Dudik Joshua M, Kurosu Atsuko, Coyle James L, Sejdić Ervin
Department of Electrical and Computer Engineering, Swanson School of Engineering, University of Pittsburgh, 3700 O׳Hara Street, Pittsburgh, PA 15261, USA.
Department of Communication Science and Disorders, School of Health and Rehabilitation Sciences, University of Pittsburgh, 4028 Forbes Tower, Pittsburgh, PA 15260, USA.
Comput Biol Med. 2015 Apr;59:10-18. doi: 10.1016/j.compbiomed.2015.01.007. Epub 2015 Jan 17.
Cervical auscultation with high resolution sensors is currently under consideration as a method of automatically screening for specific swallowing abnormalities. To be clinically useful without human involvement, any devices based on cervical auscultation should be able to detect specified swallowing events in an automatic manner.
In this paper, we comparatively analyze the density-based spatial clustering of applications with noise algorithm (DBSCAN), a k-means based algorithm, and an algorithm based on quadratic variation as methods of differentiating periods of swallowing activity from periods of time without swallows. These algorithms utilized swallowing vibration data exclusively and compared the results to a gold standard measure of swallowing duration. Data was collected from 23 subjects that were actively suffering from swallowing difficulties.
Comparing the performance of the DBSCAN algorithm with a proven segmentation algorithm that utilizes k-means clustering demonstrated that the DBSCAN algorithm had a higher sensitivity and correctly segmented more swallows. Comparing its performance with a threshold-based algorithm that utilized the quadratic variation of the signal showed that the DBSCAN algorithm offered no direct increase in performance. However, it offered several other benefits including a faster run time and more consistent performance between patients. All algorithms showed noticeable differentiation from the endpoints provided by a videofluoroscopy examination as well as reduced sensitivity.
In summary, we showed that the DBSCAN algorithm is a viable method for detecting the occurrence of a swallowing event using cervical auscultation signals, but significant work must be done to improve its performance before it can be implemented in an unsupervised manner.
目前正在考虑使用高分辨率传感器进行颈部听诊,作为自动筛查特定吞咽异常的一种方法。为了在无需人工干预的情况下具有临床实用性,任何基于颈部听诊的设备都应能够自动检测特定的吞咽事件。
在本文中,我们比较分析了基于密度的带噪声应用空间聚类算法(DBSCAN)、一种基于k均值的算法以及一种基于二次变差的算法,将其作为区分吞咽活动期和无吞咽期的方法。这些算法仅利用吞咽振动数据,并将结果与吞咽持续时间的金标准测量值进行比较。数据收集自23名患有吞咽困难的受试者。
将DBSCAN算法的性能与一种经过验证的利用k均值聚类的分割算法进行比较,结果表明DBSCAN算法具有更高的灵敏度,能够正确分割出更多的吞咽动作。将其性能与一种利用信号二次变差的基于阈值的算法进行比较,结果表明DBSCAN算法在性能上没有直接提升。然而,它具有其他一些优点,包括运行时间更快以及患者之间的性能更一致。所有算法与视频荧光透视检查提供的端点相比都有明显差异,并且灵敏度降低。
总之,我们表明DBSCAN算法是一种使用颈部听诊信号检测吞咽事件发生的可行方法,但在能够以无监督方式实施之前,必须开展大量工作来提高其性能。