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Telehealth and machine learning for COPD patient care

Introduction: COPD is a highly prevalent chronic disease which is already the 4th cause of death worldwide, and its prevalence will keep increasing. The rate of hospitalizations of COPD patients remains constant as opposed as other chronic diseases such as chronic cardiac failure, in which the hospi...

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Bibliographic Details
Published in:International journal of integrated care 2019-08, Vol.19 (4), p.225
Main Authors: Esteban, Cristóbal, Esteban-Aizpiri, Cristóbal, Aramburu, Amaia, Moraza, Francisco Javier, Sancho, Fernando, Tovar, Maria Dolores, Goiria, Begoña, Aguirre, Urko, Aburto, Myriam, Quintana, José María
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Language:English
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Summary:Introduction: COPD is a highly prevalent chronic disease which is already the 4th cause of death worldwide, and its prevalence will keep increasing. The rate of hospitalizations of COPD patients remains constant as opposed as other chronic diseases such as chronic cardiac failure, in which the hospitalization rates are decreasing.  In our hospital we have developed a telehealth program named telEPOC which is aimed to monitorize COPD patients that have been frequently admitted to hospital. The main goal of this program is to reduce the number of admissions to the hospital, and its results so far have been very satisfactory. It has also been shown that this program improves the quality of life of patients with respect to those in the control group. However, we have not been able to reduce to zero the number of COPD hospitalizations. Therefore, we wondered if it would be possible to predict COPD exacerbations, which would enable us to take appropriate actions to avoid such exacerbations or reduce their negative effects. Machine Learning is the most important branch of Artificial Intelligence  and it is focused in developing software that enables computers to learn complex patterns from data, and use them to predict the outcome of previously unseen events. Therefore, this technology enables us to use Electronic Health Records of patients to make personalized predictions about their future. Objectives: telEPOC database is composed by daily reports sent by the patients. According to these daily reports, an alarm system composed by three levels of exacerbation (green, yellow and red) is established. The telEPOC program presents a great opportunity to apply Machine Learning to predict COPD exacerbations, due to the high quality of the data it generates and the great advantage that such predictions will bring to physicians in daily practice. In this work we show an Early Warning System (EWS), based on Machine Learning, that is capable of predicting when a patient of the telEPOC program is going to exacerbate. Also, we find the configuration to make the system optimal both from the medical and computational points of view. Besides we will identify the most informative factors to predict the exacerbations. Methods: The system records  the following variables for each patient on a daily basis: heart rate, temperature, oxygen saturation, respiratory rate, steps walked and a questionnaire form about symptoms (sputum, disnea, cough,  general health status). On this data
ISSN:1568-4156
1568-4156
DOI:10.5334/ijic.s3225