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Assessing progress of Parkinson's disease using acoustic analysis of phonation

机译:使用声学分析评估帕金森病的进展

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This paper deals with a complex acoustic analysis of phonation in patients with Parkinson's disease (PD) with a special focus on estimation of disease progress that is described by 7 different clinical scales (e. g. Unified Parkinson's disease rating scale or Beck depression inventory). The analysis is based on parametrization of 5 Czech vowels pronounced by 84 PD patients. Using classification and regression trees we estimated all clinical scores with maximal error lower or equal to 13 %. Best estimation was observed in the case of Mini-mental state examination (MAE = 0.77, estimation error 5.50 %). Finally, we proposed a binary classification based on random forests that is able to identify Parkinson's disease with sensitivity SEN = 92.86% (SPE = 85.71 %). The parametrization process was based on extraction of 107 speech features quantifying different clinical signs of hypokinetic dysarthria present in PD.
机译:本文对帕金森病(Pd)患者的复杂声学分析,特别关注7种不同的临床尺度描述的疾病进展(例如统一帕金森病评级规模或贝克抑郁症库存)。分析基于5捷克元宝的参数化,发音为84名PD患者。使用分类和回归树,我们估计了所有临床评分,最大误差较低或等于13%。在迷你精神状态检查(MAE = 0.77,估计误差5.50%)的情况下观察到最佳估计。最后,我们提出了基于随机森林的二元分类,能够鉴定敏感性敏感性敏感性胰蛋白酶= 92.86%(SPE = 85.71%)。参数化方法是基于107个语音特征的提取,该特征量化了Pd中存在的异动扰动性的不同临床迹象。

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