Golabbakhsh Marzieh, Rajaei Ali, Derakhshan Mahmoud, Sadri Saeed, Taheri Masoud, Adibi Peyman
Medical Image and Signal Processing Research Center, Isfahan University of Medical Sciences, Hezarjarib Street, 81745-319, Isfahan, Iran,
Dysphagia. 2014 Oct;29(5):572-7. doi: 10.1007/s00455-014-9547-4. Epub 2014 Jun 24.
Acoustic monitoring of swallow frequency has become important as the frequency of spontaneous swallowing can be an index for dysphagia and related complications. In addition, it can be employed as an objective quantification of ingestive behavior. Commonly, swallowing complications are manually detected using videofluoroscopy recordings, which require expensive equipment and exposure to radiation. In this study, a noninvasive automated technique is proposed that uses breath and swallowing recordings obtained via a microphone located over the laryngopharynx. Nonlinear diffusion filters were used in which a scale-space decomposition of recorded sound at different levels extract swallows from breath sounds and artifacts. This technique was compared to manual detection of swallows using acoustic signals on a sample of 34 subjects with Parkinson's disease. A speech language pathologist identified five subjects who showed aspiration during the videofluoroscopic swallowing study. The proposed automated method identified swallows with a sensitivity of 86.67 %, a specificity of 77.50 %, and an accuracy of 82.35 %. These results indicate the validity of automated acoustic recognition of swallowing as a fast and efficient approach to objectively estimate spontaneous swallow frequency.
对吞咽频率进行声学监测变得越来越重要,因为自发吞咽频率可以作为吞咽困难及相关并发症的一个指标。此外,它还可以用于对摄食行为进行客观量化。通常,吞咽并发症是通过视频荧光透视记录手动检测的,这需要昂贵的设备且会受到辐射。在本研究中,提出了一种非侵入性自动技术,该技术使用通过放置在喉咽上方的麦克风获得的呼吸和吞咽记录。使用了非线性扩散滤波器,其中在不同级别对记录声音进行尺度空间分解,从呼吸声和伪影中提取吞咽声。将该技术与在34名帕金森病患者样本上使用声学信号手动检测吞咽的方法进行了比较。一名言语病理学家在视频荧光透视吞咽研究中确定了5名有误吸的受试者。所提出的自动方法识别吞咽的灵敏度为86.67%,特异性为77.50%,准确率为82.35%。这些结果表明,自动声学识别吞咽作为一种快速有效的方法来客观估计自发吞咽频率是有效的。