TY - JOUR
T1 - Harnessing automatic speech recognition to realise Sustainable Development Goals 3, 9, and 17 through interdisciplinary partnerships for children with communication disability
AU - Baker, Elise
AU - Li, Weicong
AU - Hodges, Rosemary
AU - Masso, Sarah
AU - Jones, Caroline
AU - Guo, Yi
AU - Alt, Mary
AU - Antoniou, Mark
AU - Afshar, Saeed
AU - Tosi, Katrina
AU - Munro, Natalie
N1 - Publisher Copyright: © 2022 The Speech Pathology Association of Australia Limited.
PY - 2023
Y1 - 2023
N2 - Purpose: To showcase how applications of automatic speech recognition (ASR) technology could help solve challenges in speech-language pathology practice with children with communication disability, and contribute to the realisation of the Sustainable Development Goals (SDGs). Result: ASR technologies have been developed to address the need for equitable, efficient, and accurate assessment and diagnosis of communication disability in children by automating the transcription and analysis of speech and language samples and supporting dual-language assessment of bilingual children. ASR tools can automate the measurement of and help optimise intervention fidelity. ASR tools can also be used by children to engage in independent speech production practice without relying on feedback from speech-language pathologists (SLPs), thus bridging the long-standing gap between recommended and received intervention intensity. These innovative technologies and tools have been generated from interdisciplinary partnerships between SLPs, engineers, data scientists, and linguists. Conclusion: To advance equitable, efficient, and effective speech-language pathology services for children with communication disability, SLPs would benefit from integrating ASR solutions into their clinical practice. Ongoing interdisciplinary research is needed to further advance ASR technologies to optimise children’s outcomes. This commentary paper focusses on industry, innovation and infrastructure (SDG 9) and partnerships for the goals (SDG 17). It also addresses SDG 1, SDG 3, SDG 4, SDG 8, SDG 10, SDG 11, and SDG 16.
AB - Purpose: To showcase how applications of automatic speech recognition (ASR) technology could help solve challenges in speech-language pathology practice with children with communication disability, and contribute to the realisation of the Sustainable Development Goals (SDGs). Result: ASR technologies have been developed to address the need for equitable, efficient, and accurate assessment and diagnosis of communication disability in children by automating the transcription and analysis of speech and language samples and supporting dual-language assessment of bilingual children. ASR tools can automate the measurement of and help optimise intervention fidelity. ASR tools can also be used by children to engage in independent speech production practice without relying on feedback from speech-language pathologists (SLPs), thus bridging the long-standing gap between recommended and received intervention intensity. These innovative technologies and tools have been generated from interdisciplinary partnerships between SLPs, engineers, data scientists, and linguists. Conclusion: To advance equitable, efficient, and effective speech-language pathology services for children with communication disability, SLPs would benefit from integrating ASR solutions into their clinical practice. Ongoing interdisciplinary research is needed to further advance ASR technologies to optimise children’s outcomes. This commentary paper focusses on industry, innovation and infrastructure (SDG 9) and partnerships for the goals (SDG 17). It also addresses SDG 1, SDG 3, SDG 4, SDG 8, SDG 10, SDG 11, and SDG 16.
KW - Sustainable Development Goals (SDGs)
KW - assessment
KW - automatic speech recognition (ASR)
KW - communication disability
KW - good health and well-being (SDG 3)
KW - industry, innovation and infrastructure (SDG 9)
KW - partnerships for the goals (SDG 17)
KW - therapy
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U2 - 10.1080/17549507.2022.2146194
DO - 10.1080/17549507.2022.2146194
M3 - Comment/debate
C2 - 36511655
SN - 1754-9507
VL - 25
SP - 125
EP - 129
JO - International Journal of Speech-Language Pathology
JF - International Journal of Speech-Language Pathology
IS - 1
ER -