EXTRACTING CUES FROM SPEECH FOR PREDICTING SEVERITY OF PARKINSON'S DISEASE.

Meysam Asgari, Izhak Shafran
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引用次数: 35

Abstract

Speech pathologists often describe voice quality in hypokinetic dysarthria or Parkinsonism as harsh or breathy, which has been largely attributed to incomplete closure of vocal folds. Exploiting its harmonic nature, we separate voiced portion of the speech to obtain an objective estimate of this quality. The utility of the proposed approach was evaluated on predicting 116 clinical ratings of Parkinson's disease on 82 subjects. Our results show that the information extracted from speech, elicited through 3 tasks, can predict the motor subscore (range 0 to 108) of the clinical measure, the Unified Parkinson's Disease Rating Scale, within a mean absolute error of 5.7 and a standard deviation of about 2.0. While still preliminary, our results are significant and demonstrate that the proposed computational approach has promising real-world applications such as in home-based assessment or in telemonitoring of Parkinson's disease.

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从言语中提取线索预测帕金森病的严重程度。
语言病理学家通常将低动构音障碍或帕金森氏症患者的语音质量描述为刺耳或呼吸性,这主要归因于声带不完全闭合。利用语音的谐波特性,我们分离语音的浊音部分,以获得对语音质量的客观估计。在预测82名受试者的116个帕金森病临床评分时,对所提出方法的效用进行了评估。我们的研究结果表明,从语音中提取的信息,通过3个任务,可以预测临床测量,统一帕金森病评定量表的运动分值(范围0到108),平均绝对误差为5.7,标准差约为2.0。虽然还处于初步阶段,但我们的结果很重要,并证明了所提出的计算方法在现实世界中有很好的应用前景,例如在家庭评估或帕金森病的远程监测中。
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