Department of Psychiatry, Oregon Health & Science University, Portland, Oregon, USA.
Department of Medical Informatics and Clinical Epidemiology, Oregon Health & Science University, Portland, Oregon, USA.
Autism Res. 2023 Apr;16(4):802-816. doi: 10.1002/aur.2897. Epub 2023 Feb 1.
Autism Spectrum Disorder (ASD) is a neurodevelopmental disorder with substantial clinical heterogeneity, especially in language and communication ability. There is a need for validated language outcome measures that show sensitivity to true change for this population. We used Natural Language Processing to analyze expressive language transcripts of 64 highly-verbal children and young adults (age: 6-23 years, mean 12.8 years; 78.1% male) with ASD to examine the validity across language sampling context and test-retest reliability of six previously validated Automated Language Measures (ALMs), including Mean Length of Utterance in Morphemes, Number of Distinct Word Roots, C-units per minute, unintelligible proportion, um rate, and repetition proportion. Three expressive language samples were collected at baseline and again 4 weeks later. These samples comprised interview tasks from the Autism Diagnostic Observation Schedule (ADOS-2) Modules 3 and 4, a conversation task, and a narration task. The influence of language sampling context on each ALM was estimated using either generalized linear mixed-effects models or generalized linear models, adjusted for age, sex, and IQ. The 4 weeks test-retest reliability was evaluated using Lin's Concordance Correlation Coefficient (CCC). The three different sampling contexts were associated with significantly (P < 0.001) different distributions for each ALM. With one exception (repetition proportion), ALMs also showed good test-retest reliability (median CCC: 0.73-0.88) when measured within the same context. Taken in conjunction with our previous work establishing their construct validity, this study demonstrates further critical psychometric properties of ALMs and their promising potential as language outcome measures for ASD research.
自闭症谱系障碍(ASD)是一种神经发育障碍,具有显著的临床异质性,尤其是在语言和沟通能力方面。对于这一人群,需要有经过验证的语言结果测量方法,以显示对真实变化的敏感性。我们使用自然语言处理技术分析了 64 名高功能自闭症儿童和年轻人(年龄:6-23 岁,平均 12.8 岁;78.1%为男性)的表达性语言转录本,以检验六种先前验证的自动语言测量(ALM)在语言采样情境和测试-重测信度上的有效性,包括语素平均长度、独特词根数量、C 单位/分钟、不可理解比例、呃率和重复比例。在基线和 4 周后分别采集了三个表达性语言样本。这些样本包括自闭症诊断观察量表(ADOS-2)模块 3 和 4 的访谈任务、对话任务和叙述任务。使用广义线性混合效应模型或广义线性模型,根据年龄、性别和智商,估计每种 ALM 的语言采样情境的影响。使用林氏一致性相关系数(CCC)评估 4 周的测试-重测信度。三种不同的采样情境与每种 ALM 的显著(P<0.001)不同分布相关。除了一个例外(重复比例),当在同一情境下测量时,ALM 还表现出良好的测试-重测信度(中位数 CCC:0.73-0.88)。结合我们之前建立其结构有效性的工作,这项研究进一步证明了 ALM 的关键心理计量学特性及其作为自闭症研究中语言结果测量的有前途的潜力。