Department of Electrical and Computer Engineering, University of Pittsburgh, Pittsburgh, PA 15213, USA.
IEEE Trans Biomed Eng. 2013 Jul;60(7):1859-66. doi: 10.1109/TBME.2013.2243730. Epub 2013 Jan 30.
Swallowing accelerometry is a promising noninvasive approach for the detection of swallowing difficulties. In this paper, we propose an approach for classification of swallowing accelerometry recordings containing either healthy swallows or penetration-aspiration (entry of material into the airway) in dysphagic patients. The proposed algorithm is based on the wavelet packet decomposition of swallowing accelerometry signals in combination with linear discriminant analysis as a feature reduction method and Bayes classification. The proposed algorithm was tested using swallowing accelerometry signals collected from 40 patients during the regularly scheduled videoflouroscopy exam. The participants were instructed to swallow several 5-mL sips of thin liquid barium in a head neutral position. The results of our numerical analysis showed that the proposed algorithm can differentiate healthy swallows from aspiration swallows with an accuracy greater than 90%. These results position swallowing accelerometry as a valid approach for the detection of swallowing difficulties, particularly penetration-aspiration in patients suspected of dysphagia.
吞咽加速计是一种有前途的非侵入性方法,可用于检测吞咽困难。在本文中,我们提出了一种用于分类吞咽加速计记录的方法,这些记录包含健康吞咽或吞咽困难患者的渗透-吸入(物质进入气道)。所提出的算法基于吞咽加速计信号的小波包分解,结合线性判别分析作为特征降维方法和贝叶斯分类。该算法使用在常规视频荧光检查期间从 40 名患者收集的吞咽加速计信号进行了测试。参与者被指示在头部中立位置吞咽几口 5 毫升的稀薄钡液。我们的数值分析结果表明,该算法可以将健康吞咽与吸入吞咽区分开来,准确率超过 90%。这些结果表明,吞咽加速计是一种有效的吞咽困难检测方法,特别是对疑似吞咽困难的患者的渗透-吸入检测。