Integrating automatic speech recognition into remote healthcare interpreting: A pilot study of its impact on interpreting quality
Journal:
arXiv
Published Date:
Feb 5, 2025
Abstract
This paper reports on the results from a pilot study investigating the impact
of automatic speech recognition (ASR) technology on interpreting quality in
remote healthcare interpreting settings. Employing a within-subjects experiment
design with four randomised conditions, this study utilises scripted medical
consultations to simulate dialogue interpreting tasks. It involves four trainee
interpreters with a language combination of Chinese and English. It also
gathers participants' experience and perceptions of ASR support through cued
retrospective reports and semi-structured interviews. Preliminary data suggest
that the availability of ASR, specifically the access to full ASR transcripts
and to ChatGPT-generated summaries based on ASR, effectively improved
interpreting quality. Varying types of ASR output had different impacts on the
distribution of interpreting error types. Participants reported similar
interactive experiences with the technology, expressing their preference for
full ASR transcripts. This pilot study shows encouraging results of applying
ASR to dialogue-based healthcare interpreting and offers insights into the
optimal ways to present ASR output to enhance interpreter experience and
performance. However, it should be emphasised that the main purpose of this
study was to validate the methodology and that further research with a larger
sample size is necessary to confirm these findings.