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A hybrid intelligent system for the prediction of Parkinson's Disease progression using machine learning techniques

机译:一种利用机器学习技术预测帕金森病进展的混合智能系统

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Parkinson's Disease (PD) is a progressive degenerative disease of the nervous system that affects movement control. Unified Parkinson's Disease Rating Scale (UPDRS) is the baseline assessment for PD. UPDRS is the most widely used standardized scale to assess parkinsonism. Discovering the relationship between speech signal properties and UPDRS scores is an important task in PD diagnosis. Supervised machine learning techniques have been extensively used in predicting PD through a set of datasets. However, the most methods developed by supervised methods do not support the incremental updates of data. In addition, the standard supervised techniques cannot be used in an incremental situation for disease prediction and therefore they require to recompute all the training data to build the prediction models. In this paper, we take the advantages of an incremental machine learning technique, Incremental support vector machine, to develop a new method for UPDRS prediction. We use Incremental support vector machine to predict Total-UPDRS and Motor-UPDRS. We also use Non-linear iterative partial least squares for data dimensionality reduction and self-organizing map for clustering task. To evaluate the method, we conduct several experiments with a PD dataset and present the results in comparison with the methods developed in the previous research. The prediction accuracies of method measured by MAE for the Total-UPDRSand Motor-UPDRS were obtained respectively MAE = 0.4656 and MAE = 0.4967. The results of experimental analysis demonstrated that the proposed method is effective in predicting UPDRS. The method has potential to be implemented as an intelligent system for PD prediction in healthcare. (C) 2017 Nalecz Institute of Biocybernetics and Biomedical Engineering of the Polish Academy of Sciences. Published by Elsevier B.V. All rights reserved.
机译:帕金森病(PD)是一种影响运动控制的神经系统的进步性退行性疾病。统一的帕金森病评级规模(UPDRS)是PD的基线评估。 updrs是评估帕金森主义的最广泛使用的标准化规模。发现语音信号属性和UPDRS分数之间的关系是PD诊断中的重要任务。监督机器学习技术已广泛用于通过一组数据集预测PD。但是,由监督方法开发的最多的方法不支持数据的增量更新。此外,标准监督技术不能用于疾病预测的增量情况,因此他们要求重新计算所有培训数据以构建预测模型。在本文中,我们采取了增量机学习技术,增量支持向量机的优势,为UPDRS预测开发了一种新方法。我们使用增量支持向量机来预测总updrs和电机updrs。我们还使用非线性迭代偏最小二乘来进行数据维度减少和用于聚类任务的自组织地图。为了评估该方法,我们通过PD数据集进行多个实验,并与先前研究中开发的方法相比呈现结果。通过MAE测量的方法测量的方法的预测精度分别获得MAE = 0.4656和MAE = 0.4967。实验分析结果表明,所提出的方法在预测UPDRS方面是有效的。该方法具有潜力作为医疗保健中PD预测的智能系统。 (c)2017年纳雷斯州纳雷斯省生物庭院研究所和波兰科学院生物医学工程。 elsevier b.v出版。保留所有权利。

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