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Precision Medicine and Artificial Intelligence: A Pilot Study on Deep Learning for Hypoglycemic Events Detection based on ECG
by
Stranges, Saverio
, Porumb, Mihaela
, Pecchia, Leandro
, Pescapè, Antonio
in
639/166/985
/ 639/705/117
/ 692/699/2743/2815
/ Artificial Intelligence
/ Blood Glucose Self-Monitoring - methods
/ Cohort Studies
/ Deep Learning
/ Diabetes
/ Diabetes mellitus
/ EKG
/ Electrocardiography - methods
/ Electrophysiology
/ Glucose
/ Glucose monitoring
/ Heart - physiopathology
/ Heterogeneity
/ Humanities and Social Sciences
/ Humans
/ Hypoglycemia
/ Hypoglycemia - diagnosis
/ Monitoring, Physiologic
/ multidisciplinary
/ Neural Networks, Computer
/ Pilot Projects
/ Precision Medicine
/ Risk reduction
/ Science
/ Science (multidisciplinary)
/ Wearable Electronic Devices
2020
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Precision Medicine and Artificial Intelligence: A Pilot Study on Deep Learning for Hypoglycemic Events Detection based on ECG
by
Stranges, Saverio
, Porumb, Mihaela
, Pecchia, Leandro
, Pescapè, Antonio
in
639/166/985
/ 639/705/117
/ 692/699/2743/2815
/ Artificial Intelligence
/ Blood Glucose Self-Monitoring - methods
/ Cohort Studies
/ Deep Learning
/ Diabetes
/ Diabetes mellitus
/ EKG
/ Electrocardiography - methods
/ Electrophysiology
/ Glucose
/ Glucose monitoring
/ Heart - physiopathology
/ Heterogeneity
/ Humanities and Social Sciences
/ Humans
/ Hypoglycemia
/ Hypoglycemia - diagnosis
/ Monitoring, Physiologic
/ multidisciplinary
/ Neural Networks, Computer
/ Pilot Projects
/ Precision Medicine
/ Risk reduction
/ Science
/ Science (multidisciplinary)
/ Wearable Electronic Devices
2020
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Do you wish to request the book?
Precision Medicine and Artificial Intelligence: A Pilot Study on Deep Learning for Hypoglycemic Events Detection based on ECG
by
Stranges, Saverio
, Porumb, Mihaela
, Pecchia, Leandro
, Pescapè, Antonio
in
639/166/985
/ 639/705/117
/ 692/699/2743/2815
/ Artificial Intelligence
/ Blood Glucose Self-Monitoring - methods
/ Cohort Studies
/ Deep Learning
/ Diabetes
/ Diabetes mellitus
/ EKG
/ Electrocardiography - methods
/ Electrophysiology
/ Glucose
/ Glucose monitoring
/ Heart - physiopathology
/ Heterogeneity
/ Humanities and Social Sciences
/ Humans
/ Hypoglycemia
/ Hypoglycemia - diagnosis
/ Monitoring, Physiologic
/ multidisciplinary
/ Neural Networks, Computer
/ Pilot Projects
/ Precision Medicine
/ Risk reduction
/ Science
/ Science (multidisciplinary)
/ Wearable Electronic Devices
2020
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Precision Medicine and Artificial Intelligence: A Pilot Study on Deep Learning for Hypoglycemic Events Detection based on ECG
Journal Article
Precision Medicine and Artificial Intelligence: A Pilot Study on Deep Learning for Hypoglycemic Events Detection based on ECG
2020
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Overview
Tracking the fluctuations in blood glucose levels is important for healthy subjects and crucial diabetic patients. Tight glucose monitoring reduces the risk of hypoglycemia, which can result in a series of complications, especially in diabetic patients, such as confusion, irritability, seizure and can even be fatal in specific conditions. Hypoglycemia affects the electrophysiology of the heart. However, due to strong inter-subject heterogeneity, previous studies based on a cohort of subjects failed to deploy electrocardiogram (ECG)-based hypoglycemic detection systems reliably. The current study used personalised medicine approach and Artificial Intelligence (AI) to automatically detect nocturnal hypoglycemia using a few heartbeats of raw ECG signal recorded with non-invasive, wearable devices, in healthy individuals, monitored 24 hours for 14 consecutive days. Additionally, we present a visualisation method enabling clinicians to visualise which part of the ECG signal (e.g., T-wave, ST-interval) is significantly associated with the hypoglycemic event in each subject, overcoming the intelligibility problem of deep-learning methods. These results advance the feasibility of a real-time, non-invasive hypoglycemia alarming system using short excerpts of ECG signal.
Publisher
Nature Publishing Group UK,Nature Publishing Group
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