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Delirium detection using wearable sensors and machine learning in patients with intracerebral hemorrhage

OBJECTIVE: Delirium is associated with worse outcomes in patients with stroke and neurocritical illness, but delirium detection in these patients can be challenging with existing screening tools. To address this gap, we aimed to develop and evaluate machine learning models that detect episodes of po...

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Autores principales: Ahmed, Abdullah, Garcia-Agundez, Augusto, Petrovic, Ivana, Radaei, Fatemeh, Fife, James, Zhou, John, Karas, Hunter, Moody, Scott, Drake, Jonathan, Jones, Richard N., Eickhoff, Carsten, Reznik, Michael E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10288850/
https://www.ncbi.nlm.nih.gov/pubmed/37360342
http://dx.doi.org/10.3389/fneur.2023.1135472
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author Ahmed, Abdullah
Garcia-Agundez, Augusto
Petrovic, Ivana
Radaei, Fatemeh
Fife, James
Zhou, John
Karas, Hunter
Moody, Scott
Drake, Jonathan
Jones, Richard N.
Eickhoff, Carsten
Reznik, Michael E.
author_facet Ahmed, Abdullah
Garcia-Agundez, Augusto
Petrovic, Ivana
Radaei, Fatemeh
Fife, James
Zhou, John
Karas, Hunter
Moody, Scott
Drake, Jonathan
Jones, Richard N.
Eickhoff, Carsten
Reznik, Michael E.
author_sort Ahmed, Abdullah
collection PubMed
description OBJECTIVE: Delirium is associated with worse outcomes in patients with stroke and neurocritical illness, but delirium detection in these patients can be challenging with existing screening tools. To address this gap, we aimed to develop and evaluate machine learning models that detect episodes of post-stroke delirium based on data from wearable activity monitors in conjunction with stroke-related clinical features. DESIGN: Prospective observational cohort study. SETTING: Neurocritical Care and Stroke Units at an academic medical center. PATIENTS: We recruited 39 patients with moderate-to-severe acute intracerebral hemorrhage (ICH) and hemiparesis over a 1-year period [mean (SD) age 71.3 (12.20), 54% male, median (IQR) initial NIH Stroke Scale 14.5 (6), median (IQR) ICH score 2 (1)]. MEASUREMENTS AND MAIN RESULTS: Each patient received daily assessments for delirium by an attending neurologist, while activity data were recorded throughout each patient's hospitalization using wrist-worn actigraph devices (on both paretic and non-paretic arms). We compared the predictive accuracy of Random Forest, SVM and XGBoost machine learning methods in classifying daily delirium status using clinical information alone and combined with actigraph data. Among our study cohort, 85% of patients (n = 33) had at least one delirium episode, while 71% of monitoring days (n = 209) were rated as days with delirium. Clinical information alone had a low accuracy in detecting delirium on a day-to-day basis [accuracy mean (SD) 62% (18%), F1 score mean (SD) 50% (17%)]. Prediction performance improved significantly (p < 0.001) with the addition of actigraph data [accuracy mean (SD) 74% (10%), F1 score 65% (10%)]. Among actigraphy features, night-time actigraph data were especially relevant for classification accuracy. CONCLUSIONS: We found that actigraphy in conjunction with machine learning models improves clinical detection of delirium in patients with stroke, thus paving the way to make actigraph-assisted predictions clinically actionable.
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spelling pubmed-102888502023-06-24 Delirium detection using wearable sensors and machine learning in patients with intracerebral hemorrhage Ahmed, Abdullah Garcia-Agundez, Augusto Petrovic, Ivana Radaei, Fatemeh Fife, James Zhou, John Karas, Hunter Moody, Scott Drake, Jonathan Jones, Richard N. Eickhoff, Carsten Reznik, Michael E. Front Neurol Neurology OBJECTIVE: Delirium is associated with worse outcomes in patients with stroke and neurocritical illness, but delirium detection in these patients can be challenging with existing screening tools. To address this gap, we aimed to develop and evaluate machine learning models that detect episodes of post-stroke delirium based on data from wearable activity monitors in conjunction with stroke-related clinical features. DESIGN: Prospective observational cohort study. SETTING: Neurocritical Care and Stroke Units at an academic medical center. PATIENTS: We recruited 39 patients with moderate-to-severe acute intracerebral hemorrhage (ICH) and hemiparesis over a 1-year period [mean (SD) age 71.3 (12.20), 54% male, median (IQR) initial NIH Stroke Scale 14.5 (6), median (IQR) ICH score 2 (1)]. MEASUREMENTS AND MAIN RESULTS: Each patient received daily assessments for delirium by an attending neurologist, while activity data were recorded throughout each patient's hospitalization using wrist-worn actigraph devices (on both paretic and non-paretic arms). We compared the predictive accuracy of Random Forest, SVM and XGBoost machine learning methods in classifying daily delirium status using clinical information alone and combined with actigraph data. Among our study cohort, 85% of patients (n = 33) had at least one delirium episode, while 71% of monitoring days (n = 209) were rated as days with delirium. Clinical information alone had a low accuracy in detecting delirium on a day-to-day basis [accuracy mean (SD) 62% (18%), F1 score mean (SD) 50% (17%)]. Prediction performance improved significantly (p < 0.001) with the addition of actigraph data [accuracy mean (SD) 74% (10%), F1 score 65% (10%)]. Among actigraphy features, night-time actigraph data were especially relevant for classification accuracy. CONCLUSIONS: We found that actigraphy in conjunction with machine learning models improves clinical detection of delirium in patients with stroke, thus paving the way to make actigraph-assisted predictions clinically actionable. Frontiers Media S.A. 2023-06-09 /pmc/articles/PMC10288850/ /pubmed/37360342 http://dx.doi.org/10.3389/fneur.2023.1135472 Text en Copyright © 2023 Ahmed, Garcia-Agundez, Petrovic, Radaei, Fife, Zhou, Karas, Moody, Drake, Jones, Eickhoff and Reznik. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neurology
Ahmed, Abdullah
Garcia-Agundez, Augusto
Petrovic, Ivana
Radaei, Fatemeh
Fife, James
Zhou, John
Karas, Hunter
Moody, Scott
Drake, Jonathan
Jones, Richard N.
Eickhoff, Carsten
Reznik, Michael E.
Delirium detection using wearable sensors and machine learning in patients with intracerebral hemorrhage
title Delirium detection using wearable sensors and machine learning in patients with intracerebral hemorrhage
title_full Delirium detection using wearable sensors and machine learning in patients with intracerebral hemorrhage
title_fullStr Delirium detection using wearable sensors and machine learning in patients with intracerebral hemorrhage
title_full_unstemmed Delirium detection using wearable sensors and machine learning in patients with intracerebral hemorrhage
title_short Delirium detection using wearable sensors and machine learning in patients with intracerebral hemorrhage
title_sort delirium detection using wearable sensors and machine learning in patients with intracerebral hemorrhage
topic Neurology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10288850/
https://www.ncbi.nlm.nih.gov/pubmed/37360342
http://dx.doi.org/10.3389/fneur.2023.1135472
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