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Prediction of stroke-related diagnostic and prognostic measures using robot-based evaluation

机译:基于机器人的评价预测中风相关的诊断和预后措施

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Traditional clinical scores for assessment of impairments resulting from stroke are inherently subjective and limited by inter-rater and intra-rater reliability. In contrast, robotic technologies provide objective, highly repeatable tools for quantification of motor performance of stroke subjects. Although use of robotic technologies has been widely suggested in the literature, they are not an established tool and their relationship to traditional clinical scales for stroke diagnosis and prognosis is mostly unknown. In this study we propose the application of two non-linear system identification methods, Parallel Cascade Identification and Fast Orthogonal Search, for prediction of stroke-related clinical scores using robot-based metrics. We show the suitability of these two methods for prediction of both diagnostic and prognostic scores. We compare our results with a previously applied approach based on linear regression and show the superiority of our modeling approach. Our results also underscore the importance of quantifying proprioceptive deficits in the prediction of motor-related prognosis scores.
机译:用于评估中风引起的损伤评估的传统临床评分本质上是主观的,受帧内间和帧内可靠性的限制。相比之下,机器人技术提供了客观,高度可重复的工具,用于定量行程对象的电动机性能。虽然在文献中广泛建议了机器人技术的使用,但它们不是一个既定的工具,他们与中风诊断和预后的传统临床尺度的关系大多是未知的。在这项研究中,我们提出了应用两个非线性系统识别方法,并行级联识别和快速正交搜索,以预测使用基于机器人的度量的行程相关的临床评分。我们展示了这两种方法的适用性,以预测诊断和预后分数。我们将结果与先前应用的方法基于线性回归进行比较,并显示了我们建模方法的优越性。我们的结果也强调了量化了在预测电动机相关预后评分中的预测缺陷的重要性。

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