Department of Electrical and Computer Engineering, Swanson School of Engineering, University of Pittsburgh, Pittsburgh, PA, USA.
Department of Communication Science and Disorders, School of Health and Rehabilitation Sciences, University of Pittsburgh, Pittsburgh, PA, USA.
Sci Rep. 2020 May 26;10(1):8704. doi: 10.1038/s41598-020-65492-1.
High resolution cervical auscultation is a very promising noninvasive method for dysphagia screening and aspiration detection, as it does not involve the use of harmful ionizing radiation approaches. Automatic extraction of swallowing events in cervical auscultation is a key step for swallowing analysis to be clinically effective. Using time-varying spectral estimation of swallowing signals and deep feed forward neural networks, we propose an automatic segmentation algorithm for swallowing accelerometry and sounds that works directly on the raw swallowing signals in an online fashion. The algorithm was validated qualitatively and quantitatively using the swallowing data collected from 248 patients, yielding over 3000 swallows manually labeled by experienced speech language pathologists. With a detection accuracy that exceeded 95%, the algorithm has shown superior performance in comparison to the existing algorithms and demonstrated its generalizability when tested over 76 completely unseen swallows from a different population. The proposed method is not only of great importance to any subsequent swallowing signal analysis steps, but also provides an evidence that such signals can capture the physiological signature of the swallowing process.
高分辨率颈听诊是一种很有前途的非侵入性吞咽困难筛查和误吸检测方法,因为它不涉及使用有害的电离辐射方法。在颈听诊中自动提取吞咽事件是使吞咽分析具有临床效果的关键步骤。我们使用吞咽信号的时变谱估计和深度前馈神经网络,提出了一种用于吞咽加速度计和声音的自动分割算法,该算法直接在原始吞咽信号上以在线方式工作。该算法使用 248 名患者收集的吞咽数据进行了定性和定量验证,经验丰富的言语语言病理学家对超过 3000 次吞咽进行了手动标记。该算法的检测准确率超过 95%,与现有算法相比表现出优异的性能,并在对来自不同人群的 76 次完全未见过的吞咽测试中表现出了通用性。该方法不仅对任何后续的吞咽信号分析步骤都非常重要,而且还证明了这些信号可以捕捉到吞咽过程的生理特征。