婴儿踢腿质量检测支持物理治疗和早期发现脑瘫:一项试点研究

Victor Emeli, Katelyn E. Fry, A. Howard
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引用次数: 1

摘要

婴儿的踢腿模式可以提供可能预测其未来发展轨迹的标记。非典型踢腿模式可能预示发育障碍的可能性,如脑瘫(CP)。早期干预和物理治疗,鼓励练习适当的踢腿动作,可以帮助改善这些情况的结果。婴儿的踢腿动作通常由训练有素的健康专业人员进行评估,随后的物理治疗也由持牌专业人员进行。自动化的评估踢腿运动和管理的物理治疗是标准化这些过程是可取的。在这项工作中,我们试图开发一种方法来量化指标,可以提供洞察婴儿踢动作的质量。我们利用计算机视觉系统来分析亲子游戏和机器人婴儿移动所刺激的婴儿踢腿。我们利用统计技术来估计踢腿类型(同步和非同步)、踢腿幅度、踢腿频率和踢腿偏差。这些参数可以被证明有助于确定婴儿的踢腿质量,也可以衡量随着时间的推移物理治疗的改善。本文详细介绍了系统的设计,并对统计结果进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Infant Kick Quality Detection to Support Physical Therapy and Early Detection of Cerebral Palsy: A Pilot Study
The kicking patterns of infants can provide markers that may predict the trajectory of their future development. Atypical kicking patterns may predict the possibility of developmental disorders like Cerebral Palsy (CP). Early intervention and physical therapy that encourages the practice of proper kicking motions can help to improve the outcomes in these scenarios. The kicking motions of an infant are usually evaluated by a trained health professional and subsequent physical therapy is also conducted by a licensed professional. The automation of the evaluation of kicking motions and the administration of physical therapy is desirable for standardizing these processes. In this work, we attempt to develop a method to quantify metrics that can provide insight into the quality of baby kicking actions. We utilize a computer vision system to analyze infant kicking stimulated by parent-infant play and a robotic infant mobile. We utilize statistical techniques to estimate kick type (synchronous and non-synchronous), kick amplitude, kick frequency, and kick deviation. These parameters can prove helpful in determining an infant's kick quality and also measure improvements in physical therapy over time. In this paper, we detail the design of the system and discuss the statistical results.
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