Cargando…

Automated Interpretation of Clinical Electroencephalograms Using Artificial Intelligence

IMPORTANCE: Electroencephalograms (EEGs) are a fundamental evaluation in neurology but require special expertise unavailable in many regions of the world. Artificial intelligence (AI) has a potential for addressing these unmet needs. Previous AI models address only limited aspects of EEG interpretat...

Descripción completa

Detalles Bibliográficos
Autores principales: Tveit, Jesper, Aurlien, Harald, Plis, Sergey, Calhoun, Vince D., Tatum, William O., Schomer, Donald L., Arntsen, Vibeke, Cox, Fieke, Fahoum, Firas, Gallentine, William B., Gardella, Elena, Hahn, Cecil D., Husain, Aatif M., Kessler, Sudha, Kural, Mustafa Aykut, Nascimento, Fábio A., Tankisi, Hatice, Ulvin, Line B., Wennberg, Richard, Beniczky, Sándor
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Association 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10282956/
https://www.ncbi.nlm.nih.gov/pubmed/37338864
http://dx.doi.org/10.1001/jamaneurol.2023.1645
_version_ 1785061223285391360
author Tveit, Jesper
Aurlien, Harald
Plis, Sergey
Calhoun, Vince D.
Tatum, William O.
Schomer, Donald L.
Arntsen, Vibeke
Cox, Fieke
Fahoum, Firas
Gallentine, William B.
Gardella, Elena
Hahn, Cecil D.
Husain, Aatif M.
Kessler, Sudha
Kural, Mustafa Aykut
Nascimento, Fábio A.
Tankisi, Hatice
Ulvin, Line B.
Wennberg, Richard
Beniczky, Sándor
author_facet Tveit, Jesper
Aurlien, Harald
Plis, Sergey
Calhoun, Vince D.
Tatum, William O.
Schomer, Donald L.
Arntsen, Vibeke
Cox, Fieke
Fahoum, Firas
Gallentine, William B.
Gardella, Elena
Hahn, Cecil D.
Husain, Aatif M.
Kessler, Sudha
Kural, Mustafa Aykut
Nascimento, Fábio A.
Tankisi, Hatice
Ulvin, Line B.
Wennberg, Richard
Beniczky, Sándor
author_sort Tveit, Jesper
collection PubMed
description IMPORTANCE: Electroencephalograms (EEGs) are a fundamental evaluation in neurology but require special expertise unavailable in many regions of the world. Artificial intelligence (AI) has a potential for addressing these unmet needs. Previous AI models address only limited aspects of EEG interpretation such as distinguishing abnormal from normal or identifying epileptiform activity. A comprehensive, fully automated interpretation of routine EEG based on AI suitable for clinical practice is needed. OBJECTIVE: To develop and validate an AI model (Standardized Computer-based Organized Reporting of EEG–Artificial Intelligence [SCORE-AI]) with the ability to distinguish abnormal from normal EEG recordings and to classify abnormal EEG recordings into categories relevant for clinical decision-making: epileptiform-focal, epileptiform-generalized, nonepileptiform-focal, and nonepileptiform-diffuse. DESIGN, SETTING, AND PARTICIPANTS: In this multicenter diagnostic accuracy study, a convolutional neural network model, SCORE-AI, was developed and validated using EEGs recorded between 2014 and 2020. Data were analyzed from January 17, 2022, until November 14, 2022. A total of 30 493 recordings of patients referred for EEG were included into the development data set annotated by 17 experts. Patients aged more than 3 months and not critically ill were eligible. The SCORE-AI was validated using 3 independent test data sets: a multicenter data set of 100 representative EEGs evaluated by 11 experts, a single-center data set of 9785 EEGs evaluated by 14 experts, and for benchmarking with previously published AI models, a data set of 60 EEGs with external reference standard. No patients who met eligibility criteria were excluded. MAIN OUTCOMES AND MEASURES: Diagnostic accuracy, sensitivity, and specificity compared with the experts and the external reference standard of patients’ habitual clinical episodes obtained during video-EEG recording. RESULTS: The characteristics of the EEG data sets include development data set (N = 30 493; 14 980 men; median age, 25.3 years [95% CI, 1.3-76.2 years]), multicenter test data set (N = 100; 61 men, median age, 25.8 years [95% CI, 4.1-85.5 years]), single-center test data set (N = 9785; 5168 men; median age, 35.4 years [95% CI, 0.6-87.4 years]), and test data set with external reference standard (N = 60; 27 men; median age, 36 years [95% CI, 3-75 years]). The SCORE-AI achieved high accuracy, with an area under the receiver operating characteristic curve between 0.89 and 0.96 for the different categories of EEG abnormalities, and performance similar to human experts. Benchmarking against 3 previously published AI models was limited to comparing detection of epileptiform abnormalities. The accuracy of SCORE-AI (88.3%; 95% CI, 79.2%-94.9%) was significantly higher than the 3 previously published models (P < .001) and similar to human experts. CONCLUSIONS AND RELEVANCE: In this study, SCORE-AI achieved human expert level performance in fully automated interpretation of routine EEGs. Application of SCORE-AI may improve diagnosis and patient care in underserved areas and improve efficiency and consistency in specialized epilepsy centers.
format Online
Article
Text
id pubmed-10282956
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher American Medical Association
record_format MEDLINE/PubMed
spelling pubmed-102829562023-06-22 Automated Interpretation of Clinical Electroencephalograms Using Artificial Intelligence Tveit, Jesper Aurlien, Harald Plis, Sergey Calhoun, Vince D. Tatum, William O. Schomer, Donald L. Arntsen, Vibeke Cox, Fieke Fahoum, Firas Gallentine, William B. Gardella, Elena Hahn, Cecil D. Husain, Aatif M. Kessler, Sudha Kural, Mustafa Aykut Nascimento, Fábio A. Tankisi, Hatice Ulvin, Line B. Wennberg, Richard Beniczky, Sándor JAMA Neurol Original Investigation IMPORTANCE: Electroencephalograms (EEGs) are a fundamental evaluation in neurology but require special expertise unavailable in many regions of the world. Artificial intelligence (AI) has a potential for addressing these unmet needs. Previous AI models address only limited aspects of EEG interpretation such as distinguishing abnormal from normal or identifying epileptiform activity. A comprehensive, fully automated interpretation of routine EEG based on AI suitable for clinical practice is needed. OBJECTIVE: To develop and validate an AI model (Standardized Computer-based Organized Reporting of EEG–Artificial Intelligence [SCORE-AI]) with the ability to distinguish abnormal from normal EEG recordings and to classify abnormal EEG recordings into categories relevant for clinical decision-making: epileptiform-focal, epileptiform-generalized, nonepileptiform-focal, and nonepileptiform-diffuse. DESIGN, SETTING, AND PARTICIPANTS: In this multicenter diagnostic accuracy study, a convolutional neural network model, SCORE-AI, was developed and validated using EEGs recorded between 2014 and 2020. Data were analyzed from January 17, 2022, until November 14, 2022. A total of 30 493 recordings of patients referred for EEG were included into the development data set annotated by 17 experts. Patients aged more than 3 months and not critically ill were eligible. The SCORE-AI was validated using 3 independent test data sets: a multicenter data set of 100 representative EEGs evaluated by 11 experts, a single-center data set of 9785 EEGs evaluated by 14 experts, and for benchmarking with previously published AI models, a data set of 60 EEGs with external reference standard. No patients who met eligibility criteria were excluded. MAIN OUTCOMES AND MEASURES: Diagnostic accuracy, sensitivity, and specificity compared with the experts and the external reference standard of patients’ habitual clinical episodes obtained during video-EEG recording. RESULTS: The characteristics of the EEG data sets include development data set (N = 30 493; 14 980 men; median age, 25.3 years [95% CI, 1.3-76.2 years]), multicenter test data set (N = 100; 61 men, median age, 25.8 years [95% CI, 4.1-85.5 years]), single-center test data set (N = 9785; 5168 men; median age, 35.4 years [95% CI, 0.6-87.4 years]), and test data set with external reference standard (N = 60; 27 men; median age, 36 years [95% CI, 3-75 years]). The SCORE-AI achieved high accuracy, with an area under the receiver operating characteristic curve between 0.89 and 0.96 for the different categories of EEG abnormalities, and performance similar to human experts. Benchmarking against 3 previously published AI models was limited to comparing detection of epileptiform abnormalities. The accuracy of SCORE-AI (88.3%; 95% CI, 79.2%-94.9%) was significantly higher than the 3 previously published models (P < .001) and similar to human experts. CONCLUSIONS AND RELEVANCE: In this study, SCORE-AI achieved human expert level performance in fully automated interpretation of routine EEGs. Application of SCORE-AI may improve diagnosis and patient care in underserved areas and improve efficiency and consistency in specialized epilepsy centers. American Medical Association 2023-06-20 2023-08 /pmc/articles/PMC10282956/ /pubmed/37338864 http://dx.doi.org/10.1001/jamaneurol.2023.1645 Text en Copyright 2023 Tveit J et al. JAMA Neurology. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article distributed under the terms of the CC-BY-NC-ND License.
spellingShingle Original Investigation
Tveit, Jesper
Aurlien, Harald
Plis, Sergey
Calhoun, Vince D.
Tatum, William O.
Schomer, Donald L.
Arntsen, Vibeke
Cox, Fieke
Fahoum, Firas
Gallentine, William B.
Gardella, Elena
Hahn, Cecil D.
Husain, Aatif M.
Kessler, Sudha
Kural, Mustafa Aykut
Nascimento, Fábio A.
Tankisi, Hatice
Ulvin, Line B.
Wennberg, Richard
Beniczky, Sándor
Automated Interpretation of Clinical Electroencephalograms Using Artificial Intelligence
title Automated Interpretation of Clinical Electroencephalograms Using Artificial Intelligence
title_full Automated Interpretation of Clinical Electroencephalograms Using Artificial Intelligence
title_fullStr Automated Interpretation of Clinical Electroencephalograms Using Artificial Intelligence
title_full_unstemmed Automated Interpretation of Clinical Electroencephalograms Using Artificial Intelligence
title_short Automated Interpretation of Clinical Electroencephalograms Using Artificial Intelligence
title_sort automated interpretation of clinical electroencephalograms using artificial intelligence
topic Original Investigation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10282956/
https://www.ncbi.nlm.nih.gov/pubmed/37338864
http://dx.doi.org/10.1001/jamaneurol.2023.1645
work_keys_str_mv AT tveitjesper automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT aurlienharald automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT plissergey automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT calhounvinced automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT tatumwilliamo automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT schomerdonaldl automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT arntsenvibeke automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT coxfieke automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT fahoumfiras automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT gallentinewilliamb automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT gardellaelena automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT hahncecild automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT husainaatifm automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT kesslersudha automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT kuralmustafaaykut automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT nascimentofabioa automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT tankisihatice automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT ulvinlineb automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT wennbergrichard automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence
AT beniczkysandor automatedinterpretationofclinicalelectroencephalogramsusingartificialintelligence