A framework for closing the loop between human experts and computational algorithms for the assessment of movement disorders

Christopher Jarrett, C. Shirota, A. McDaid, D. Piovesan, A. Melendez-Calderon
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Abstract

Clinical assessment of abnormal neuromechanics is typically performed by manipulation of the affected limbs; a process with low inter- and intra-rater reliability. This paper aims at formalizing a framework that closes the loop between a clinician’s expertise and computational algorithms, to enhance the clinician’s diagnostic capabilities during physical manipulation. The framework’s premise is that the dynamics that can be measured by manipulation of a limb are distinct between movement disorders. An a priori database contains measurements encoded in a space called the information map. Based on this map, a computational algorithm identifies which probing motions are more likely to yield distinguishing information about a patient’s movement disorder. The clinician executes this movement and the resulting dynamics, combined with clinician input, is used by the algorithm to estimate which of the movement disorders in the database are most probable. This is recursively repeated until a diagnosis can be confidently made. The main contributions of this paper are the formalization of the framework and the addition of the information map to select informative movements. The establishment of the framework provides a foundation for a standardized assessment of movement disorders and future work will aim at testing the framework’s efficacy.
一个在人类专家和评估运动障碍的计算算法之间闭合循环的框架
异常神经力学的临床评估通常通过操纵患肢来进行;具有较低的内部和内部可靠性的过程。本文旨在形式化一个框架,在临床医生的专业知识和计算算法之间建立闭环,以提高临床医生在物理操作期间的诊断能力。该框架的前提是,可以通过操纵肢体来测量的动态是不同于运动障碍的。先验数据库包含在称为信息地图的空间中编码的测量值。基于这张地图,一种计算算法确定哪些探测动作更有可能产生关于患者运动障碍的区分信息。临床医生执行这个动作,并结合临床医生的输入,产生的动态被算法用来估计数据库中哪些运动障碍是最可能的。这是递归重复,直到诊断可以自信地作出。本文的主要贡献是框架的形式化和增加了信息地图来选择信息运动。该框架的建立为运动障碍的标准化评估奠定了基础,未来的工作将旨在测试该框架的功效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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