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Voice EHR: Introducing Multimodal Audio Data for Health
by
Bensoussan, Yael
, Li, Ming
, Krishnaiah, Balaji
, Garcia, Charisse
, Brenner, Jacqueline
, James, Anibal
, Elangovan, Cheran
, Plum, Jeffrey
, Sprabery, Laura
, Song, Miranda
, Wood, Bradford
, Hong, Phuc
, Clifton, David
, Thwaites, C Louise
, Ricotta, Emily
, Ebedes, Dominique
, Kleinman, Michael
, Nguyen, Hang
, Ioan Lina
, Huth, Hannah
, Jansen, Stefan
, Hazen, Lindsey
, Akst, Lee
, Jackson, Christopher
, Nduwayezu, Richard
, Iqbal Elyazar
, Ekwati, Lenny
, Daoud, Veronica
, Lam, Yen Minh
, Ost, Shelley
in
Applications programs
/ Audio data
/ Biomarkers
/ Data collection
/ Datasets
/ Electronic health records
/ Recording equipment
/ Voice
2024
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Voice EHR: Introducing Multimodal Audio Data for Health
by
Bensoussan, Yael
, Li, Ming
, Krishnaiah, Balaji
, Garcia, Charisse
, Brenner, Jacqueline
, James, Anibal
, Elangovan, Cheran
, Plum, Jeffrey
, Sprabery, Laura
, Song, Miranda
, Wood, Bradford
, Hong, Phuc
, Clifton, David
, Thwaites, C Louise
, Ricotta, Emily
, Ebedes, Dominique
, Kleinman, Michael
, Nguyen, Hang
, Ioan Lina
, Huth, Hannah
, Jansen, Stefan
, Hazen, Lindsey
, Akst, Lee
, Jackson, Christopher
, Nduwayezu, Richard
, Iqbal Elyazar
, Ekwati, Lenny
, Daoud, Veronica
, Lam, Yen Minh
, Ost, Shelley
in
Applications programs
/ Audio data
/ Biomarkers
/ Data collection
/ Datasets
/ Electronic health records
/ Recording equipment
/ Voice
2024
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Do you wish to request the book?
Voice EHR: Introducing Multimodal Audio Data for Health
by
Bensoussan, Yael
, Li, Ming
, Krishnaiah, Balaji
, Garcia, Charisse
, Brenner, Jacqueline
, James, Anibal
, Elangovan, Cheran
, Plum, Jeffrey
, Sprabery, Laura
, Song, Miranda
, Wood, Bradford
, Hong, Phuc
, Clifton, David
, Thwaites, C Louise
, Ricotta, Emily
, Ebedes, Dominique
, Kleinman, Michael
, Nguyen, Hang
, Ioan Lina
, Huth, Hannah
, Jansen, Stefan
, Hazen, Lindsey
, Akst, Lee
, Jackson, Christopher
, Nduwayezu, Richard
, Iqbal Elyazar
, Ekwati, Lenny
, Daoud, Veronica
, Lam, Yen Minh
, Ost, Shelley
in
Applications programs
/ Audio data
/ Biomarkers
/ Data collection
/ Datasets
/ Electronic health records
/ Recording equipment
/ Voice
2024
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Paper
Voice EHR: Introducing Multimodal Audio Data for Health
2024
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Overview
Artificial intelligence (AI) models trained on audio data may have the potential to rapidly perform clinical tasks, enhancing medical decision-making and potentially improving outcomes through early detection. Existing technologies depend on limited datasets collected with expensive recording equipment in high-income countries, which challenges deployment in resource-constrained, high-volume settings where audio data may have a profound impact on health equity. This report introduces a novel data type and a corresponding collection system that captures health data through guided questions using only a mobile/web application. The app facilitates the collection of an audio electronic health record (Voice EHR) which may contain complex biomarkers of health from conventional voice/respiratory features, speech patterns, and spoken language with semantic meaning and longitudinal context, potentially compensating for the typical limitations of unimodal clinical datasets. This report presents the application used for data collection, initial experiments on data quality, and case studies which demonstrate the potential of voice EHR to advance the scalability/diversity of audio AI.
Publisher
Cornell University Library, arXiv.org
Subject
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