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Parkinson's diagnosis using ant-lion optimisation algorithm

机译:帕金森使用抗狮优化算法的诊断

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Parkinson's disease (PD) is a long term progressive disorder of the central nervous system that mainly affects the movement of the body. But there are several limitations in detecting PD at an early stage. In this paper, a binary variant of the recently proposed ant-lion optimisation (ALO) algorithm has been proposed and implemented for diagnosing patients for Parkinson's disease at early stages. ALO is a recently proposed bio-inspired algorithm, which imitates the hunting patterns of ant-lions or doodlebugs proposed algorithm is used to find a minimum number of features that result in higher accuracy using machine learning classifiers. The proposed modified version of ALO extracts the optimal features for the two different Parkinson's Datasets with improved accuracy and computational time. The maximum accuracy achieved by the classifiers after optimal feature selection is 95.91%. The proposed algorithm results have been compared with other related algorithms for the same datasets.
机译:帕金森病(PD)是中枢神经系统的长期渐进障碍,主要影响身体的运动。 但是在早期检测PD有几个局限性。 在本文中,已经提出了最近提出的抗狮优化(ALO)算法的二元变体用于诊断早期阶段的患者帕金森病患者。 ALO是最近提出的生物启发算法,它模仿蚂蚁狮子或DooDlebugs的狩猎模式,建议算法用于找到使用机器学习分类器的更高精度的最小数量的特征。 建议的ALO修改版本提取两个不同的帕金森的数据集的最佳功能,具有改善的精度和计算时间。 最佳特征选择后分类器实现的最大精度为95.91%。 所提出的算法结果已经与相同数据集的其他相关算法进行了比较。

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