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Automatic Childhood Autism Detection by Vocalization Decomposition with Phone-like Units

机译:类似于电话单元的语音分解自动检测儿童自闭症

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Autism is a major child development disorder with a prevalence of 1/150 in the US [22]. Although early identification is crucial to early intervention, there currently are few efficient screening tools in clinical use. This study reports a fully automatic mechanism for child autism detection/screening using 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. We previously reported preliminary results in [19] using child vocalization composition information generated automatically by the LENA System employing an adult phone model. In this paper, some extensions have been made, including enlargement of the dataset, introduction of a new child vocalization decomposition with the k-means clusters derived directly from the child vocalizations, and its combination with the previous decomposition. The experiment and comparison consistently shows that the child vocalization composition contains rich discriminant information for autism detection. It also shows that the child vocalization composition features generated with the adult phone-model and the child clusters perform similarly when individually used, and complement each other when combined. The combined feature set significantly reduces the error rate. The relative error reduction is 21.7% at the recording-level and 16.8% at the child-level, achieving detection accuracies of 87.4% for recordings and 90.6% for children at the equal-error-rate points.
机译:自闭症是一种主要的儿童发育障碍,在美国的患病率为1/150 [22]。尽管早期识别对于早期干预至关重要,但是目前在临床上几乎没有有效的筛查工具。这项研究报告了使用LENA进行儿童自闭症检测/筛查的全自动机制。 (语言环境分析)系统,该系统利用语音信号处理技术来分析和监视孩子的自然语言环境以及孩子的发声/语音。我们先前在[19]中使用使用成人电话模型的LENA系统自动生成的儿童发声成分信息报告了初步结果。在本文中,进行了一些扩展,包括数据集的扩大,使用直接源自儿童发声的k均值聚类引入新的儿童发声分解以及将其与先前的分解组合。实验和比较一致表明,儿童发声成分包含丰富的自闭症检测判别信息。它还表明,成人电话模型生成的儿童发声成分特征和儿童组在单独使用时表现相似,在组合时彼此互补。组合功能集大大降低了错误率。记录级别的相对错误减少为21.7%,儿童级别的相对错误减少为16.8%,在等错误率点上,记录的检测准确度为87.4%,儿童的检测准确度为90.6%。

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