Voice analysis for detection of hoarseness due to a local anesthetic procedure

Yung-Chung Wei, H. Gholamhosseini, Andrew J. D. Cameron, M. Harrison, Ahmed A. Al-Jumaily
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引用次数: 2

Abstract

This paper employs voice analysis techniques to detect hoarseness occurring as a result of administration of local anesthetic for shoulder surgery. The patients in our study developed transient vocal cord dysfunction; however surgery and anesthesia can also cause permanent vocal cord paralysis, which is a significant clinical problem. Early detection is important to optimize the chance of repair, and to avoid complications associated with an impaired swallow. We have developed an algorithm to detect altered vocal cord function, which is based on Wavelet Packet Analysis (WPA) and Support Vector Machines (SVM). This method is compared to the Hoarseness Diagram method (HDm), which was reported as an objective voice quality evaluation approach and can be used for pathological voice discrimination. We believe that our algorithm is unique in that samples were obtained from the same patients before and after their surgery. Our experiments using voice signals recorded from subjects before and after the procedure show a high classification accuracy, whereas HDm fails in the detection of a hoarse voice.
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用于检测局部麻醉过程引起的声音嘶哑的声音分析
本文采用声音分析技术来检测由于肩部手术局部麻醉引起的声音嘶哑。本研究的患者出现一过性声带功能障碍;然而,手术和麻醉也可能导致永久性声带麻痹,这是一个重要的临床问题。早期发现对于优化修复机会和避免与吞咽受损相关的并发症非常重要。我们开发了一种基于小波包分析(WPA)和支持向量机(SVM)的声带功能检测算法。该方法与声嘶图法(HDm)进行了比较,后者是一种客观的语音质量评估方法,可用于病理语音识别。我们相信我们的算法是独一无二的,因为样本来自于手术前后的同一患者。我们使用实验对象在手术前后记录的语音信号进行的实验表明,HDm在检测沙哑声音时失败,而HDm在检测沙哑声音时失败。
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