Wang, Williams, Dilley, Houston
Early
language environment plays a critical role in child language development. The
Language ENvironment Analysis (LENA™) system allows researchers and
clinicians to collect daylong recordings and obtain automated measures to
characterize a child’s language environment. This meta-analysis evaluates the
predictability of LENA’s automated measures for language skills in young
children. We systematically searched reports for associations between LENA’s
automated measures, specifically, adult word count (AWC), conversational turn
count (CTC), and child vocalization count (CVC), and language skills in
children younger than 48 months. Using robust variance estimation, we
calculated weighted mean effect sizes and conducted moderator analyses
exploring the factors that might affect this relationship. The results
revealed an overall medium effect size for the correlation between LENA’s
automated measures and language skills. This relationship was largely
consistent regardless of child developmental status, publication status,
language assessment modality and method, or the age at which the LENA
recording was taken; however, the effect was moderated by the gap between
LENA recordings and language measures taken. Among the three measures, there
were medium associations between CTC and CVC and language, whereas there was
a small-to-medium association between AWC and language. These findings extend
beyond validation work conducted by the LENA Research Foundation and suggest
certain predictive strength of LENA’s automated measures for child language.
We discussed possible mechanisms underlying the observed associations, as
well as the theoretical, methodological, and clinical implications of these
findings.