DOAJ Open Access 2025

Detection of Polyphonic Alarm Sounds From Medical Devices Using Frequency-Enhanced Deep Learning: Simulation Study

Kazumasa Kishimoto Tadamasa Takemura Osamu Sugiyama Ryosuke Kojima Masahiro Yakami +2 lainnya

Abstrak

Abstract BackgroundAlthough an increasing number of bedside medical devices are equipped with wireless connections for reliable notifications, many nonnetworked devices remain effective at detecting abnormal patient conditions and alerting medical staff through auditory alarms. Staff members, however, can miss these notifications, especially when in distant areas or other private rooms. In contrast, the signal-to-noise ratio of alarm systems for medical devices in the neonatal intensive care unit is 0 dB or higher. A feasible system for automatic sound identification with high accuracy is needed to prevent alarm sounds from being missed by the staff. ObjectiveThe purpose of this study was to design a method for classifying multiple alarm sounds collected with a monaural microphone in a noisy environment. MethodsFeatures of 7 alarm sounds were extracted using a mel filter bank and incorporated into a classifier using convolutional and recurrent neural networks. To estimate its clinical usefulness, the classifier was evaluated with mixtures of up to 7 alarm sounds and hospital ward noise. ResultsThe proposed convolutional recurrent neural network model was evaluated using a simulation dataset of 7 alarm sounds mixed with hospital ward noise. At a signal-to-noise ratio of 0 dB, the best-performing model (convolutional neural network 3+bidirectional gate recurrent unit) achieved an event-based F1 ConclusionsThe proposed classifier was found to be highly accurate in detecting alarm sounds. Although the performance of the proposed classifier in a clinical environment can be improved, the classifier could be incorporated into an alarm sound detection system. The classifier, combined with network connectivity, could improve the notification of abnormal status detected by unconnected medical devices.

Penulis (7)

K

Kazumasa Kishimoto

T

Tadamasa Takemura

O

Osamu Sugiyama

R

Ryosuke Kojima

M

Masahiro Yakami

G

Goshiro Yamamoto

T

Tomohiro Kuroda

Format Sitasi

Kishimoto, K., Takemura, T., Sugiyama, O., Kojima, R., Yakami, M., Yamamoto, G. et al. (2025). Detection of Polyphonic Alarm Sounds From Medical Devices Using Frequency-Enhanced Deep Learning: Simulation Study. https://doi.org/10.2196/35987

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Informasi Jurnal
Tahun Terbit
2025
Sumber Database
DOAJ
DOI
10.2196/35987
Akses
Open Access ✓