首页> 外文期刊>Journal of voice: official journal of the Voice Foundation >Artificial neural network-based classification to screen for dysphonia using psychoacoustic scaling of acoustic voice features.
【24h】

Artificial neural network-based classification to screen for dysphonia using psychoacoustic scaling of acoustic voice features.

机译:基于神经网络的基于神经网络的分类,用于使用声音语音特征的心理声学缩放屏幕屏幕筛选。

获取原文
获取原文并翻译 | 示例
       

摘要

SUMMARY: For diagnosis and classification of dysphonia, voice specialists can choose from an array of diagnostic tools like perceptual tests or acoustic voice analysis. These methods have in common that they require a high level of specialized training and experience, and therefore are mostly reserved to specialized centers. We aimed at developing an acoustic voice analysis system that could be used as a screening device to monitor, document, and diagnose voice problems that are also encountered by non-voice specialists, such as anesthesiologists, head and neck surgeons, and general surgeons before surgery of the thyroid gland and the upper thoracic aperture. An acoustical feature extraction paradigm that focused on jitter, shimmer, standard deviation of fundamental frequency, and the glottal-to-noise excitation ratio was used to reanalyse 120 voice samples previously analyzed by Schonweiler et al (A Novel Approach to Acoustical Voice Analysis Using Artificial Neural Networks. JARO. 2000:1;270-282). An improved artificial neural network (ANN) was used for classification. Building on this preliminary work, we modified the mathematical algorithm to further improve classification accuracy. Eighty percent of all voice samples could be classified correctly as either healthy or hoarse (sensitivity: 63.0%; specificity: 93.9%; area under the curve: 0.854). The adaptation of the ANN-voice analysis system for mobile use may facilitate its use and acceptance by non-voice specialists for the discovery and documentation of preexisting voice disorders, and may thereby lead to a timely initiation of further diagnosis and therapy by voice specialists.
机译:摘要:对于障碍的诊断和分类,语音专家可以选择诊断工具,如感知测试或声音分析。这些方法共同认为它们需要高水平的专业培训和经验,因此主要是保留给专业中心。我们旨在开发一个声音分析系统,可以用作监控,文档和诊断非语音专家,如麻醉师,头部和颈部外科医生,以及手术前的一般外科医生遇到的语音问题甲状腺和上胸孔。一种声学特征提取范例,专注于抖动,闪光,基频的标准偏差,以及最引人注目的激励比以先前通过Schonweiler等人分析的重新分析120个语音样本(使用人工的新颖语音分析的新方法神经网络。Jaro。2000:1; 270-282)。改进的人工神经网络(ANN)用于分类。建立在这项初步工作中,我们修改了数学算法,进一步提高了分类准确性。百分之八十的所有语音样本可以正确地分类为健康或嘶哑(敏感性:63.0%;特异性:93.9%;曲线下的面积:0.854)。 Ann-语音分析系统的适应性用于移动用途可以通过非语音专家的使用和接受来促进对语音障碍的发现和记录的非语音专家,从而可以及时对语音专家进行进一步启动进一步的诊断和治疗。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号