.80%。
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Cloud-based Decentralized Smart Healthcare for Patient Monitoring on Deep Learning
Over the past few years, there has been a meteoric surge in the quantity of digital information available online for instantaneous sharing, persistent archiving, and inquiring. It has expanded the possibilities for using digital data that is both decentralised and ad hoc in order to make decisions quickly. At present, e-Healthcare is among the most sought-after sectors for EHR and telemedicine communication. Securing electronic health records (EHR) has become a topic of intense interest in recent years, with previous works employing a wide range of methods to better ensure the confidentiality and security of EHR at a reasonable price. There are a number of serious problems with the current research, including computational complexity, increased process time, information leakage, vulnerability to various assaults, scalability difficulty, etc. Clinical data analysis presents several difficulties, but disease prediction is one of the most significant ones. The suggested study aims to apply deep learning (DL) classification algorithms for disease prediction. A technique that utilises cloud computing, fog computing, and IoMT more recently has been presented for diagnosing illness. Fast DL classification analysis is performed in the fog layer. When compared to the alternative proposed model Bi-CNN, the healthcare model's efficiency in the Bi-LSTM simulation yields significantly better results: 97.31% of accuracy, 97.58% of recall, 96.90% of precision, 94.90% of F1-measure, 97.25% of specificity, and 94.80% of G-mean.
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