Literature DB >> 25545324

A novel automated detection system for swallowing sounds during eating and speech under everyday conditions.

C Fukuike1, N Kodama, Y Manda, Y Hashimoto, K Sugimoto, A Hirata, Q Pan, N Maeda, S Minagi.   

Abstract

The wave analysis of swallowing sounds has been receiving attention because the recording process is easy and non-invasive. However, up until now, an expert has been needed to visually examine the entire recorded wave to distinguish swallowing from other sounds. The purpose of this study was to establish a methodology to automatically distinguish the sound of swallowing from sound data recorded during a meal in the presence of everyday ambient sound. Seven healthy participants (mean age: 26·7 ± 1·3 years) participated in this study. A laryngeal microphone and a condenser microphone attached to the nostril were used for simultaneous recording. Recoding took place while participants were taking a meal and talking with a conversational partner. Participants were instructed to step on a foot pedal trigger switch when they swallowed, representing self-enumeration of swallowing, and also to achieve six additional noise-making tasks during the meal in a randomised manner. The automated analysis system correctly detected 342 out of the 352 self-enumerated swallowing events (sensitivity: 97·2%) and 479 out of the 503 semblable wave periods of swallowing (specificity: 95·2%). In this study, the automated detection system for swallowing sounds using a nostril microphone was able to detect the swallowing event with high sensitivity and specificity even under the conditions of daily life, thus showing potential utility in the diagnosis or screening of dysphagic patients in future studies.
© 2014 John Wiley & Sons Ltd.

Entities:  

Keywords:  automated detection system; dysphagia; laryngeal microphone; nostril sound; screening test; swallowing event

Mesh:

Year:  2014        PMID: 25545324     DOI: 10.1111/joor.12264

Source DB:  PubMed          Journal:  J Oral Rehabil        ISSN: 0305-182X            Impact factor:   3.837


  4 in total

1.  Automatic food detection in egocentric images using artificial intelligence technology.

Authors:  Wenyan Jia; Yuecheng Li; Ruowei Qu; Thomas Baranowski; Lora E Burke; Hong Zhang; Yicheng Bai; Juliet M Mancino; Guizhi Xu; Zhi-Hong Mao; Mingui Sun
Journal:  Public Health Nutr       Date:  2018-03-26       Impact factor: 4.022

2.  Food/Non-Food Classification of Real-Life Egocentric Images in Low- and Middle-Income Countries Based on Image Tagging Features.

Authors:  Guangzong Chen; Wenyan Jia; Yifan Zhao; Zhi-Hong Mao; Benny Lo; Alex K Anderson; Gary Frost; Modou L Jobarteh; Megan A McCrory; Edward Sazonov; Matilda Steiner-Asiedu; Richard S Ansong; Thomas Baranowski; Lora Burke; Mingui Sun
Journal:  Front Artif Intell       Date:  2021-04-01

3.  High-Resolution Cervical Auscultation Signal Features Reflect Vertical and Horizontal Displacements of the Hyoid Bone During Swallowing.

Authors:  Cedrine Rebrion; Zhenwei Zhang; Yassin Khalifa; Mona Ramadan; Atsuko Kurosu; James L Coyle; Subashan Perera; Ervin Sejdic
Journal:  IEEE J Transl Eng Health Med       Date:  2018-12-24

4.  Automatic Detection and Analysis of Swallowing Sounds in Healthy Subjects and in Patients with Pharyngolaryngeal Cancer.

Authors:  P Rayneau; R Bouteloup; C Rouf; P Makris; S Moriniere
Journal:  Dysphagia       Date:  2021-01-02       Impact factor: 2.733

  4 in total

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