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  1. 研究報告
  2. モバイルコンピューティングと新社会システム(MBL)
  3. 2022
  4. 2022-MBL-103

Unsupervised Learning-based Non-invasive Fetal ECG Signal Quality Assessment

https://ipsj.ixsq.nii.ac.jp/records/217997
https://ipsj.ixsq.nii.ac.jp/records/217997
3a483c98-bd11-4de1-ab20-9b3b4bd657d1
名前 / ファイル ライセンス アクション
IPSJ-MBL22103010.pdf IPSJ-MBL22103010.pdf (1.4 MB)
Copyright (c) 2022 by the Institute of Electronics, Information and Communication Engineers This SIG report is only available to those in membership of the SIG.
MBL:会員:¥0, DLIB:会員:¥0
Item type SIG Technical Reports(1)
公開日 2022-05-19
タイトル
タイトル Unsupervised Learning-based Non-invasive Fetal ECG Signal Quality Assessment
言語
言語 eng
キーワード
主題Scheme Other
主題 医療・健康・生活支援
資源タイプ
資源タイプ識別子 http://purl.org/coar/resource_type/c_18gh
資源タイプ technical report
著者所属
Department of Information and Computer Science Keio University
著者所属
Department of Information and Computer Science Keio University
著者所属
Department of Information and Computer Science Keio University
著者所属
Research & Development Group Technical Department Atom Medical Co. Ltd,
著者所属
Research & Development Group Technical Department Atom Medical Co. Ltd,
著者所属(英)
en
Department of Information and Computer Science Keio University
著者所属(英)
en
Department of Information and Computer Science Keio University
著者所属(英)
en
Department of Information and Computer Science Keio University
著者所属(英)
en
Research & Development Group Technical Department Atom Medical Co. Ltd,
著者所属(英)
en
Research & Development Group Technical Department Atom Medical Co. Ltd,
著者名 Xintong, Shi

× Xintong, Shi

Xintong, Shi

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Kohei, Yamamoto

× Kohei, Yamamoto

Kohei, Yamamoto

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Tomoaki, Ohtsuki

× Tomoaki, Ohtsuki

Tomoaki, Ohtsuki

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Yutaka, Matsui

× Yutaka, Matsui

Yutaka, Matsui

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Kazunari, Owada

× Kazunari, Owada

Kazunari, Owada

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著者名(英) Xintong, Shi

× Xintong, Shi

en Xintong, Shi

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Kohei, Yamamoto

× Kohei, Yamamoto

en Kohei, Yamamoto

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Tomoaki, Ohtsuki

× Tomoaki, Ohtsuki

en Tomoaki, Ohtsuki

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Yutaka, Matsui

× Yutaka, Matsui

en Yutaka, Matsui

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Kazunari, Owada

× Kazunari, Owada

en Kazunari, Owada

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論文抄録
内容記述タイプ Other
内容記述 For fetal heart rate (FHR) monitoring, the non-invasive fetal electrocardiogram (FECG) obtained from abdomen surface electrodes has been widely employed. The accuracy of FECG-based FHR estimation, on the other hand, is highly dependent on the quality of the FECG signals, which can be influenced by a variety of interference sources, including maternal cardiac activities and fetal movements. Thus, FECG signal quality assessment (SQA) is a critical task in improving FHR estimation accuracy by eliminating or interpolating FHRs estimated from low-quality FECG signals. Various SQA approaches based on supervised learning have been proposed in recent studies. These approaches are capable of accurate SQA, however, they require big datasets with annotations. Nevertheless, the annotated datasets for the FECG SQA are extremely limited. In this research, to deal with this problem, we introduce an unsupervised learning-based SQA approach for identifying high and low-quality FECG signal segments. Some features associated with signal quality are extracted, including four entropy-based features, three statistical features, and four ECG signal quality indices (SQIs). In addition to these features, we introduce an autoencoder (AE)-based feature, which is based on reconstruction error of AE that reconstructs spectrograms obtained from FECG signal segments. The collected features are then input into the self-organizing map (SOM) to classify the high and low-quality FECG segments. The experimental results indicated that our approach classified high and low-quality signals with a 98% accuracy.
論文抄録(英)
内容記述タイプ Other
内容記述 For fetal heart rate (FHR) monitoring, the non-invasive fetal electrocardiogram (FECG) obtained from abdomen surface electrodes has been widely employed. The accuracy of FECG-based FHR estimation, on the other hand, is highly dependent on the quality of the FECG signals, which can be influenced by a variety of interference sources, including maternal cardiac activities and fetal movements. Thus, FECG signal quality assessment (SQA) is a critical task in improving FHR estimation accuracy by eliminating or interpolating FHRs estimated from low-quality FECG signals. Various SQA approaches based on supervised learning have been proposed in recent studies. These approaches are capable of accurate SQA, however, they require big datasets with annotations. Nevertheless, the annotated datasets for the FECG SQA are extremely limited. In this research, to deal with this problem, we introduce an unsupervised learning-based SQA approach for identifying high and low-quality FECG signal segments. Some features associated with signal quality are extracted, including four entropy-based features, three statistical features, and four ECG signal quality indices (SQIs). In addition to these features, we introduce an autoencoder (AE)-based feature, which is based on reconstruction error of AE that reconstructs spectrograms obtained from FECG signal segments. The collected features are then input into the self-organizing map (SOM) to classify the high and low-quality FECG segments. The experimental results indicated that our approach classified high and low-quality signals with a 98% accuracy.
書誌レコードID
収録物識別子タイプ NCID
収録物識別子 AA11851388
書誌情報 研究報告モバイルコンピューティングと新社会システム(MBL)

巻 2022-MBL-103, 号 10, p. 1-5, 発行日 2022-05-19
ISSN
収録物識別子タイプ ISSN
収録物識別子 2188-8817
Notice
SIG Technical Reports are nonrefereed and hence may later appear in any journals, conferences, symposia, etc.
出版者
言語 ja
出版者 情報処理学会
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