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Toward the autism motor signature : gesture patterns during smart tablet gameplay identify children with autism

机译:迈向自闭症运动签名:智能平板电脑游戏中的手势模式可识别患有自闭症的儿童

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摘要

Autism is a developmental disorder evident from infancy. Yet, its clinical identification requires expert diagnostic training. New evidence indicates disruption to motor timing and integration may underpin the disorder, providing a potential new computational marker for its early identification. In this study, we employed smart tablet computers with touch-sensitive screens and embedded inertial movement sensors to record the movement kinematics and gesture forces made by 37 children 3-6 years old with autism and 45 age- and gender-matched children developing typically. Machine learning analysis of the children’s motor patterns identified autism with up to 93% accuracy. Analysis revealed these patterns consisted of greater forces at contact and with a different distribution of forces within a gesture, and gesture kinematics were faster and larger, with more distal use of space. These data support the notion disruption to movement is core feature of autism, and demonstrate autism can be computationally assessed by fun, smart device gameplay.
机译:自闭症是一种从婴儿期就可以看出的发育障碍。然而,其临床鉴定需要专家诊断培训。新证据表明,对运动时机和整合的破坏可能是疾病的基础,为早期识别提供了潜在的新的计算标记。在这项研究中,我们采用了具有触摸屏和嵌入式惯性运动传感器的智能平板电脑来记录37名3-6岁的自闭症儿童和45名年龄和性别相匹配的儿童的运动运动学和手势力。对儿童运动模式的机器学习分析确定自闭症的准确性高达93%。分析显示,这些模式包括较大的接触力和手势中不同的力分布,并且手势运动学更快,更大,并且更多地利用了远端空间。这些数据支持对运动的观念破坏是自闭症的核心特征,并证明可以通过有趣的智能设备游戏来对自闭症进行计算评估。

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