
| ID | 66920 | 
| フルテキストURL | |
| 著者 |      
                    Nishii, Nobuhiro
                Department of Cardiovascular  Therapeutics, Okayama University  Graduate School of Medicine, Dentistry,  and Pharmaceutical Sciences
                    Kaken ID 
                    publons 
     
    
                Baba, Kensuke
                Cyber-Physical Engineering Informatics  Research Core, Okayama University
     
    
                Morooka, Ken'Ichi
                Division of Industrial Innovation Sciences,  Graduate School of Natural Science  and Technology, Okayama University
     
    
                Shirae, Haruto
                Division of Industrial Innovation Sciences,  Graduate School of Natural Science  and Technology, Okayama University
     
    
                Mizuno, Tomofumi
                Department of Cardiovascular Medicine,  Okayama University Graduate School of  Medicine, Dentistry, and Pharmaceutical  Sciences
     
    
                Masuda, Takuro
                Department of Cardiovascular Medicine,  Okayama University Graduate School of  Medicine, Dentistry, and Pharmaceutical  Sciences
     
    
                Ueoka, Akira
                Department of Cardiovascular Medicine,  Okayama University Graduate School of  Medicine, Dentistry, and Pharmaceutical  Sciences
     
    
                Asada, Saori
                Department of Cardiovascular Medicine,  Okayama University Graduate School of  Medicine, Dentistry, and Pharmaceutical  Sciences
     
    
                Miyamoto, Masakazu
                Department of Cardiovascular Medicine,  Okayama University Graduate School of  Medicine, Dentistry, and Pharmaceutical  Sciences
     
    
                    Ejiri, Kentaro
                Department of Cardiovascular Medicine,  Okayama University Graduate School of  Medicine, Dentistry, and Pharmaceutical  Sciences
                    ORCID 
                    publons 
                    researchmap 
     
    
                Kawada, Satoshi
                Department of Cardiovascular Medicine,  Okayama University Graduate School of  Medicine, Dentistry, and Pharmaceutical  Sciences
     
    
                Nakagawa, Koji
                Department of Cardiovascular Medicine,  Okayama University Graduate School of  Medicine, Dentistry, and Pharmaceutical  Sciences
     
    
                    Nakamura, Kazufumi
                Department of Cardiovascular Medicine,  Okayama University Graduate School of  Medicine, Dentistry, and Pharmaceutical  Sciences
                    Kaken ID 
                    publons 
                    researchmap 
     
    
                    Morita, Hiroshi
                Department of Cardiovascular  Therapeutics, Okayama University  Graduate School of Medicine, Dentistry,  and Pharmaceutical Sciences
                    ORCID 
                    Kaken ID 
                    publons 
                    researchmap 
     
    
                Yuasa, Shinsuke
                Department of Cardiovascular Medicine,  Okayama University Graduate School of  Medicine, Dentistry, and Pharmaceutical  Sciences
     
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| 抄録 | 	 Background: Remote monitoring (RM) of cardiac implantable electrical devices (CIEDs) can detect various events early. However, the diagnostic ability of CIEDs has not been sufficient, especially for lead failure. The first notification of lead failure was almost noise events, which were detected as arrhythmia by the CIED. A human must analyze the intracardiac electrogram to accurately detect lead failure. However, the number of arrhythmic events is too large for human analysis. Artificial intelligence (AI) seems to be helpful in the early and accurate detection of lead failure before human analysis. 
Objective: To test whether a neural network can be trained to precisely identify noise events in the intracardiac electrogram of RM data. Methods: We analyzed 21 918 RM data consisting of 12 925 and 1884 Medtronic and Boston Scientific data, respectively. Among these, 153 and 52 Medtronic and Boston Scientific data, respectively, were diagnosed as noise events by human analysis. In Medtronic, 306 events, including 153 noise events and randomly selected 153 out of 12 692 nonnoise events, were analyzed in a five-fold cross-validation with a convolutional neural network. The Boston Scientific data were analyzed similarly. Results: The precision rate, recall rate, F1 score, accuracy rate, and the area under the curve were 85.8 ± 4.0%, 91.6 ± 6.7%, 88.4 ± 2.0%, 88.0 ± 2.0%, and 0.958 ± 0.021 in Medtronic and 88.4 ± 12.8%, 81.0 ± 9.3%, 84.1 ± 8.3%, 84.2 ± 8.3% and 0.928 ± 0.041 in Boston Scientific. Five-fold cross-validation with a weighted loss function could increase the recall rate. Conclusions: AI can accurately detect noise events. AI analysis may be helpful for detecting lead failure events early and accurately.  | 
                
| キーワード |          artificial intelligence 
        five-fold cross-validation 
        intracardiac electrogram 
        noise event 
        remote monitoring 
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| 発行日 |          2024-04-11 
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| 出版物タイトル |      
            Journal of Arrhythmia
     
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| 巻 |          40巻 
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| 号 |          3号 
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| 出版者 |          Wiley 
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| 開始ページ |          560 
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| 終了ページ |          577 
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| ISSN |          1880-4276 
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| 資料タイプ |      
            学術雑誌論文
     
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| 言語 |      
            英語
     
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| OAI-PMH Set |      
            岡山大学
     
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| 著作権者 |          © 2024 The Authors.  
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| 論文のバージョン |          publisher 
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| PubMed ID | |
| DOI | |
| Web of Science KeyUT | |
| 関連URL |          isVersionOf https://doi.org/10.1002/joa3.13037 
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| ライセンス |          https://creativecommons.org/licenses/by/4.0/ 
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| Citation |          Nishii N, Baba K, Morooka K, Shirae H, Mizuno T, Masuda T, et al. Artificial intelligence to detect noise events in remote monitoring data. J Arrhythmia. 2024; 40: 560–577. https://doi.org/10.1002/joa3.13037 
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