Phone: (+39) 0813995453


Use of Internet of Things to Provide a New Model for Remote Heart Attack Prediction.

Use of Internet of Things to Provide a New Model for Remote Heart Attack Prediction.

Use of Internet of Things to Provide a New Model for Remote Heart Attack Prediction.

Telemed J E Health. 2018 Sep 26;:

Authors: Yahyaie M, Tarokh MJ, Mahmoodyar MA

Abstract
BACKGROUND: Most of the research on heart attack prediction has been based on the offline decision-making approach. The Internet of Things (IoT), as a new concept in the field of information technology, enables this to happen online.
OBJECTIVE: This study examined an IoT-based model for predicting heart attack. In this model, electrocardiogram (ECG) information at the moment is used, which facilitates decision-making.
METHODS: A research model was developed to get emergency cardiac data at the moment. The basis of this model is the IoT, which enables the information to be instantly accessible. In addition, cloud computing has also been used to analyze online data. We enrolled 207 healthy and 64 myocardial infarction cases of visitors to Khatam-ol-Anbia Hospital of Shahrood in 2017.
RESULTS: Data set included 19 regular features and 1 label feature. Then, neural networks (NNs) were used for model testing. We used IBM SPSS Modeler V.18 for model testing. After selecting 40% of the data as training set and the rest as the testing set, IBM SPSS Modeler returned 89.5%, which means that with the modeling of these data using NN data mining technique with a probability of 89.5%, we will find the right result.
CONCLUSION: Experiments on the real data set showed that using the IoT, along with cloud computing and data mining techniques, predicts a heart attack with acceptable accuracy. This is achieved by receiving vital signs and ECG information instantaneously.

PMID: 30256729 [PubMed - as supplied by publisher]

Powered by WPeMatico

P.IVA 08738511214
Privacy Policy
Cookie Policy

Sede Legale
Viale Campi Flegrei 55
80124 - Napoli

Sede Operativa
Via G.Porzio 4
Centro Direzionale G1
80143 - Napoli

ISO9001
AI 4394
© Copyright 2022 - Humaninsight Srls - All Rights Reserved
Privacy Policy | Cookie Policy
envelopephone-handsetmap-marker linkedin facebook pinterest youtube rss twitter instagram facebook-blank rss-blank linkedin-blank pinterest youtube twitter instagram