Internet of Things (IoT) based ECG System for Rural Health Care
- URL: http://arxiv.org/abs/2208.02226v1
- Date: Wed, 27 Jul 2022 02:56:36 GMT
- Title: Internet of Things (IoT) based ECG System for Rural Health Care
- Authors: Md. Obaidur Rahman, Mohammod Abul Kashem, Al-Akhir Nayan, Most.
Fahmida Akter, Fazly Rabbi, Marzia Ahmed, Mohammad Asaduzzaman
- Abstract summary: Nearly 30% of the people in the rural areas of Bangladesh are in poverty level.
modernized technology, nursing and diagnosis facilities are limited for rural people.
The proposed IoT-based ECG system reduces the health care cost and complexity of cardiovascular diseases in the future.
- Score: 0.33249867230903685
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Nearly 30% of the people in the rural areas of Bangladesh are below the
poverty level. Moreover, due to the unavailability of modernized
healthcare-related technology, nursing and diagnosis facilities are limited for
rural people. Therefore, rural people are deprived of proper healthcare. In
this perspective, modern technology can be facilitated to mitigate their health
problems. ECG sensing tools are interfaced with the human chest, and requisite
cardiovascular data is collected through an IoT device. These data are stored
in the cloud incorporates with the MQTT and HTTP servers. An innovative
IoT-based method for ECG monitoring systems on cardiovascular or heart patients
has been suggested in this study. The ECG signal parameters P, Q, R, S, T are
collected, pre-processed, and predicted to monitor the cardiovascular
conditions for further health management. The machine learning algorithm is
used to determine the significance of ECG signal parameters and error rate. The
logistic regression model fitted the better agreements between the train and
test data. The prediction has been performed to determine the variation of
PQRST quality and its suitability in the ECG Monitoring System. Considering the
values of quality parameters, satisfactory results are obtained. The proposed
IoT-based ECG system reduces the health care cost and complexity of
cardiovascular diseases in the future.
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