JSAI2022

Presentation information

General Session

General Session » GS-10 AI application

[1F5-GS-10] AI application: anomaly detection 1

Tue. Jun 14, 2022 4:20 PM - 6:00 PM Room F (Room F)

座長:森 隼基(NEC)[現地]

4:40 PM - 5:00 PM

[1F5-GS-10-02] Detection of abnormal respiration using frequency-domain based LSTM

○Koshiro Okumoto1, Haruka Horiuchi1, Kohei Yoshida 1, Masashi Kobayashi2,3, Yasuhiro Nakashima2,4, Katsutoshi Seto2, Yohei Wada5, Koji Yataka5, Takaaki Sugino1, Katsunori Suzuki5, Kenichi Okubo2, Yoshikazu Nakajima1 (1. Institute of Biomaterials and Bioengineering, Tokyo Medical and Dental University, 2. Department of Thoracic Surgery, Tokyo Medical and Dental University, 3. Department of Thoracic Surgery, Kurashiki Central Hospital, 4. Department of Thoracic Surgery, Tokyo Kyosai Hospital, 5. Research & Development Division, Technology Unit, Yamaha Corporation)

[[オンライン]]

Keywords:Respiratory monitoring, Wavelet transform, Convolutional LSTM

Monitoring of respiratory status, which is an important vital sign, is essential for perioperative management. It has become increasingly important in recent years due to the spread of COVID-19 infection. To automate the respiratory monitoring, we have measured and analyzed the movement of thorax as a respiratory signal using a displacement sensor. In this study, we used Convolutional LSTM to discriminate normal and abnormal respiration based on temporal changes in frequency components obtained by complex wavelet transform. To improve the accuracy, we focused on signal preprocessing and network structure. We verified the usefulness of a network structure that combines quantization to reduce the number of patterns to be learned, blocking to determine the appropriate length of data for each learning iteration, and templating patterns by convolutional layers. In our experiment, the proposed method achieved high precision and recall of (99.8%, 99.6%) for normal respiration and (97.7%, 99.1%) for abnormal respiration.

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