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Classification of Parkinsonian Rigidity Using AdaBoost with Decision Stumps

机译:使用Demanction Stumps使用Adaboost的Parkinsonian刚性分类

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Parkinson's disease (PD) is the second most frequent neurodegenerative disease. The clinical manifestations of PD mainly contain tremor, bradykinesia, rigidity, and loss of postural reflexes, in which rigidity responds immediately upon PD treatment. Currently, the Parkinsonian rigidity assessment depends mostly upon subjective judgment of neurologists in accordance with their experience, which shows low consistency among different evaluators. Currently, few works have been done for Parkinson's rigidity estimation, and the existing work does not achieve strong evaluation performance. In this paper, we designed an electromechanical driving device to obtain the parameters correlated well with the rigidity symptom. Using these parameters as inputs, we employed the AdaBoost algorithm to score the rigidity severity objectively. In the multiclass classification model, decision stumps were used as weak classifiers to provide decision rules for classification. By combining handling of noise, the AdaBoost model shows great robustness (classification accuracy of IO-fold cross-validation: 99.609%). Compared with KNN and LIBSVM methods, the proposed model could achieve superior classification accuracy (classification accuracy: 97.097%), better stability (at least 57.807% higher than KNN), and more reasonable computational time (2.72 times faster than LIBSVM).
机译:帕金森病(PD)是第二次常见的神经变性疾病。 PD的临床表现主要含有震颤,布拉德尼,刚性和损伤的姿势反射,在这种情况下,刚性在PD处理时立即响应。目前,Parkinsonian刚性评估主要取决于根据其经验的神经根学家的主观判断,这在不同评估人员之间显示出低一致性。目前,帕金森的刚性估计已经完成了很少的作品,并且现有的工作无法实现强烈的评估绩效。在本文中,我们设计了一种机电驱动装置,以获得具有刚性症状的参数良好的参数。使用这些参数作为输入,我们使用Adaboost算法客观地进行刚性严重性。在多款分类模型中,使用决策树桩作为弱分类器,以提供分类的决策规则。通过组合噪声处理,Adaboost模型显示出巨大的鲁棒性(IO-Fold交叉验证的分类准确性:99.609 %)。与KNN和LIBSVM方法相比,所提出的模型可以实现卓越的分类精度(分类准确度:97.097 %),更好的稳定性(比KNN高至少57.807 %),更合理的计算时间(比Libsvs速度快2.72倍)。

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