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An evaluation of identification of suspected autism spectrum disorder (ASD) cases in early intervention (EI) records

机译:在早期干预(EI)记录中鉴定可疑自闭症谱系障碍(ASD)病例的评估

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The rising prevalence of Autism Spectrum Disorder (ASD) in the United States points to an increased need for services across the life span. Specialized services beginning at the earliest age possible are critical to maximizing long-term outcomes for children with ASD and their families. Many children later diagnosed with ASD will begin to receive services through the federally funded Early Intervention (EI) system that serves infants and toddlers from birth to age three. However, without formal recognition, services may not fully address the constellation of ASD symptoms. While ASD training in EI is becoming more widespread, there is still a need for better detection of ASD symptoms at younger ages. We hypothesized that initial EI assessment records which document the strengths and needs of children in EI, could be an important source for detecting ASD warning signs and aid state EI systems in earlier identification. In this research, we used EI records to evaluate classification techniques to identify suspected ASD cases. We improved the performance of machine learning techniques by developing and applying a unified ASD ontology to identify the most relevant features from EI records. The results indicate that using Support Vector Machine (SVM) with ontology-based unigrams as features yields the best performance. Our study shows that developing automatic approaches for quickly and effectively detecting suspected cases of ASD from non-standardized EI records earlier than most ASD cases are typically detected is promising.
机译:在美国,自闭症谱系障碍(ASD)的患病率不断上升,这表明在整个生命周期中对服务的需求都在增加。尽早开始的专门服务对于最大程度地提高ASD儿童及其家庭的长期结局至关重要。后来被诊断患有ASD的许多儿童将开始通过联邦资助的早期干预(EI)系统获得服务,该系统为从出生到三岁的婴幼儿提供服务。但是,如果没有正式的认可,服务可能无法完全解决ASD症状的征兆。尽管在EI中进行ASD培训变得越来越普遍,但仍需要在年轻时更好地检测ASD症状。我们假设,最初的EI评估记录记录了EI中儿童的长处和需求,可能是检测ASD警告信号和帮助州EI系统在早期识别中的重要来源。在这项研究中,我们使用EI记录来评估分类技术,以识别可疑的ASD病例。我们通过开发和应用统一的ASD本体来从EI记录中识别最相关的特征,从而提高了机器学习技术的性能。结果表明,将支持向量机(SVM)与基于本体的字母组合作为特征会产生最佳性能。我们的研究表明,开发出一种自动方法,可以比通常检测到的大多数ASD病例更早地从非标准化EI记录中快速有效地检测出ASD疑似病例。

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