Smart City Gnosys

Smart city article details

Title A Machine Learning Model For Predicting Of Chronic Kidney Disease Based Internet Of Things And Cloud Computing In Smart Cities
ID_Doc 2474
Authors Abdelaziz A.; Salama A.S.; Riad A.M.; Mahmoud A.N.
Year 2019
Published Lecture Notes in Intelligent Transportation and Infrastructure, Part F1404
DOI http://dx.doi.org/10.1007/978-3-030-01560-2_5
Abstract Cloud computing and internet of things (IOT) plays an important role in health care services especially in the prediction of diseases in smart cities. IOT devices (digital sensors and etc.) can be used to send big data onto chronic kidney diseases (CKD) to store it in the cloud computing. Therefore, these big data are used to increase the accuracy of prediction of CKD on cloud environment. The prediction of dangerous diseases such as CKD based cloud-IOT is considered a big problem that facing the stakeholders of health cares in smart cities. This paper focuses on predicting of CKD as an example of health care services on cloud computing environment. Cloud computing is supported patients to predict of CKD anywhere and anytime in smart cities. For that, this paper proposes a hybrid intelligent model for predicting CKD based cloud-IOT by using two intelligent techniques, which are linear regression (LR) and neural network (NN). LR is used to determine critical factors that influence on CKD. NN is used to predict of CKD. The results show that, the accuracy of hybrid intelligent model in predicting of CKD is 97.8%. In addition, a hybrid intelligent model is applied on windows azure as an example of a cloud computing environment to predict of CKD to support patients in smart cities. The proposed model is superior to most of the models referred to in the related works by 64%. © 2019, Springer Nature Switzerland AG.
Author Keywords Chronic kidney disease; Cloud computing; Internet of things; Linear regression; Neural network; Smart cities


Similar Articles


Id Similarity Authors Title Published
48155 View0.892Sulthan Alikhan J.; Alageswaran R.; Miruna Joe Amali S.Self-Attention Convolutional Neural Network Optimized With Season Optimization Algorithm Espoused Chronic Kidney Diseases Diagnosis In Big Data SystemBiomedical Signal Processing and Control, 85 (2023)
51104 View0.878Prusty S.; Dash S.K.; Prusty S.G.P.; Dalai S.S.; Tripathy N.; Nayak S.K.Smart Iot_Cloud-Based Ml Technique To Classify Breast Cancer2023 2nd International Conference on Ambient Intelligence in Health Care, ICAIHC 2023 (2023)
3404 View0.866Guo B.; Niu L.A Novel Internet Of Things And Cloud Computing-Driven Deep Learning Framework For Disease Prediction And MonitoringInternational Journal of Advanced Computer Science and Applications, 16, 1 (2025)
35931 View0.86Kaliappan V.K.; Gnanamurthy S.; Yahya A.; Samikannu R.; Babar M.; Qureshi B.; Koubaa A.Machine Learning Based Healthcare Service Dissemination Using Social Internet Of Things And Cloud Architecture In Smart CitiesSustainability (Switzerland), 15, 6 (2023)
35888 View0.854Rashmi Bandara M.S.; Halgamuge M.N.; Marques G.Machine Learning And Internet Of Things For Smart Living: A Comprehensive Review And AnalysisStudies in Fuzziness and Soft Computing, 410 (2021)
23451 View0.85Tripathy S.S.; Tripathy B.; Bebortta S.; Modibbo U.M.Energy-Efficient And Delay Tolerant Prediction Of Heart Disease In Iot-Enabled Mist Computing PlatformsHealthcare-Driven Intelligent Computing Paradigms to Secure Futuristic Smart Cities (2024)