用于心血管疾病实时远程诊断的物联网-雾-云集成框架

IF 3.4 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Informatics Pub Date : 2023-02-06 DOI:10.3390/informatics10010021
Abhilash Pati, Manoranjan Parhi, Mohammad M. Alnabhan, B. K. Pattanayak, A. Habboush, Mohammad K. Al Nawayseh
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引用次数: 6

摘要

最近,事实证明,很难立即远程诊断任何冠状动脉疾病,包括心脏病、糖尿病等。云计算基础设施的缺点,如过度延迟、带宽、能耗、安全和隐私问题,最近已通过物联网应用程序解决。在这项研究中,引入了一个物联网雾云集成系统,称为雾授权框架,用于使用ENsemble深度学习(FRIEND)对心脏病患者进行实时分析,该系统可以即时促进心脏病患者的远程诊断。所提出的系统是在长滩、克利夫兰、瑞士和匈牙利心脏病数据集的组合数据集上训练的。我们首先用八种基本的ML方法测试了模型,包括决策树、逻辑回归、随机森林、朴素贝叶斯、k近邻、支持向量机、AdaBoost和XGBoost方法,然后应用集成方法,包括袋分类器、加权平均和软投票和硬投票,以实现增强的结果和深度神经网络,采用集成方法的深度学习方法。使用16个性能和9个网络参数对这些模型进行了验证,以证明这项工作的合理性。实验的准确率、PPV、TPR、TNR和F1得分分别达到94.27%、97.59%、96.09%、75.44%和96.83%,当深度神经网络与套袋和硬投票分类器组合时,这些得分相对较高。根据所获得的实验结果,用户友好性和包含Fog计算原理、即时远程心脏病患者诊断、低延迟和低能耗等优点得到了证实。
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An IoT-Fog-Cloud Integrated Framework for Real-Time Remote Cardiovascular Disease Diagnosis
Recently, it has proven difficult to make an immediate remote diagnosis of any coronary illness, including heart disease, diabetes, etc. The drawbacks of cloud computing infrastructures, such as excessive latency, bandwidth, energy consumption, security, and privacy concerns, have lately been addressed by Fog computing with IoT applications. In this study, an IoT-Fog-Cloud integrated system, called a Fog-empowered framework for real-time analysis in heart patients using ENsemble Deep learning (FRIEND), has been introduced that can instantaneously facilitate remote diagnosis of heart patients. The proposed system was trained on the combined dataset of Long-Beach, Cleveland, Switzerland, and Hungarian heart disease datasets. We first tested the model with eight basic ML approaches, including the decision tree, logistic regression, random forest, naive Bayes, k-nearest neighbors, support vector machine, AdaBoost, and XGBoost approaches, and then applied ensemble methods including bagging classifiers, weighted averaging, and soft and hard voting to achieve enhanced outcomes and a deep neural network, a deep learning approach, with the ensemble methods. These models were validated using 16 performance and 9 network parameters to justify this work. The accuracy, PPV, TPR, TNR, and F1 scores of the experiments reached 94.27%, 97.59%, 96.09%, 75.44%, and 96.83%, respectively, which were comparatively higher when the deep neural network was assembled with bagging and hard-voting classifiers. The user-friendliness and the inclusion of Fog computing principles, instantaneous remote cardiac patient diagnosis, low latency, and low energy consumption, etc., are advantages confirmed according to the achieved experimental results.
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来源期刊
Informatics
Informatics Social Sciences-Communication
CiteScore
6.60
自引率
6.50%
发文量
88
审稿时长
6 weeks
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