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Predicting neurological recovery with Canonical Autocorrelation Embeddings

Early prediction of the potential for neurological recovery after resuscitation from cardiac arrest is difficult but important. Currently, no clinical finding or combination of findings are sufficient to accurately predict or preclude favorable recovery of comatose patients in the first 24 to 48 hou...

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Autores principales: De-Arteaga, Maria, Chen, Jieshi, Huggins, Peter, Elmer, Jonathan, Clermont, Gilles, Dubrawski, Artur
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6349311/
https://www.ncbi.nlm.nih.gov/pubmed/30689648
http://dx.doi.org/10.1371/journal.pone.0210966
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author De-Arteaga, Maria
Chen, Jieshi
Huggins, Peter
Elmer, Jonathan
Clermont, Gilles
Dubrawski, Artur
author_facet De-Arteaga, Maria
Chen, Jieshi
Huggins, Peter
Elmer, Jonathan
Clermont, Gilles
Dubrawski, Artur
author_sort De-Arteaga, Maria
collection PubMed
description Early prediction of the potential for neurological recovery after resuscitation from cardiac arrest is difficult but important. Currently, no clinical finding or combination of findings are sufficient to accurately predict or preclude favorable recovery of comatose patients in the first 24 to 48 hours after resuscitation. Thus, life-sustaining therapy is often continued for several days in patients whose irrecoverable injury is not yet recognized. Conversely, early withdrawal of life-sustaining therapy increases mortality among patients who otherwise might have gone on to recover. In this work, we present Canonical Autocorrelation Analysis (CAA) and Canonical Autocorrelation Embeddings (CAE), novel methods suitable for identifying complex patterns in high-resolution multivariate data often collected in highly monitored clinical environments such as intensive care units. CAE embeds sets of datapoints onto a space that characterizes their latent correlation structures and allows direct comparison of these structures through the use of a distance metric. The methodology may be particularly suitable when the unit of analysis is not just an individual datapoint but a dataset, as for instance in patients for whom physiological measures are recorded over time, and where changes of correlation patterns in these datasets are informative for the task at hand. We present a proof of concept to illustrate the potential utility of CAE by applying it to characterize electroencephalographic recordings from 80 comatose survivors of cardiac arrest, aiming to identify patients who will survive to hospital discharge with favorable functional recovery. Our results show that with very low probability of making a Type 1 error, we are able to identify 32.5% of patients who are likely to have a good neurological outcome, some of whom have otherwise unfavorable clinical characteristics. Importantly, some of these had 5% predicted chance of favorable recovery based on initial illness severity measures alone. Providing this information to support clinical decision-making could motivate the continuation of life-sustaining therapies for these patients.
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spelling pubmed-63493112019-02-15 Predicting neurological recovery with Canonical Autocorrelation Embeddings De-Arteaga, Maria Chen, Jieshi Huggins, Peter Elmer, Jonathan Clermont, Gilles Dubrawski, Artur PLoS One Research Article Early prediction of the potential for neurological recovery after resuscitation from cardiac arrest is difficult but important. Currently, no clinical finding or combination of findings are sufficient to accurately predict or preclude favorable recovery of comatose patients in the first 24 to 48 hours after resuscitation. Thus, life-sustaining therapy is often continued for several days in patients whose irrecoverable injury is not yet recognized. Conversely, early withdrawal of life-sustaining therapy increases mortality among patients who otherwise might have gone on to recover. In this work, we present Canonical Autocorrelation Analysis (CAA) and Canonical Autocorrelation Embeddings (CAE), novel methods suitable for identifying complex patterns in high-resolution multivariate data often collected in highly monitored clinical environments such as intensive care units. CAE embeds sets of datapoints onto a space that characterizes their latent correlation structures and allows direct comparison of these structures through the use of a distance metric. The methodology may be particularly suitable when the unit of analysis is not just an individual datapoint but a dataset, as for instance in patients for whom physiological measures are recorded over time, and where changes of correlation patterns in these datasets are informative for the task at hand. We present a proof of concept to illustrate the potential utility of CAE by applying it to characterize electroencephalographic recordings from 80 comatose survivors of cardiac arrest, aiming to identify patients who will survive to hospital discharge with favorable functional recovery. Our results show that with very low probability of making a Type 1 error, we are able to identify 32.5% of patients who are likely to have a good neurological outcome, some of whom have otherwise unfavorable clinical characteristics. Importantly, some of these had 5% predicted chance of favorable recovery based on initial illness severity measures alone. Providing this information to support clinical decision-making could motivate the continuation of life-sustaining therapies for these patients. Public Library of Science 2019-01-28 /pmc/articles/PMC6349311/ /pubmed/30689648 http://dx.doi.org/10.1371/journal.pone.0210966 Text en © 2019 De-Arteaga et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
De-Arteaga, Maria
Chen, Jieshi
Huggins, Peter
Elmer, Jonathan
Clermont, Gilles
Dubrawski, Artur
Predicting neurological recovery with Canonical Autocorrelation Embeddings
title Predicting neurological recovery with Canonical Autocorrelation Embeddings
title_full Predicting neurological recovery with Canonical Autocorrelation Embeddings
title_fullStr Predicting neurological recovery with Canonical Autocorrelation Embeddings
title_full_unstemmed Predicting neurological recovery with Canonical Autocorrelation Embeddings
title_short Predicting neurological recovery with Canonical Autocorrelation Embeddings
title_sort predicting neurological recovery with canonical autocorrelation embeddings
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6349311/
https://www.ncbi.nlm.nih.gov/pubmed/30689648
http://dx.doi.org/10.1371/journal.pone.0210966
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