2 datasets found
  1. h

    Bridge2AI-Voice: An ethically-sourced, diverse voice dataset linked to...

    • healthdatanexus.ai
    • physionet.org
    Updated Nov 27, 2024
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    Alistair Johnson; Jean-Christophe Bélisle-Pipon; David Dorr; Satrajit Ghosh; Philip Payne; Maria Powell; Anaïs Rameau; Vardit Ravitsky; Alexandros Sigaras; Olivier Elemento; Yael Bensoussan (2024). Bridge2AI-Voice: An ethically-sourced, diverse voice dataset linked to health information [Dataset]. http://doi.org/10.57764/qb6h-em84
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    Dataset updated
    Nov 27, 2024
    Authors
    Alistair Johnson; Jean-Christophe Bélisle-Pipon; David Dorr; Satrajit Ghosh; Philip Payne; Maria Powell; Anaïs Rameau; Vardit Ravitsky; Alexandros Sigaras; Olivier Elemento; Yael Bensoussan
    License

    https://healthdatanexus.ai/about/duas/bridge2ai-voice-registered-access-agreement/https://healthdatanexus.ai/about/duas/bridge2ai-voice-registered-access-agreement/

    Description

    The human voice contains complex acoustic markers which have been linked to important health conditions including dementia, mood disorders, and cancer. When viewed as a biomarker, voice is a promising characteristic to measure as it is simple to collect, cost-effective, and has broad clinical utility. Recent advances in artificial intelligence have provided techniques to extract previously unknown prognostically useful information from dense data elements such as images. The Bridge2AI-Voice project seeks to create an ethically sourced flagship dataset to enable future research in artificial intelligence and support critical insights into the use of voice as a biomarker of health. Here we present Bridge2AI-Voice, a comprehensive collection of data derived from voice recordings with corresponding clinical information. Bridge2AI-Voice v1.0, the initial release, provides 12,523 recordings for 306 participants collected across five sites in North America. Participants were selected based on known conditions which manifest within the voice waveform including voice disorders, neurological disorders, mood disorders, and respiratory disorders. The initial release contains data considered low risk, including derivations such as spectrograms but not the original voice recordings. Detailed demographic, clinical, and validated questionnaire data are also made available.

  2. p

    Bridge2AI-Voice: An ethically-sourced, diverse voice dataset linked to...

    • physionet.org
    Updated Apr 16, 2025
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    Yael Bensoussan; Alexandros Sigaras; Anais Rameau; Olivier Elemento; Maria Powell; David Dorr; Philip Payne; Vardit Ravitsky; Jean-Christophe Bélisle-Pipon; Alistair Johnson; Ruth Bahr; Stephanie Watts; Donald Bolser; Jennifer Siu; Jordan Lerner-Ellis; Frank Rudzicz; Micah Boyer; Samantha Salvi Cruz; Yassmeen Abdel-Aty; Toufeeq Ahmed Syed; James Anibal; Stephen Aradi; Ana Sophia Martinez; Shaheen Awan; Steven Bedrick; Isaac Bevers; Rahul Brito; Selina Casalino; John Costello; Iris De Santiago; Enrique Diaz-Ocampo; Mohamed Ebraheem; Ellie Eiseman; Mahmoud Elmahdy; Emily Evangelista; Kenneth Fletcher; Alexander Gelbard; Anna Goldenberg; Karim Hanna; William Hersh; Lochana Jayachandran; Kaley Jenney; Kathy Jenkins; Stacy Jo; Ayush Kalia; Andrea Krussel; Elisa Lapadula; Chloe Loewith; Radhika Mahajan; Vrishni Maharaj; Siyu Miao; Matthew Mifsud; Marian Mikhael; Elijah Moothedan; Yosef Nafii; Tempestt Neal; Karlee Newberry; Evan Ng; Christopher Nickel; Trevor Pharr; Claire Premi-Bortolotto; JM Rahman; Sarah Rohde; Laurie Russell; Suketu Shah; Ahmed Shawkat; Elizabeth Silberholz; Duncan Sutherland; Venkata Swarna Mukhi; Jeffrey Tang; Jamie Toghranegar; Kimberly Vinson; Claire Wilson; Madeleine Zanin; Xijie Zeng; Theresa Zesiewicz; Robin Zhao; Pantelis Zisimopoulos; Satrajit Ghosh (2025). Bridge2AI-Voice: An ethically-sourced, diverse voice dataset linked to health information [Dataset]. http://doi.org/10.13026/3xt6-rf05
    Explore at:
    Dataset updated
    Apr 16, 2025
    Authors
    Yael Bensoussan; Alexandros Sigaras; Anais Rameau; Olivier Elemento; Maria Powell; David Dorr; Philip Payne; Vardit Ravitsky; Jean-Christophe Bélisle-Pipon; Alistair Johnson; Ruth Bahr; Stephanie Watts; Donald Bolser; Jennifer Siu; Jordan Lerner-Ellis; Frank Rudzicz; Micah Boyer; Samantha Salvi Cruz; Yassmeen Abdel-Aty; Toufeeq Ahmed Syed; James Anibal; Stephen Aradi; Ana Sophia Martinez; Shaheen Awan; Steven Bedrick; Isaac Bevers; Rahul Brito; Selina Casalino; John Costello; Iris De Santiago; Enrique Diaz-Ocampo; Mohamed Ebraheem; Ellie Eiseman; Mahmoud Elmahdy; Emily Evangelista; Kenneth Fletcher; Alexander Gelbard; Anna Goldenberg; Karim Hanna; William Hersh; Lochana Jayachandran; Kaley Jenney; Kathy Jenkins; Stacy Jo; Ayush Kalia; Andrea Krussel; Elisa Lapadula; Chloe Loewith; Radhika Mahajan; Vrishni Maharaj; Siyu Miao; Matthew Mifsud; Marian Mikhael; Elijah Moothedan; Yosef Nafii; Tempestt Neal; Karlee Newberry; Evan Ng; Christopher Nickel; Trevor Pharr; Claire Premi-Bortolotto; JM Rahman; Sarah Rohde; Laurie Russell; Suketu Shah; Ahmed Shawkat; Elizabeth Silberholz; Duncan Sutherland; Venkata Swarna Mukhi; Jeffrey Tang; Jamie Toghranegar; Kimberly Vinson; Claire Wilson; Madeleine Zanin; Xijie Zeng; Theresa Zesiewicz; Robin Zhao; Pantelis Zisimopoulos; Satrajit Ghosh
    License

    https://physionet.org/about/duas/bridge2ai-voice-registered-access-agreement/https://physionet.org/about/duas/bridge2ai-voice-registered-access-agreement/

    Description

    The human voice contains complex acoustic markers which have been linked to important health conditions including dementia, mood disorders, and cancer. When viewed as a biomarker, voice is a promising characteristic to measure as it is simple to collect, cost-effective, and has broad clinical utility. Recent advances in artificial intelligence have provided techniques to extract previously unknown prognostically useful information from dense data elements such as images. The Bridge2AI-Voice project seeks to create an ethically sourced flagship dataset to enable future research in artificial intelligence and support critical insights into the use of voice as a biomarker of health. Here we present Bridge2AI-Voice, a comprehensive collection of data derived from voice recordings with corresponding clinical information. Bridge2AI-Voice v2.0 contains data for 19,271 recordings collected from 442 participants across five sites in North America. Participants were selected based on known conditions which manifest within the voice waveform including voice disorders, neurological disorders, mood disorders, and respiratory disorders. The release contains data considered low risk, including derivations such as spectrograms but not the original voice recordings. Detailed demographic, clinical, and validated questionnaire data are also made available. Audio recordings are included on a companion release on PhysioNet with the title "Bridge2AI-Voice: An ethically-sourced, diverse voice dataset linked to health information (Audio Included)". Please see that project for details to request access.

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Click to copy link
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Alistair Johnson; Jean-Christophe Bélisle-Pipon; David Dorr; Satrajit Ghosh; Philip Payne; Maria Powell; Anaïs Rameau; Vardit Ravitsky; Alexandros Sigaras; Olivier Elemento; Yael Bensoussan (2024). Bridge2AI-Voice: An ethically-sourced, diverse voice dataset linked to health information [Dataset]. http://doi.org/10.57764/qb6h-em84

Bridge2AI-Voice: An ethically-sourced, diverse voice dataset linked to health information

Explore at:
3 scholarly articles cite this dataset (View in Google Scholar)
Dataset updated
Nov 27, 2024
Authors
Alistair Johnson; Jean-Christophe Bélisle-Pipon; David Dorr; Satrajit Ghosh; Philip Payne; Maria Powell; Anaïs Rameau; Vardit Ravitsky; Alexandros Sigaras; Olivier Elemento; Yael Bensoussan
License

https://healthdatanexus.ai/about/duas/bridge2ai-voice-registered-access-agreement/https://healthdatanexus.ai/about/duas/bridge2ai-voice-registered-access-agreement/

Description

The human voice contains complex acoustic markers which have been linked to important health conditions including dementia, mood disorders, and cancer. When viewed as a biomarker, voice is a promising characteristic to measure as it is simple to collect, cost-effective, and has broad clinical utility. Recent advances in artificial intelligence have provided techniques to extract previously unknown prognostically useful information from dense data elements such as images. The Bridge2AI-Voice project seeks to create an ethically sourced flagship dataset to enable future research in artificial intelligence and support critical insights into the use of voice as a biomarker of health. Here we present Bridge2AI-Voice, a comprehensive collection of data derived from voice recordings with corresponding clinical information. Bridge2AI-Voice v1.0, the initial release, provides 12,523 recordings for 306 participants collected across five sites in North America. Participants were selected based on known conditions which manifest within the voice waveform including voice disorders, neurological disorders, mood disorders, and respiratory disorders. The initial release contains data considered low risk, including derivations such as spectrograms but not the original voice recordings. Detailed demographic, clinical, and validated questionnaire data are also made available.

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