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A probabilistic approach based on Random Forests to estimating similarity of human motion in the context of Parkinson's Disease

机译:一种基于随机森林的概率方法来估计帕金森氏病背景下人体运动的相似性

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The objective characterization of human motion is required in a variety of fields including competitive sports, rehabilitation and the detection of motor deficits. Nowadays, typically human experts evaluate the motor behavior. These evaluations are based on their individual experience which leads to a low inter- and intra-expert reliability. Standardized tests improve on the reliability but are still prone to subjective ratings and require human expert knowledge. This paper presents a novel method to characterize the motor state of Parkinson patients using full body motion capturing data based on a combination of multiple metrics. Our approach merges various metrics with a Random Forest and uses a probabilistic formulation to compute a one-dimensional measure for the performed motion. We present an application of our approach to the problem of relating subject motion to different classes like healthy subjects and Parkinson disease patients with deep brain stimulation switched on or off. In the experimental session we show that our measure leads to high classification rates and high entropy values for real-world data. Besides, we show that our method discriminates between Parkinson's subjects (with and without stimulation) and healthy persons as good as the Unified Parkinson's Disease Rating Scale (UPDRS).
机译:在包括竞技体育,康复和运动障碍检测在内的各个领域中,都需要对人体运动进行客观的表征。如今,通常人类专家会评估运动行为。这些评估是基于他们的个人经验,导致专家之间和专家内部的可靠性较低。标准化测试可提高可靠性,但仍容易受到主观评分的影响,并且需要专业人员的知识。本文提出了一种基于多种指标组合的全身运动捕获数据来表征帕金森患者运动状态的新颖方法。我们的方法将各种指标与“随机森林”合并,并使用概率公式为执行的运动计算一维量度。我们提出了一种方法的应用,该方法用于将对象的运动与不同类别(例如,健康的对象和具有打开或关闭的深部脑刺激的帕金森氏病患者)相关联的问题。在实验环节中,我们证明了我们的措施导致真实数据的高分类率和高熵值。此外,我们证明了我们的方法能够区分帕金森氏症的受试者(有无刺激)和健康人,以及帕金森氏病统一评分量表(UPDRS)。

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