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Machine learning can detect the presence of Mild cognitive impairment in patients affected by Parkinson’s Disease

机译:机器学习可以检测出患有帕金森氏病的患者是否存在轻度认知障碍

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Parkinson Disease (PD) consists in a progressive, neurodegenerative disorder whose clinically characteristic is a combination of several motor and non-motor symptoms. Recently, the construct of Mild Cognitive Impairment (MCI), originally conceptualized to identify the pre-dementia state in Alzheimer Disease, has been employed in PD to describe a frame of cognitive decline without impaired functional activity. The aim of this study was to differentiate PD patients with and without MCI using quantitative gait variables through a machine learning approach. Thus, 45 PD patients underwent gait analysis and spatial-temporal parameters were acquired in three different conditions (normal gait, motor dual-task and cognitive dual-task). While the demographic and clinical features of PD patients with and without MCI were compared through a statistical analysis, the features of each gait condition were given as input to decision tree (DT), random forests (RF) and k nearest neighbour (KNN) to detect the presence of MCI. Then, some evaluation metrics were computed. DT achieved the highest accuracy (86.8%) using motor dual-task features, and the best sensitivity (88.2%), using gait task features as well as KNN (88.2% of sensitivity). KNN obtained the highest AUCROC (0.900) with the cognitive dual-task. DT with motor and cognitive dual-tasks and KNN with cognitive dual-task achieved the highest sensitivity (85.3%). Averaging the metrics, the cognitive dual-task showed the highest mean accuracy and specificity while the best mean sensitivity was obtained by the gait task. This paper proved that gait analysis and machine learning can be used to detect the presence in MCI in PD patients.
机译:帕金森氏病(PD)属于进行性神经退行性疾病,其临床特征是多种运动和非运动症状的组合。最近,轻度认知障碍(MCI)的构建最初被概念化为识别阿尔茨海默氏病的痴呆前状态,现已在PD中用于描述认知功能下降的框架,而功能活动并未受到损害。这项研究的目的是通过机器学习方法使用定量步态变量来区分有无MCI的PD患者。因此,对45名PD患者进行了步态分析,并在三种不同的条件下(正常步态,运动双重任务和认知双重任务)获得了时空参数。虽然通过统计分析比较了有无MCI的PD患者的人口统计学和临床​​特征,但将每种步态的特征作为决策树(DT),随机森林(RF)和k最近邻(KNN)的输入。检测是否存在MCI。然后,计算了一些评估指标。 DT通过使用电机双任务功能获得了最高的准确度(86.8%),并且通过使用步态任务功能以及KNN获得了最高的灵敏度(88.2%)(灵敏度为88.2%)。 KNN在认知双重任务方面获得了最高的AUCROC(0.900)。具有运动和认知双重任务的DT和具有认知双重任务的KNN达到最高的敏感性(85.3%)。平均衡量指标,认知双重任务表现出最高的平均准确性和特异性,而最佳的平均敏感性是通过步态任务获得的。本文证明了步态分析和机器学习可用于检测PD患者中MCI的存在。

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