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IoT Based Smart Monitoring of Patients’ with Acute Heart Failure
by
Majeed, Rizwan
, Karamti, Hanen
, Umer, Muhammad
, NAPPI, Michele
, Karamti, Walid
, Sadiq, Saima
in
Algorithms
/ Analysis
/ Artificial intelligence
/ Cardiovascular disease
/ Cloud computing
/ Cognitive ability
/ Datasets
/ Decision making
/ Deep learning
/ Delivery of Health Care
/ Embedded systems
/ Health care industry
/ Health care policy
/ heart disease
/ Heart Diseases
/ Heart failure
/ Heart Failure - diagnosis
/ Humans
/ Internet of Things
/ IoT
/ Machine Learning
/ Medical records
/ Medical research
/ Medicine, Experimental
/ Patients
/ patient’s mortality prediction
/ Sensors
/ smart healthcare
/ Support vector machines
2022
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IoT Based Smart Monitoring of Patients’ with Acute Heart Failure
by
Majeed, Rizwan
, Karamti, Hanen
, Umer, Muhammad
, NAPPI, Michele
, Karamti, Walid
, Sadiq, Saima
in
Algorithms
/ Analysis
/ Artificial intelligence
/ Cardiovascular disease
/ Cloud computing
/ Cognitive ability
/ Datasets
/ Decision making
/ Deep learning
/ Delivery of Health Care
/ Embedded systems
/ Health care industry
/ Health care policy
/ heart disease
/ Heart Diseases
/ Heart failure
/ Heart Failure - diagnosis
/ Humans
/ Internet of Things
/ IoT
/ Machine Learning
/ Medical records
/ Medical research
/ Medicine, Experimental
/ Patients
/ patient’s mortality prediction
/ Sensors
/ smart healthcare
/ Support vector machines
2022
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Do you wish to request the book?
IoT Based Smart Monitoring of Patients’ with Acute Heart Failure
by
Majeed, Rizwan
, Karamti, Hanen
, Umer, Muhammad
, NAPPI, Michele
, Karamti, Walid
, Sadiq, Saima
in
Algorithms
/ Analysis
/ Artificial intelligence
/ Cardiovascular disease
/ Cloud computing
/ Cognitive ability
/ Datasets
/ Decision making
/ Deep learning
/ Delivery of Health Care
/ Embedded systems
/ Health care industry
/ Health care policy
/ heart disease
/ Heart Diseases
/ Heart failure
/ Heart Failure - diagnosis
/ Humans
/ Internet of Things
/ IoT
/ Machine Learning
/ Medical records
/ Medical research
/ Medicine, Experimental
/ Patients
/ patient’s mortality prediction
/ Sensors
/ smart healthcare
/ Support vector machines
2022
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IoT Based Smart Monitoring of Patients’ with Acute Heart Failure
Journal Article
IoT Based Smart Monitoring of Patients’ with Acute Heart Failure
2022
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Overview
The prediction of heart failure survivors is a challenging task and helps medical professionals to make the right decisions about patients. Expertise and experience of medical professionals are required to care for heart failure patients. Machine Learning models can help with understanding symptoms of cardiac disease. However, manual feature engineering is challenging and requires expertise to select the appropriate technique. This study proposes a smart healthcare framework using the Internet-of-Things (IoT) and cloud technologies that improve heart failure patients’ survival prediction without considering manual feature engineering. The smart IoT-based framework monitors patients on the basis of real-time data and provides timely, effective, and quality healthcare services to heart failure patients. The proposed model also investigates deep learning models in classifying heart failure patients as alive or deceased. The framework employs IoT-based sensors to obtain signals and send them to the cloud web server for processing. These signals are further processed by deep learning models to determine the state of patients. Patients’ health records and processing results are shared with a medical professional who will provide emergency help if required. The dataset used in this study contains 13 features and was attained from the UCI repository known as Heart Failure Clinical Records. The experimental results revealed that the CNN model is superior to other deep learning and machine learning models with a 0.9289 accuracy value.
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