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Cervical auscultation for the identification of swallowing difficulties.

机译:宫颈听诊可用于确定吞咽困难。

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摘要

Swallowing diffculties, commonly referred to as dysphagia, affect thousands of Americans every year. They have a multitude of causes, but in general they are known to increase the risk of aspiration when swallowing in addition to other physiological effects. Cervical auscultation has been recently applied to detect such diffculties non-invasively and various techniques for analysis and processing of the recorded signals have been proposed. We attempted to further this research in three key areas. First, we characterized swallows with regards to a multitude of time, frequency, and time-frequency features while paying special attention to the differences between swallows from healthy adults and safe dysphagic swallows as well as safe and unsafe dysphagic swallows. Second, we attempted to utilize deep belief networks in order to classify these states automatically and without the aid of a concurrent video uoroscopic examination. Finally, we sought to improve some of the signal processing techniques used in this field. We both implemented the DBSCAN algorithm to better segment our physiological signals as well as applied the matched complex wavelet transform to cervical auscultation data in order to improve its quality for mathematical analysis.;Keywords: cervical auscultation, dysphagia, deep learning, signal analysis, signal features, classification.
机译:吞咽困难通常被称为吞咽困难,每年影响成千上万的美国人。它们有多种病因,但通常来说,除了其他生理作用外,它们还会增加吞咽时误吸的风险。宫颈听诊最近已被应用到非侵入性地检测这种困难,并且已经提出了用于分析和处理所记录的信号的各种技术。我们试图在三个关键领域进行进一步的研究。首先,我们对燕子的时间,频率和时频特征进行了分类,同时要特别注意健康成年人的燕子与安全吞咽困难的燕子以及安全与不安全吞咽困难的燕子之间的差异。其次,我们尝试利用深度置信网络来自动对这些状态进行分类,而无需借助并发视频显微镜检查。最后,我们寻求改进该领域中使用的某些信号处理技术。我们都实现了DBSCAN算法以更好地分割我们的生理信号,并将匹配的复杂小波变换应用于宫颈听诊数据,以提高其数学分析的质量。;关键词:宫颈听诊,吞咽困难,深度学习,信号分析,信号功能,分类。

著录项

  • 作者

    Dudik, Joshua M.;

  • 作者单位

    University of Pittsburgh.;

  • 授予单位 University of Pittsburgh.;
  • 学科 Electrical engineering.;Biomedical engineering.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 147 p.
  • 总页数 147
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:52:22

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