Prediction and evaluation of healthy and unhealthy status of COVID-19 patients using wearable device prototype data

COVID-19 pandemic seriousness is making the whole world suffer due to inefficient medication and vaccines. The article prediction analysis is carried out with the dataset downloaded from the Application peripheral interface (API) designed explicitly for COVID-19 quarantined patients. The measured da...

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Main Authors: Shaik Asif Hussain, Nizar Al Bassam, Amer Zayegh, Sana Al Ghawi
Format: Article
Language:English
Published: Elsevier 2022-01-01
Series:MethodsX
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2215016122000036
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author Shaik Asif Hussain
Nizar Al Bassam
Amer Zayegh
Sana Al Ghawi
author_facet Shaik Asif Hussain
Nizar Al Bassam
Amer Zayegh
Sana Al Ghawi
author_sort Shaik Asif Hussain
collection DOAJ
description COVID-19 pandemic seriousness is making the whole world suffer due to inefficient medication and vaccines. The article prediction analysis is carried out with the dataset downloaded from the Application peripheral interface (API) designed explicitly for COVID-19 quarantined patients. The measured data is collected from a wearable device used for quarantined healthy and unhealthy patients. The wearable device provides data of temperature, heart rate, SPO2, blood saturation, and blood pressure timely for alerting the medical authorities and providing a better diagnosis and treatment. The dataset contains 1085 patients with eight features representing 490 COVID-19 infected and 595 standard cases. The work considers different parameters, namely heart rate, temperature, SpO2, bpm parameters, and health status.Furthermore, the real-time data collected can predict the health status of patients as infected and non-infected from measured parameters. The collected dataset uses a random forest classifier with linear and polynomial regression to train and validate COVID-19 patient data. The google colab is an Integral development environment inbuilt with python and Jupyter notebook with scikit-learn version 0.22.1 virtually tested on cloud coding tools. The dataset is trained and tested in 80% and 20% ratio for accuracy evaluation and avoid overfitting in the model. This analysis could help medical authorities and governmental agencies of every country respond timely and reduce the contamination of the disease. • The measured data provide a comprehensive mapping of disease symptoms to predict the health status. They can restrict the virus transmission and take necessary steps to control, mitigate and manage the disease. • Benefits in scientific research with Artificial Intelligence (AI) to tackle the hurdles in analyzing disease diagnosis. • The diagnosis results of disease symptoms can identify the severity of the patient to monitor and manage the difficulties for the outbreak caused.
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spelling doaj.art-eff9809568fd4ac188542367db37252a2022-12-22T04:40:25ZengElsevierMethodsX2215-01612022-01-019101618Prediction and evaluation of healthy and unhealthy status of COVID-19 patients using wearable device prototype dataShaik Asif Hussain0Nizar Al Bassam1Amer Zayegh2Sana Al Ghawi3Corresponding author.; Centre for Research and Consultancy, Middle East College, Muscat, OmanCentre for Research and Consultancy, Middle East College, Muscat, OmanCentre for Research and Consultancy, Middle East College, Muscat, OmanCentre for Research and Consultancy, Middle East College, Muscat, OmanCOVID-19 pandemic seriousness is making the whole world suffer due to inefficient medication and vaccines. The article prediction analysis is carried out with the dataset downloaded from the Application peripheral interface (API) designed explicitly for COVID-19 quarantined patients. The measured data is collected from a wearable device used for quarantined healthy and unhealthy patients. The wearable device provides data of temperature, heart rate, SPO2, blood saturation, and blood pressure timely for alerting the medical authorities and providing a better diagnosis and treatment. The dataset contains 1085 patients with eight features representing 490 COVID-19 infected and 595 standard cases. The work considers different parameters, namely heart rate, temperature, SpO2, bpm parameters, and health status.Furthermore, the real-time data collected can predict the health status of patients as infected and non-infected from measured parameters. The collected dataset uses a random forest classifier with linear and polynomial regression to train and validate COVID-19 patient data. The google colab is an Integral development environment inbuilt with python and Jupyter notebook with scikit-learn version 0.22.1 virtually tested on cloud coding tools. The dataset is trained and tested in 80% and 20% ratio for accuracy evaluation and avoid overfitting in the model. This analysis could help medical authorities and governmental agencies of every country respond timely and reduce the contamination of the disease. • The measured data provide a comprehensive mapping of disease symptoms to predict the health status. They can restrict the virus transmission and take necessary steps to control, mitigate and manage the disease. • Benefits in scientific research with Artificial Intelligence (AI) to tackle the hurdles in analyzing disease diagnosis. • The diagnosis results of disease symptoms can identify the severity of the patient to monitor and manage the difficulties for the outbreak caused.http://www.sciencedirect.com/science/article/pii/S2215016122000036QuarantineWearable electronic devicePandemicHealthcareAI modelDataset
spellingShingle Shaik Asif Hussain
Nizar Al Bassam
Amer Zayegh
Sana Al Ghawi
Prediction and evaluation of healthy and unhealthy status of COVID-19 patients using wearable device prototype data
MethodsX
Quarantine
Wearable electronic device
Pandemic
Healthcare
AI model
Dataset
title Prediction and evaluation of healthy and unhealthy status of COVID-19 patients using wearable device prototype data
title_full Prediction and evaluation of healthy and unhealthy status of COVID-19 patients using wearable device prototype data
title_fullStr Prediction and evaluation of healthy and unhealthy status of COVID-19 patients using wearable device prototype data
title_full_unstemmed Prediction and evaluation of healthy and unhealthy status of COVID-19 patients using wearable device prototype data
title_short Prediction and evaluation of healthy and unhealthy status of COVID-19 patients using wearable device prototype data
title_sort prediction and evaluation of healthy and unhealthy status of covid 19 patients using wearable device prototype data
topic Quarantine
Wearable electronic device
Pandemic
Healthcare
AI model
Dataset
url http://www.sciencedirect.com/science/article/pii/S2215016122000036
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