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Child Vocalization Composition as Discriminant Information for Automatic Autism Detection

机译:儿童发声组成作为自动自闭症检测的判别信息

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Early identification is crucial for young children with autism to access early intervention. The existing screens require either a parent-report questionnaire and/or direct observation by a trained practitioner. Although an automatic tool would benefit parents, clinicians and children, there is no automatic screening tool in clinical use. This study reports a fully automatic mechanism for autism detection/screening for young children. This is a direct extension of the LENA (Language Environment Analysis) system, which utilizes speech signal processing technology to analyze and monitor a child's natural language environment and the vocalizations/speech of the child. It is discovered that child vocalization composition contains rich discriminant information for autism detection. By applying pattern recognition and machine learning approaches to child vocalization composition data, accuracy rates of 85% to 90% in cross-validation tests for autism detection have been achieved at the equal-error-rate (EER) point on a data set with 34 children with autism, 30 language delayed children and 76 typically developing children. Due to its easy and automatic procedure, it is believed that this new tool can serve a significant role in childhood autism screening, especially in regards to population-based or universal screening.
机译:早期识别对于患有自闭症患者提前干预的幼儿至关重要。现有屏幕要求母亲报告问卷和/或由培训的从业者直接观察。虽然自动工具将受益父母,临床医生和儿童,但临床使用中没有自动筛选工具。本研究报告了幼儿自动检测/筛选的全自动机制。这是Lena(语言环境分析)系统的直接扩展,它利用语音信号处理技术来分析和监控孩子的自然语言环境和孩子的发声/语音。发现儿童发声组合物包含丰富的自闭症检测判别信息。通过将图案识别和机器学习方法应用于儿童发声组成数据,在具有34个数据集的数据集的平均差错率(eer)点,已经实现了85%至90%的跨验证测试中的跨验证测试的准确率为85%至90%。患有自闭症的儿童,30名语言延迟儿童和76名典型发展中国家。由于其简单和自动的程序,据信这款新工具可以在童年自闭症筛查中具有重要作用,特别是对基于人口或通用筛查的群体。

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