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Automatic Classification and Monitoring of Denovo Parkinson’s Disease by Learning Demographic and Clinical Features

机译:通过学习人口统计和临床特征自动分类和监测Denovo帕金森氏病

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Parkinson’s Disease (PD) is the second most prevalent progressive neurological disorder around the world with high incidence rates for seniors. Since most symptoms are exposed in the later stages of the disease, early diagnosis of PD is essential for more effective treatment. The motivation of this research is early automatic assessment of PD using clinical information, not only for disease diagnosis but also for monitoring progression. After preprocessing the data, feature selection is done by the Mean Decrease Impurity (MDI) method. In the classification step, Random Forest (RF) is used as a classifier model for two tasks, including (1) classifying the subjects to PD and Healthy Control (HC), and (2) determining the disease severity level by Hoehn & Yahr (H&Y) scale. The clinical data used is taken from the Parkinson’s Progression Markers Initiative (PPMI) database, which is the most prominent source of data for PD. Experimental results show promising performance of the proposed model for assessment of PD by incorporating clinical properties.
机译:帕金森氏病(PD)是世界上第二大最普遍的进行性神经系统疾病,老年人的发病率很高。由于大多数症状都在疾病的晚期暴露出来,因此PD的早期诊断对于更有效的治疗至关重要。这项研究的动机是使用临床信息对PD进行早期自动评估,不仅用于疾病诊断,而且还用于监测进展。在对数据进行预处理之后,通过均值减少杂质(MDI)方法进行特征选择。在分类步骤中,随机森林(RF)用作两个任务的分类器模型,包括(1)将受试者分类为PD和健康对照(HC),以及(2)通过Hoehn&Yahr( H&Y)规模。所使用的临床数据来自帕金森氏症发展计划(PPMI)数据库,该数据库是PD的最主要数据来源。实验结果表明,通过结合临床特性,所提出的模型用于PD评估的性能令人鼓舞。

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