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Upper limb motor coordination based early diagnosis in high risk subjects for Autism

机译:高自闭症高危受试者的基于上肢运动协调的早期诊断

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Autism is a lifelong condition present from early childhood. Medical specialists' diagnosis autism based on observation is of great difficulty in communicating, difficulties for forming relationships with other people, and delayed speech. The scientists tried to discover other early signs to reach the early detection of Autism Spectrum Disorders (ASD). Early diagnosing is very important to initiate and improve treatment results. One of these signs is based on examination of upper limb motor movements. This study aims to determine whether a simple upper limb motor movement could be useful to classify High Risk (HR) infants for autism and comparison infants with Low Risk (LR) for autism. Also, this paper presents a computational intelligence method that uses HR and LR subjects between the ages of 12 and 36 months to make an early autism diagnosing. The paper examined one task which asks to insert an object into a box. It analyzed the data by using Support Vector Machine (SVM) and Extreme Learning Machine (ELM). The results show engorging results in comparison to other state or art methods.
机译:自闭症是从幼儿期开始的终身病。基于观察的医学专家的诊断自闭症在沟通上有很大的困难,与他人建立关系的困难以及言语的延迟。科学家试图发现其他早期迹象,以尽早发现自闭症谱系障碍(ASD)。早期诊断对于启动和改善治疗效果非常重要。这些迹象之一是基于上肢运动运动的检查。这项研究的目的是确定简单的上肢运动是否可以对自闭症的高危(HR)婴儿进行分类,并与低自闭症(LR)的婴儿进行比较。此外,本文提出了一种计算智能方法,该方法使用年龄在12到36个月之间的HR和LR受试者进行早期自闭症诊断。本文研究了一项要求将对象插入盒子的任务。它通过使用支持向量机(SVM)和极限学习机(ELM)来分析数据。结果表明,与其他现有方法或先进方法相比,结果令人吃惊。

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