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Feature selection in Parkinson's disease: A rough sets approach

机译:帕金森氏病的特征选择:粗糙集方法

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Parkinson's disease is a neurodegenerative disorder with a long time course and a significant prevalence, which increases significantly with age. Although the etiology is currently unknown, the disease presents with neurodegeneration of regions of the basal ganglia. the onset occurs later in life, and the disease progresses slowly. The disease is diagnosed clinically, requiring the identification of several factors such as distal resting tremor, rigidity, and bradykinesia. The common thread throughout the range of symptoms is motor dysfunction, and recent reports have focused on dysphonia, the impairment in voice production as a diagnostic measure. In this paper, a number of features associated with speech have been collected through clinical studies from both healthy and people with Parkinson's (PWP) and analysed in order to determine if one or more of them can be used to diagnose PWP. The feature set is analysed using the rough sets paradigm, which maps feature vectors associated with objects onto decision classes. The results from applying rough sets is a set of rules that map features via rules into a decision support system - performing classification of objects. the results FOM this study indicate that a subset of typical voice derived features is adequate to differentiate healthy from PWP with 100% accuracy. These result are important in that they imply that a diagnosis can be automated and performed remotely. This work will be extended to determine if this approach can be utilised with the same effectiveness for the diagnosis of parkinsonism disorders - a collection-diseases with Parkinson's like symptoms.
机译:帕金森氏病是一种神经退行性疾病,病程长,患病率高,会随着年龄的增长而显着增加。尽管病因目前尚不清楚,但该疾病表现为基底神经节区域神经变性。发病发生在生命的后期,疾病进展缓慢。该疾病在临床上得到了诊断,需要确定几个因素,例如远端静息性震颤,僵硬和运动迟缓。整个症状范围的共同点是运动功能障碍,最近的报道集中在发声障碍,即声音产生的障碍作为诊断手段。在本文中,通过临床研究从健康人和帕金森氏症(PWP)人群中收集了许多与语音相关的特征,并进行了分析,以确定它们中的一个或多个可用于诊断PWP。使用粗糙集范式分析特征集,粗糙集范式将与对象关联的特征向量映射到决策类上。应用粗糙集的结果是一组规则,这些规则通过规则将要素映射到决策支持系统中-执行对象分类。结果FOM这项研究表明,典型的语音衍生特征子集足以以100%的准确度将健康人群与PWP人群区分开。这些结果很重要,因为它们暗示诊断可以自动化并可以远程执行。这项工作将继续进行,以确定这种方法是否可以用于诊断帕金森氏病(具有帕金森氏症状)的疾病。

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