Litcius/Paper detail

ANN Assisted-IoT Enabled COVID-19 Patient Monitoring

Geetanjali Rathee, Sahil Garg, Georges Kaddoum, Yulei Wu, Dushantha Nalin K. Jayakody, Atif Alamri

2021IEEE Access35 citationsDOIOpen Access PDF

Abstract

COVID-19 is an extremely dangerous disease because of its highly infectious nature. In order to provide a quick and immediate identification of infection, a proper and immediate clinical support is needed. Researchers have proposed various Machine Learning and smart IoT based schemes for categorizing the COVID-19 patients. Artificial Neural Networks (ANN) that are inspired by the biological concept of neurons are generally used in various applications including healthcare systems. The ANN scheme provides a viable solution in the decision making process for managing the healthcare information. This manuscript endeavours to illustrate the applicability and suitability of ANN by categorizing the status of COVID-19 patients' health into infected (IN), uninfected (UI), exposed (EP) and susceptible (ST). In order to do so, Bayesian and back propagation algorithms have been used to generate the results. Further, viterbi algorithm is used to improve the accuracy of the proposed system. The proposed mechanism is validated over various accuracy and classification parameters against conventional Random Tree (RT), Fuzzy C Means (FCM) and REPTree (RPT) methods.

Topics & Concepts

Computer scienceArtificial intelligenceMachine learningArtificial neural networkDecision treeFuzzy logicProcess (computing)Identification (biology)Bayesian networkNaive Bayes classifierRandom treeScheme (mathematics)Remote patient monitoringBackpropagationHealth careFuzzy control systemRandom forestStatistical classificationData miningTree (set theory)Bayesian probabilityViterbi algorithmInternet of ThingsMechanism (biology)BiomedicineFuzzy setExpert systemRecurrent neural networkIdentification schemeDecision support systemCOVID-19 diagnosis using AIInternet of Things and AIArtificial Intelligence in Healthcare