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Prediction of Early Dropouts in Patient Remote Monitoring Programs
by
Maglogiannis, Ilias
, Vouzis, Eleftherios
in
Abandonment
/ Aging
/ Algorithms
/ Cardiovascular disease
/ Chronic illnesses
/ Communication
/ Compliance
/ Computer Imaging
/ Computer Science
/ Computer Systems Organization and Communication Networks
/ Context
/ Data Structures and Information Theory
/ Datasets
/ Digitization
/ Early warning systems
/ Emergency communications systems
/ Emergency medical care
/ Exercise
/ Health care industry
/ Health services
/ Information Systems and Communication Service
/ Intervention
/ Machine learning
/ Machine Learning Modeling Techniques and Applications
/ Medical electronics
/ Mindfulness
/ Original Research
/ Patients
/ Pattern Recognition and Graphics
/ Remote monitoring
/ Smartphones
/ Software Engineering/Programming and Operating Systems
/ Telemedicine
/ Usability
/ Vision
2023
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Prediction of Early Dropouts in Patient Remote Monitoring Programs
by
Maglogiannis, Ilias
, Vouzis, Eleftherios
in
Abandonment
/ Aging
/ Algorithms
/ Cardiovascular disease
/ Chronic illnesses
/ Communication
/ Compliance
/ Computer Imaging
/ Computer Science
/ Computer Systems Organization and Communication Networks
/ Context
/ Data Structures and Information Theory
/ Datasets
/ Digitization
/ Early warning systems
/ Emergency communications systems
/ Emergency medical care
/ Exercise
/ Health care industry
/ Health services
/ Information Systems and Communication Service
/ Intervention
/ Machine learning
/ Machine Learning Modeling Techniques and Applications
/ Medical electronics
/ Mindfulness
/ Original Research
/ Patients
/ Pattern Recognition and Graphics
/ Remote monitoring
/ Smartphones
/ Software Engineering/Programming and Operating Systems
/ Telemedicine
/ Usability
/ Vision
2023
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Do you wish to request the book?
Prediction of Early Dropouts in Patient Remote Monitoring Programs
by
Maglogiannis, Ilias
, Vouzis, Eleftherios
in
Abandonment
/ Aging
/ Algorithms
/ Cardiovascular disease
/ Chronic illnesses
/ Communication
/ Compliance
/ Computer Imaging
/ Computer Science
/ Computer Systems Organization and Communication Networks
/ Context
/ Data Structures and Information Theory
/ Datasets
/ Digitization
/ Early warning systems
/ Emergency communications systems
/ Emergency medical care
/ Exercise
/ Health care industry
/ Health services
/ Information Systems and Communication Service
/ Intervention
/ Machine learning
/ Machine Learning Modeling Techniques and Applications
/ Medical electronics
/ Mindfulness
/ Original Research
/ Patients
/ Pattern Recognition and Graphics
/ Remote monitoring
/ Smartphones
/ Software Engineering/Programming and Operating Systems
/ Telemedicine
/ Usability
/ Vision
2023
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Prediction of Early Dropouts in Patient Remote Monitoring Programs
Journal Article
Prediction of Early Dropouts in Patient Remote Monitoring Programs
2023
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Overview
The analysis of medical data is a significant opportunity worldwide for national health systems to reduce costs and at the same time improve healthcare. The utilization of these technologies is done in the context of monitoring health issues, counting health goals, as well as for recording medical data. In such a context, early detection of users at risk of lower compliance rates and patterns of use of a health monitoring application suggesting a risk of abandonment is an invaluable opportunity to implement tailored intervention strategies aimed at recovering and avoiding abandonment thoughts. This study aims to identify patterns of early dropout in users of an application for mobile intervention, having access to a database of users who have experienced the impact of a digital monitoring application to improve their quality of life for at least 6 months. At the experimental stage, many different approaches for early dropout prediction were implemented with a different set of features. Specifically, the current study proposes a methodology using the Neighborhood Cleaning Rule and a specific classification algorithm based on the Stacked Generalization learning method to predict the early abandonment of users of the health monitoring application. The results showed that the proposed algorithm was able to predict the early dropout of users from the application with an accuracy of 97.6%, making it reliable enough to be used as an early warning system.
Publisher
Springer Nature Singapore,Springer Nature B.V
Subject
/ Aging
/ Computer Systems Organization and Communication Networks
/ Context
/ Data Structures and Information Theory
/ Datasets
/ Emergency communications systems
/ Exercise
/ Information Systems and Communication Service
/ Machine Learning Modeling Techniques and Applications
/ Patients
/ Pattern Recognition and Graphics
/ Software Engineering/Programming and Operating Systems
/ Vision
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