School of Audiology and Speech-Language Pathology, University of Memphis, Memphis, TN 38105, USA.
Proc Natl Acad Sci U S A. 2010 Jul 27;107(30):13354-9. doi: 10.1073/pnas.1003882107. Epub 2010 Jul 19.
For generations the study of vocal development and its role in language has been conducted laboriously, with human transcribers and analysts coding and taking measurements from small recorded samples. Our research illustrates a method to obtain measures of early speech development through automated analysis of massive quantities of day-long audio recordings collected naturalistically in children's homes. A primary goal is to provide insights into the development of infant control over infrastructural characteristics of speech through large-scale statistical analysis of strategically selected acoustic parameters. In pursuit of this goal we have discovered that the first automated approach we implemented is not only able to track children's development on acoustic parameters known to play key roles in speech, but also is able to differentiate vocalizations from typically developing children and children with autism or language delay. The method is totally automated, with no human intervention, allowing efficient sampling and analysis at unprecedented scales. The work shows the potential to fundamentally enhance research in vocal development and to add a fully objective measure to the battery used to detect speech-related disorders in early childhood. Thus, automated analysis should soon be able to contribute to screening and diagnosis procedures for early disorders, and more generally, the findings suggest fundamental methods for the study of language in natural environments.
几代人以来,人们一直致力于研究发声发展及其在语言中的作用,通过人工转录和分析人员对小的录音样本进行编码和测量。我们的研究展示了一种通过对儿童家中自然收集的大量全天录音进行自动分析来获取早期言语发展测量值的方法。一个主要目标是通过对经过策略性选择的声学参数进行大规模的统计分析,深入了解婴儿对言语基础设施特征的控制是如何发展的。在追求这一目标的过程中,我们发现,我们实施的第一个自动化方法不仅能够跟踪儿童在已知对言语起着关键作用的声学参数上的发展,而且还能够区分正常发育的儿童与自闭症或语言迟缓的儿童的发声。该方法完全自动化,无需人工干预,允许以空前的规模进行高效的抽样和分析。这项工作展示了从根本上增强对发声发展的研究并为用于检测儿童早期言语相关障碍的工具增加完全客观的测量值的潜力。因此,自动分析应该能够很快为早期障碍的筛查和诊断程序做出贡献,更普遍的是,这些发现为在自然环境中研究语言提供了基本方法。