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Genetic algorithm based feature selection on diagnosis of Parkinson disease via vocal analysis

机译:基于遗传算法的遗传算法通过声乐分析诊断帕金森病的诊断

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Parkinson's disease is a neurological disorder that affects the quality of life of a patient adversely, especially in elder people. Parkinson's disease first manifests itself as slowness, imbalance and trembling in motor movements. There are many methods such as gait analysis and voice analysis for diagnosis of the disease. In this study, genetic algorithm based feature selection method is proposed for the voice analysis that one of the methods used in the diagnosis of Parkinson's disease. Classification success rates of selected attributes are calculated by SVM classification algorithm and validated by LOOCV method. The classification success rate of the proposed method was compared with previous studies using the same classification and validation method. As a result of the comparison, more successful results were obtained than those using SVM classification and LOOCV validation methods.
机译:帕金森病是一种神经系统疾病,其对患者的生活质量不利影响,特别是在老年人身上。帕金森的疾病首先表现出在电机运动中的缓慢,不平衡和颤抖。有许多方法,例如步态分析和语音分析,用于诊断疾病。在该研究中,提出了基于遗传算法的特征选择方法,用于语音分析,即帕金森病的诊断中使用的方法之一。 SVM分类算法计算所选属性的分类成功率,并通过LooCV方法验证。将所提出的方法的分类成功率与使用相同分类和验证方法的先前研究进行了比较。由于比较,获得了比使用SVM分类和LooOCV验证方法的结果的成功结果。

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