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Topological data analysis (TDA) enhances bispectral EEG (BSEEG) algorithm for detection of delirium

Current methods for screening and detecting delirium are not practical in clinical settings. We previously showed that a simplified EEG with bispectral electroencephalography (BSEEG) algorithm can detect delirium in elderly inpatients. In this study, we performed a post-hoc BSEEG data analysis using...

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Autores principales: Yamanashi, Takehiko, Kajitani, Mari, Iwata, Masaaki, Crutchley, Kaitlyn J., Marra, Pedro, Malicoat, Johnny R., Williams, Jessica C., Leyden, Lydia R., Long, Hailey, Lo, Duachee, Schacher, Cassidy J., Hiraoka, Kazuaki, Tsunoda, Tomoyuki, Kobayashi, Ken, Ikai, Yoshiaki, Kaneko, Koichi, Umeda, Yuhei, Kadooka, Yoshimasa, Shinozaki, Gen
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7801387/
https://www.ncbi.nlm.nih.gov/pubmed/33431928
http://dx.doi.org/10.1038/s41598-020-79391-y
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author Yamanashi, Takehiko
Kajitani, Mari
Iwata, Masaaki
Crutchley, Kaitlyn J.
Marra, Pedro
Malicoat, Johnny R.
Williams, Jessica C.
Leyden, Lydia R.
Long, Hailey
Lo, Duachee
Schacher, Cassidy J.
Hiraoka, Kazuaki
Tsunoda, Tomoyuki
Kobayashi, Ken
Ikai, Yoshiaki
Kaneko, Koichi
Umeda, Yuhei
Kadooka, Yoshimasa
Shinozaki, Gen
author_facet Yamanashi, Takehiko
Kajitani, Mari
Iwata, Masaaki
Crutchley, Kaitlyn J.
Marra, Pedro
Malicoat, Johnny R.
Williams, Jessica C.
Leyden, Lydia R.
Long, Hailey
Lo, Duachee
Schacher, Cassidy J.
Hiraoka, Kazuaki
Tsunoda, Tomoyuki
Kobayashi, Ken
Ikai, Yoshiaki
Kaneko, Koichi
Umeda, Yuhei
Kadooka, Yoshimasa
Shinozaki, Gen
author_sort Yamanashi, Takehiko
collection PubMed
description Current methods for screening and detecting delirium are not practical in clinical settings. We previously showed that a simplified EEG with bispectral electroencephalography (BSEEG) algorithm can detect delirium in elderly inpatients. In this study, we performed a post-hoc BSEEG data analysis using larger sample size and performed topological data analysis to improve the BSEEG method. Data from 274 subjects included in the previous study were analyzed as a 1st cohort. Subjects were enrolled at the University of Iowa Hospitals and Clinics (UIHC) between January 30, 2016, and October 30, 2017. A second cohort with 265 subjects was recruited between January 16, 2019, and August 19, 2019. The BSEEG score was calculated as a power ratio between low frequency to high frequency using our newly developed algorithm. Additionally, Topological data analysis (TDA) score was calculated by applying TDA to our EEG data. The BSEEG score and TDA score were compared between those patients with delirium and without delirium. Among the 274 subjects from the first cohort, 102 were categorized as delirious. Among the 206 subjects from the second cohort, 42 were categorized as delirious. The areas under the curve (AUCs) based on BSEEG score were 0.72 (1st cohort, Fp1-A1), 0.76 (1st cohort, Fp2-A2), and 0.67 (2nd cohort). AUCs from TDA were much higher at 0.82 (1st cohort, Fp1-A1), 0.84 (1st cohort, Fp2-A2), and 0.78 (2nd cohort). When sensitivity was set to be 0.80, the TDA drastically improved specificity to 0.66 (1st cohort, Fp1-A1), 0.72 (1st cohort, Fp2-A2), and 0.62 (2nd cohort), compared to 0.48 (1st cohort, Fp1-A1), 0.54 (1st cohort, Fp2-A2), and 0.46 (2nd cohort) with BSEEG. BSEEG has the potential to detect delirium, and TDA is helpful to improve the performance.
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spelling pubmed-78013872021-01-12 Topological data analysis (TDA) enhances bispectral EEG (BSEEG) algorithm for detection of delirium Yamanashi, Takehiko Kajitani, Mari Iwata, Masaaki Crutchley, Kaitlyn J. Marra, Pedro Malicoat, Johnny R. Williams, Jessica C. Leyden, Lydia R. Long, Hailey Lo, Duachee Schacher, Cassidy J. Hiraoka, Kazuaki Tsunoda, Tomoyuki Kobayashi, Ken Ikai, Yoshiaki Kaneko, Koichi Umeda, Yuhei Kadooka, Yoshimasa Shinozaki, Gen Sci Rep Article Current methods for screening and detecting delirium are not practical in clinical settings. We previously showed that a simplified EEG with bispectral electroencephalography (BSEEG) algorithm can detect delirium in elderly inpatients. In this study, we performed a post-hoc BSEEG data analysis using larger sample size and performed topological data analysis to improve the BSEEG method. Data from 274 subjects included in the previous study were analyzed as a 1st cohort. Subjects were enrolled at the University of Iowa Hospitals and Clinics (UIHC) between January 30, 2016, and October 30, 2017. A second cohort with 265 subjects was recruited between January 16, 2019, and August 19, 2019. The BSEEG score was calculated as a power ratio between low frequency to high frequency using our newly developed algorithm. Additionally, Topological data analysis (TDA) score was calculated by applying TDA to our EEG data. The BSEEG score and TDA score were compared between those patients with delirium and without delirium. Among the 274 subjects from the first cohort, 102 were categorized as delirious. Among the 206 subjects from the second cohort, 42 were categorized as delirious. The areas under the curve (AUCs) based on BSEEG score were 0.72 (1st cohort, Fp1-A1), 0.76 (1st cohort, Fp2-A2), and 0.67 (2nd cohort). AUCs from TDA were much higher at 0.82 (1st cohort, Fp1-A1), 0.84 (1st cohort, Fp2-A2), and 0.78 (2nd cohort). When sensitivity was set to be 0.80, the TDA drastically improved specificity to 0.66 (1st cohort, Fp1-A1), 0.72 (1st cohort, Fp2-A2), and 0.62 (2nd cohort), compared to 0.48 (1st cohort, Fp1-A1), 0.54 (1st cohort, Fp2-A2), and 0.46 (2nd cohort) with BSEEG. BSEEG has the potential to detect delirium, and TDA is helpful to improve the performance. Nature Publishing Group UK 2021-01-11 /pmc/articles/PMC7801387/ /pubmed/33431928 http://dx.doi.org/10.1038/s41598-020-79391-y Text en © The Author(s) 2021 Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/.
spellingShingle Article
Yamanashi, Takehiko
Kajitani, Mari
Iwata, Masaaki
Crutchley, Kaitlyn J.
Marra, Pedro
Malicoat, Johnny R.
Williams, Jessica C.
Leyden, Lydia R.
Long, Hailey
Lo, Duachee
Schacher, Cassidy J.
Hiraoka, Kazuaki
Tsunoda, Tomoyuki
Kobayashi, Ken
Ikai, Yoshiaki
Kaneko, Koichi
Umeda, Yuhei
Kadooka, Yoshimasa
Shinozaki, Gen
Topological data analysis (TDA) enhances bispectral EEG (BSEEG) algorithm for detection of delirium
title Topological data analysis (TDA) enhances bispectral EEG (BSEEG) algorithm for detection of delirium
title_full Topological data analysis (TDA) enhances bispectral EEG (BSEEG) algorithm for detection of delirium
title_fullStr Topological data analysis (TDA) enhances bispectral EEG (BSEEG) algorithm for detection of delirium
title_full_unstemmed Topological data analysis (TDA) enhances bispectral EEG (BSEEG) algorithm for detection of delirium
title_short Topological data analysis (TDA) enhances bispectral EEG (BSEEG) algorithm for detection of delirium
title_sort topological data analysis (tda) enhances bispectral eeg (bseeg) algorithm for detection of delirium
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7801387/
https://www.ncbi.nlm.nih.gov/pubmed/33431928
http://dx.doi.org/10.1038/s41598-020-79391-y
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