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Analysis of eye gaze pattern of infants at risk of autism spectrum disorder using Markov models

机译:使用马尔可夫模型分析具有自闭症谱系障碍风险的婴儿的注视模式

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This paper presents the possibility of using pattern recognition algorithms of infant gaze patterns at six months of age among children at high risk for an autism spectrum disorder (ASD). ASDs, which must be diagnosed by 3 years of age, are characterized by communication and interaction impairments which frequently involve disturbances of visual attention and gaze patterning. We used video cameras to record the face-to-face interactions of 32 infant subjects with their parents. The video was manually coded to determine the eye gaze pattern of infants by marking where the infant was looking in each frame (either at their parent's face or away from their parent's face). In order to identify infants ASD diagnosis at three years, we analyzed infant eye gaze patterns at six months. Variable-order Markov Models (VMM) were used to create models for typically developing comparison children as well as children with an ASD. The models correctly classified infants who did and did not develop an ASD diagnosis with an accuracy rate of 93.75 percent. Employing an assessment tool at a very young age offers the hope of early intervention, potentially mitigating the effects of the disorder throughout the rest of the child's life.
机译:本文提出了在自闭症谱系障碍(ASD)高危儿童中使用六个月大的婴儿注视模式的模式识别算法的可能性。必须自3岁起诊断的ASD的特征是沟通和互动障碍,经常涉及视觉注意力和注视模式的障碍。我们使用摄像机记录了32名婴儿受试者与父母的面对面互动。通过标记婴儿在每个帧中注视的位置(在父母的脸部或远离父母的脸部),对视频进行了手动编码,以确定婴儿的视线模式。为了确定3岁时的婴儿ASD诊断,我们分析了6个月时的婴儿眼睛注视模式。可变阶马尔可夫模型(VMM)用于创建通常用于开发比较儿童以及具有ASD的儿童的模型。该模型对进行和未进行ASD诊断的婴儿进行了正确分类,准确率为93.75%。在很小的时候就使用评估工具为早期干预提供了希望,从而有可能减轻儿童一生中疾病的影响。

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