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Classification of speech intelligibility in Parkinson's disease

机译:帕金森氏病的语音清晰度分类

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摘要

A problem in the clinical assessment of running speech in Parkinson's disease (PD) is to track underlying deficits in a number of speech components including respiration, phona-tion, articulation and prosody, each of which disturbs the speech intelligibility. A set of 13 features, including the cepstral separation difference and Mel-frequency cepstral coefficients were computed to represent deficits in each individual speech component. These features were then used in training a support vector machine (SVM) using n-fold cross validation. The dataset used for method development and evaluation consisted of 240 running speech samples recorded from 60 PD patients and 20 healthy controls. These speech samples were clinically rated using the Unified Parkinson's Disease Rating Scale Motor Examination of Speech (UPDRS-S). The classification accuracy of SVM was 85% in 3 levels of UPDRS-S scale and 92% in 2 levels with the average area under the ROC (receiver operating characteristic) curves of around 91%. The strong classification ability of selected features and the SVM model supports suitability of this scheme to monitor speech symptoms in PD.
机译:在帕金森氏病(PD)中,对进行中的言语进行临床评估的一个问题是要跟踪包括呼吸,发声,发音和韵律在内的许多言语成分的潜在缺陷,这些缺陷都会干扰言语清晰度。计算了一组13个特征,包括倒谱间隔差和Mel频率倒谱系数,以表示每个语音成分的不足。然后将这些功能用于通过n折交叉验证训练支持向量机(SVM)。用于方法开发和评估的数据集包括从60名PD患者和20名健康对照中记录的240份运行语音样本。这些言语样本使用帕金森病疾病言语统一评定量表(UPDRS-S)进行临床评估。 SVM的分类精度在3个级别的UPDRS-S量表中为85%,在2个级别中为92%,ROC(接收器工作特性)曲线下的平均面积约为91%。所选功能的强大分类能力和SVM模型支持该方案适用于监视PD中的语音症状。

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