Fukuike C, Kodama N, Manda Y, Hashimoto Y, Sugimoto K, Hirata A, Pan Q, Maeda N, Minagi S
Department of Occlusal and Oral Functional Rehabilitation, Graduate School of Medicine, Dentistry and Pharmaceutical Sciences, Okayama University, Okayama, Japan.
J Oral Rehabil. 2015 May;42(5):340-7. doi: 10.1111/joor.12264. Epub 2014 Dec 26.
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.
吞咽声音的波形分析因其记录过程简便且无创而受到关注。然而,到目前为止,需要专家通过肉眼检查整个记录波形,以区分吞咽声与其他声音。本研究的目的是建立一种方法,能够在日常环境声音存在的情况下,从进餐期间记录的声音数据中自动区分吞咽声。七名健康参与者(平均年龄:26.7±1.3岁)参与了本研究。使用喉部麦克风和连接在鼻孔上的电容式麦克风进行同步记录。记录在参与者进餐并与对话伙伴交谈时进行。参与者被要求在吞咽时踩下脚踏触发开关,这代表了对吞咽的自我计数,并且在进餐期间还要以随机方式完成另外六项制造噪音的任务。自动分析系统在352次自我计数的吞咽事件中正确检测出342次(敏感性:97.2%),在503个类似吞咽波形周期中正确检测出479次(特异性:95.2%)。在本研究中,使用鼻孔麦克风的吞咽声音自动检测系统即使在日常生活条件下也能以高敏感性和特异性检测到吞咽事件,从而在未来研究中显示出在吞咽困难患者诊断或筛查中的潜在效用。