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Cepstral separation difference: A novel approach for speech impairment quantification in Parkinson's disease

机译:倒谱分离差异:帕金森氏病语音障碍量化的新方法

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摘要

This paper introduces a novel approach, Cepstral Separation Difference (CSD), for quantification of speech impairment in Parkinson's disease (PD). CSD represents a ratio between the magnitudes of glottal (source) and supra-glottal (filter) log-spectrums acquired using the source-filter speech model. The CSD-based features were tested on a database consisting of 240 clinically rated running speech samples acquired from 60 PD patients and 20 healthy controls. The Guttmann ((a2) monotonic correlations between the CSD features and the speech symptom severity ratings were strong (up to 0.78). This correlation increased with the increasing textual difficulty in different speech tests. CSD was compared with some non-CSD speech features (harmonic ratio, harmonic-to-noise ratio and Mel-frequency cepstral coefficients) for speech symptom characterization in terms of consistency and reproduc-ibility. The high intra-class correlation coefficient (>0.9) and analysis of variance indicates that CSD features can be used reliably to distinguish between severity levels of speech impairment. Results motivate the use of CSD in monitoring speech symptoms in PD.
机译:本文介绍了一种新方法,倒谱分离差(CSD),用于量化帕金森氏病(PD)中的言语障碍。 CSD表示使用源过滤器语音模型获取的声门(源)和声门上(滤波器)对数谱的幅度之比。基于CSD的功能在数据库中进行了测试,该数据库包含从60名PD患者和20名健康对照中获得的240个经过临床评级的跑步语音样本。 CSD特征与语音症状严重性等级之间的Guttmann((a2)单调相关性很强(最高为0.78)。随着不同语音测试中文本难度的增加,这种相关性也增加了.CSD与某些非CSD语音特征进行了比较(一致性和可再现性方面用于语音症状表征的谐波比率,谐波噪声比和梅尔频率倒谱系数)。较高的类内相关系数(> 0.9)和方差分析表明,CSD特征可以可靠地用于区分语言障碍的严重程度。结果促使使用CSD监测PD的语音症状。

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