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Hilbert spectrum analysis for automatic detection and evaluation of Parkinson's speech

机译:Hilbert Spectrum分析,用于自动检测和评估帕金森言论

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Parkinson's disease (PD) is a progressive neurological disorder that mainly affects people in old age. Abnormality in the speech signals has been reported as a biomarker to detect PD. This study explores the use of Hilbert spectrum (HS) based features to model voice impairments in people affected by PD. The instantaneous energy deviation cepstral coefficient (IEDCC) is proposed. Statistical analyses show that the proposed feature is an effective and relevant biomarker for PD detection and evaluation of the dysarthria level in speech affected by PD. The capability of the proposed features to differentiate between PD and healthy people is evaluated upon five sustained vowels and ten isolated words from the standard PC-GITA database. The average accuracy of the proposed approach ranges from 82 % to 90 % with vowels, whereas for words the average accuracy ranges between 80 % and 91 %. Besides PD detection, the dysarthria level is evaluated according to the m-FDA scale. Spearman's correlation coefficients (rho) are computed between the estimated m-FDA values and the original scores. Correlations of up to 0.75 are obtained with vowel/o/, while 0.77 is the highest correlation obtained with the word/reina/. The developed models are further validated with a separate and independent dataset. The classification accuracy in these additional recordings ranges between 50 % and 80 % with vowels and from 50 % to 82 % with words. The promising results obtained on the additional test set indicate that the proposed method is suitable to perform the automatic detection of PD speakers in real-world conditions. (C) 2020 Published by Elsevier Ltd.
机译:帕金森病(PD)是一种主要的神经疾病,主要影响老年人。语音信号中的异常已被报告为生物标志物以检测PD。本研究探讨了基于Hilbert Spectrum(HS)的特征来模拟受Pd影响的人们的语音障碍。提出了瞬时能量偏离抗康尔峰系数(IEDCC)。统计分析表明,该特征是一种有效和相关的生物标志物,可用于PD检测和受Pd语音中的讨厌水平的评估。在标准PC-GITA数据库中的五个持续元音和十个孤立的五个持续的元音和十个孤立的单词中评估了拟议特征的能力。拟议方法的平均精度范围为元音的82%至90%,而用于单词的平均精度范围在80%和91%之间。除PD检测外,根据M-FDA规模评估讨厌水平。 Spearman的相关系数(RHO)在估计的M-FDA值和原始分数之间计算。用元音/ o /获得高达0.75的相关性,而0.77是用单词/ reina /的最高相关性。开发的模型进一步用单独和独立的数据集进行验证。这些额外录音中的分类准确性在50%至80%之间,元音和50%到82%。在附加测试集上获得的有希望的结果表明所提出的方法适用于在现实世界条件下进行PD扬声器的自动检测。 (c)2020由elestvier有限公司发布

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