Publication year
2013Source
Journal of Biomedical Informatics, 46, 3, (2013), pp. 458-69ISSN
Publication type
Article / Letter to editor

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Organization
Software Science
Pulmonary Diseases
Primary and Community Care
Journal title
Journal of Biomedical Informatics
Volume
vol. 46
Issue
iss. 3
Page start
p. 458
Page end
p. 69
Subject
N4i 1: Pathogenesis and modulation of inflammation; N4i 1: Pathogenesis and modulation of inflammation NCEBP 3: Implementation Science; NCEBP 7: Effective primary care and public health N4i 3: Poverty-related infectious diseases; Software ScienceAbstract
INTRODUCTION: Managing chronic disease through automated systems has the potential to both benefit the patient and reduce health-care costs. We have developed and evaluated a disease management system for patients with chronic obstructive pulmonary disease (COPD). Its aim is to predict and detect exacerbations and, through this, help patients self-manage their disease to prevent hospitalisation. MATERIALS: The carefully crafted intelligent system consists of a mobile device that is able to collect case-specific, subjective and objective, physiological data, and to alert the patient by a patient-specific interpretation of the data by means of probabilistic reasoning. Collected data are also sent to a central server for inspection by health-care professionals. METHODS: We evaluated the probabilistic model using cross-validation and ROC analyses on data from an earlier study and by an independent data set. Furthermore a pilot with actual COPD patients has been conducted to test technical feasibility and to obtain user feedback. RESULTS: Model evaluation results show that we can reliably detect exacerbations. Pilot study results suggest that an intervention based on this system could be successful.
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- Academic publications [227696]
- Faculty of Medical Sciences [87091]
- Faculty of Science [34023]
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