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Movement Recognition Technology as a Method of Assessing Spontaneous General Movements in High Risk Infants

机译:运动识别技术作为评估高危婴儿自发性一般运动的一种方法

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摘要

Preterm birth is associated with increased risks of neurological and motor impairments such as cerebral palsy. The risks are highest in those born at the lowest gestations. Early identification of those most at risk is challenging meaning that a critical window of opportunity to improve outcomes through therapy-based interventions may be missed. Clinically, the assessment of spontaneous general movements is an important tool, which can be used for the prediction of movement impairments in high risk infants. Movement recognition aims to capture and analyze relevant limb movements through computerized approaches focusing on continuous, objective, and quantitative assessment. Different methods of recording and analyzing infant movements have recently been explored in high risk infants. These range from camera-based solutions to body-worn miniaturized movement sensors used to record continuous time-series data that represent the dynamics of limb movements. Various machine learning methods have been developed and applied to the analysis of the recorded movement data. This analysis has focused on the detection and classification of atypical spontaneous general movements. This article aims to identify recent translational studies using movement recognition technology as a method of assessing movement in high risk infants. The application of this technology within pediatric practice represents a growing area of inter-disciplinary collaboration, which may lead to a greater understanding of the development of the nervous system in infants at high risk of motor impairment.
机译:早产与神经和运动障碍(如脑瘫)的风险增加有关。那些妊娠率最低的人的风险最高。尽早识别风险最高的人群具有挑战性,这意味着可能会错过通过基于治疗的干预措施改善结果的关键机会之窗。在临床上,自发性一般运动的评估是重要的工具,可用于预测高危婴儿的运动障碍。运动识别旨在通过专注于连续,客观和定量评估的计算机化方法来捕获和分析相关的肢体运动。最近,在高危婴儿中探索了各种记录和分析婴儿运动的方法。这些范围从基于摄像头的解决方案到用于记录连续时间序列数据(代表肢体运动动态)的随身佩戴的微型运动传感器。已经开发了各种机器学习方法并将其应用于记录的运动数据的分析。这种分析集中于非典型自发性一般运动的检测和分类。本文旨在确定使用运动识别技术作为评估高危婴儿运动方式的最新翻译研究。这项技术在儿科实践中的应用代表了跨学科合作领域的不断增长,这可能导致人们对运动障碍高风险婴儿的神经系统发育有了更深入的了解。

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