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A Method for Automatic and Objective Scoring of Bradykinesia Using Orientation Sensors and Classification Algorithms

机译:一种基于方向传感器和分类算法的运动迟缓自动客观评分方法

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Correct assessment of bradykinesia is a key element in the diagnosis and monitoring of Parkinson's disease. Its evaluation is based on a careful assessment of symptoms and it is quantified using rating scales, where the Movement Disorders Society-Sponsored Revision of the Unified Parkinson's Disease Rating Scale (MDS-UPDRS) is the gold standard. Regardless of their importance, the bradykinesia-related items show low agreement between different evaluators. In this study, we design an applicable tool that provides an objective quantification of bradykinesia and that evaluates all characteristics described in the MDS-UPDRS. Twenty-five patients with Parkinson's disease performed three of the five bradykinesia-related items of the MDS-UPDRS. Their movements were assessed by four evaluators and were recorded with a nine degrees-of-freedom sensor. Sensor fusion was employed to obtain a 3-D representation of movements. Based on the resulting signals, a set of features related to the characteristics described in the MDS-UPDRS was defined. Feature selection methods were employed to determine the most important features to quantify bradykinesia. The features selected were used to train support vector machine classifiers to obtain an automatic score of the movements of each patient. The best results were obtained when seven features were included in the classifiers. The classification errors for finger tapping, diadochokinesis and toe tapping were 15–16.5%, 9.3–9.8%, and 18.2–20.2% smaller than the average interrater scoring error, respectively. The introduction of objective scoring in the assessment of bradykinesia might eliminate inconsistencies within evaluators and interrater assessment disagreements and might improve the monitoring of movement disorders.
机译:正确评估运动迟缓是诊断和监测帕金森氏病的关键因素。它的评估基于对症状的仔细评估,并使用评定量表进行量化,其中运动障碍协会赞助的帕金森病统一评定量表(MDS-UPDRS)是黄金标准。不论其重要性如何,与运动迟缓相关的项目在不同的评估者之间均显示出较低的一致性。在这项研究中,我们设计了一种适用的工具,该工具可对运动迟缓进行客观量化,并评估MDS-UPDRS中描述的所有特征。 25名帕金森氏病患者执行了MDS-UPDRS五个运动迟缓相关项目中的三个。他们的运动由四名评估人员评估,并用九个自由度传感器记录下来。传感器融合用于获得运动的3D表示。基于结果信号,定义了一组与MDS-UPDRS中描述的特性有关的特性。使用特征选择方法来确定量化运动迟缓最重要的特征。所选特征用于训练支持向量机分类器,以获得每个患者运动的自动评分。当分类器中包含七个特征时,可获得最佳结果。敲击手指,穿刺通气和脚趾敲击的分类误差分别比平均间位评分误差小15–16.5%,9.3–9.8%和18.2–20.2%。在运动迟缓的评估中引入客观评分可以消除评估人员之间的矛盾和不同评估之间的分歧,并可以改善对运动障碍的监测。

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