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Objedification of dysarthria in Parkinson's disease using Bayes theorem

机译:使用贝叶斯定理对帕金森病中的构音障碍进行客观化

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This paper presents an assessment of vocal impairment for separating healthy persons from patients with Parkinson's disease (PD). We have recently shown that deterioration of speech performances in PD speakers is notable from an early stage of the disease, even before starting pharmacotherapy. hi this study, we present the potential of the simple Bayes rule to reveal changes in degradable speech performance in the course of PD-related dysarthria. The various speech data were recorded from 23 speakers with recently diagnosed PD and 23 healthy speakers. It has been found that 19 various acoustic measurements are able to differentiate PD significantly from healthy speakers. Subsequently, the Bayes theorem was applied to each of these measurements. As a result, the 21 PD patients and 21 healthy people were correctly classified according to their group. The Bayes theorem thus confirms its feasibility for identifying the features of the impaired voice.
机译:本文提出了一种将人与帕金森氏病(PD)患者分开的声音障碍评估。我们最近发现,从PD疾病的早期开始,甚至在开始药物治疗之前,PD说话者的语音性能就会明显下降。在这项研究中,我们介绍了简单的贝叶斯规则揭示PD相关构音障碍过程中可降解语音性能变化的潜力。从23位最近诊断为PD的说话者和23位健康的说话者那里记录了各种语音数据。已经发现,有19种不同的声学测量能够将PD与健康的说话者区分开。随后,将贝叶斯定理应用于这些测量中的每一个。结果,根据他们的组正确分类了21名PD患者和21名健康人。因此,贝叶斯定理证实了其用于识别受损声音特征的可行性。

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