Personalized and automated remote monitoring ...
Document type :
Article dans une revue scientifique
DOI :
PMID :
Permalink :
Title :
Personalized and automated remote monitoring of atrial fibrillation
Author(s) :
Rosier, Arnaud [Auteur]
Mabo, Philippe [Auteur]
Temal, Lynda [Auteur]
van Hille, Pascal [Auteur]
Dameron, Olivier [Auteur]
Deléger, Louise [Auteur]
Grouin, Cyril [Auteur]
Zweigenbaum, Pierre [Auteur]
Jacques, Julie [Auteur]
Chazard, Emmanuel [Auteur]
Evaluation des technologies de santé et des pratiques médicales - ULR 2694 [METRICS]
Laporte, Laure [Auteur]
Henry, Christine [Auteur]
Burgun, Anita [Auteur]
Mabo, Philippe [Auteur]
Temal, Lynda [Auteur]
van Hille, Pascal [Auteur]
Dameron, Olivier [Auteur]
Deléger, Louise [Auteur]
Grouin, Cyril [Auteur]
Zweigenbaum, Pierre [Auteur]
Jacques, Julie [Auteur]
Chazard, Emmanuel [Auteur]

Evaluation des technologies de santé et des pratiques médicales - ULR 2694 [METRICS]
Laporte, Laure [Auteur]
Henry, Christine [Auteur]
Burgun, Anita [Auteur]
Journal title :
EP-Europace
Abbreviated title :
Europace
Volume number :
18
Pages :
347-352
Publisher :
Oxford University Press (OUP): Policy B
Publication date :
2016
ISSN :
1099-5129
Keyword(s) :
Decision support systems
Remote monitoring
Artificial intelligence
Atrial fibrillation
Cardiac implantable electronic devices
Remote monitoring
Artificial intelligence
Atrial fibrillation
Cardiac implantable electronic devices
HAL domain(s) :
Sciences du Vivant [q-bio]/Ingénierie biomédicale
English abstract : [en]
AIMS: Remote monitoring of cardiac implantable electronic devices is a growing standard; yet, remote follow-up and management of alerts represents a time-consuming task for physicians or trained staff. This study evaluates ...
Show more >AIMS: Remote monitoring of cardiac implantable electronic devices is a growing standard; yet, remote follow-up and management of alerts represents a time-consuming task for physicians or trained staff. This study evaluates an automatic mechanism based on artificial intelligence tools to filter atrial fibrillation (AF) alerts based on their medical significance. METHODS AND RESULTS: We evaluated this method on alerts for AF episodes that occurred in 60 pacemaker recipients. AKENATON prototype workflow includes two steps: natural language-processing algorithms abstract the patient health record to a digital version, then a knowledge-based algorithm based on an applied formal ontology allows to calculate the CHA2DS2-VASc score and evaluate the anticoagulation status of the patient. Each alert is then automatically classified by importance from low to critical, by mimicking medical reasoning. Final classification was compared with human expert analysis by two physicians. A total of 1783 alerts about AF episode \\textgreater5 min in 60 patients were processed. A 1749 of 1783 alerts (98%) were adequately classified and there were no underestimation of alert importance in the remaining 34 misclassified alerts. CONCLUSION: This work demonstrates the ability of a pilot system to classify alerts and improves personalized remote monitoring of patients. In particular, our method allows integration of patient medical history with device alert notifications, which is useful both from medical and resource-management perspectives. The system was able to automatically classify the importance of 1783 AF alerts in 60 patients, which resulted in an 84% reduction in notification workload, while preserving patient safetyShow less >
Show more >AIMS: Remote monitoring of cardiac implantable electronic devices is a growing standard; yet, remote follow-up and management of alerts represents a time-consuming task for physicians or trained staff. This study evaluates an automatic mechanism based on artificial intelligence tools to filter atrial fibrillation (AF) alerts based on their medical significance. METHODS AND RESULTS: We evaluated this method on alerts for AF episodes that occurred in 60 pacemaker recipients. AKENATON prototype workflow includes two steps: natural language-processing algorithms abstract the patient health record to a digital version, then a knowledge-based algorithm based on an applied formal ontology allows to calculate the CHA2DS2-VASc score and evaluate the anticoagulation status of the patient. Each alert is then automatically classified by importance from low to critical, by mimicking medical reasoning. Final classification was compared with human expert analysis by two physicians. A total of 1783 alerts about AF episode \\textgreater5 min in 60 patients were processed. A 1749 of 1783 alerts (98%) were adequately classified and there were no underestimation of alert importance in the remaining 34 misclassified alerts. CONCLUSION: This work demonstrates the ability of a pilot system to classify alerts and improves personalized remote monitoring of patients. In particular, our method allows integration of patient medical history with device alert notifications, which is useful both from medical and resource-management perspectives. The system was able to automatically classify the importance of 1783 AF alerts in 60 patients, which resulted in an 84% reduction in notification workload, while preserving patient safetyShow less >
Language :
Anglais
Audience :
Internationale
Popular science :
Non
Administrative institution(s) :
CNRS
Centrale Lille
Université de Lille
Centrale Lille
Université de Lille
Submission date :
2020-06-08T14:11:54Z
2020-06-10T12:49:41Z
2020-06-10T12:49:41Z
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