首页> 外文期刊>Journal of voice: official journal of the Voice Foundation >A pattern recognition approach to spasmodic dysphonia and muscle tension dysphonia automatic classification.
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A pattern recognition approach to spasmodic dysphonia and muscle tension dysphonia automatic classification.

机译:一种模式识别方法,用于痉挛性运动障碍和肌肉紧张性运动障碍自动分类。

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摘要

Spasmodic dysphonia (SD) and muscle tension dysphonia (MTD) are two voice disorders that present similar characteristics. Usually, they can be differentiated only by experienced voice clinicians. There are many reasons that support the idea that SD is a neurological disease, requiring surgical treatments or, more usually, laryngeal botulinum toxin A injections as a therapeutic option. On the other hand, MTD is a functional disorder correctable with voice therapy. The importance of a correct diagnosis of these two disorders is critical at the treatment-selection moment. In this article, we present and compare the results of neural network and support vector machine-based methods that can help the clinicians to confirm their diagnosis. As a preliminary approach to the problem, we used only a sustained vowel /a/ to extract eight acoustic parameters. Then, a pattern recognition algorithm classifies the voice as normal, SD, or MTD. For comparison with previous works, we also separated the voices into normal and pathological (SD and MTD) voices with the methods proposed here. The results overcome the best classification rates between normal and pathological voices that have been previously reported, and demonstrate that our methods are very effective in distinguishing between MTD and SD.
机译:痉挛性发声障碍(SD)和肌张力性发声障碍(MTD)是表现出相似特征的两种声音障碍。通常,只有经验丰富的语音临床医生才能区分它们。有很多原因支持SD是神经系统疾病的观点,需要手术治疗,或更通常地,喉头肉毒杆菌毒素A注射作为治疗选择。另一方面,MTD是可以通过语音疗法纠正的功能性疾病。在选择治疗时,正确诊断这两种疾病的重要性至关重要。在本文中,我们介绍并比较了神经网络和基于支持向量机的方法的结果,这些方法可以帮助临床医生确认其诊断。作为解决该问题的初步方法,我们仅使用持续元音/ a /来提取八个声学参数。然后,模式识别算法将语音分类为正常,SD或MTD。为了与以前的作品进行比较,我们还使用此处提出的方法将声音分为正常和病理(SD和MTD)声音。结果克服了先前已报道的正常声音和病理声音之间的最佳分类率,并证明了我们的方法在区分MTD和SD方面非常有效。

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