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AI-readiness for Biomedical Data: Bridge2AI Recommendations
18
Zitationen
31
Autoren
2024
Jahr
Abstract
Biomedical research and clinical practice are in the midst of a transition toward significantly increased use of artificial intelligence (AI) and machine learning (ML) methods. These advances promise to enable qualitatively deeper insight into complex challenges formerly beyond the reach of analytic methods and human intuition while placing increased demands on ethical and explainable artificial intelligence (XAI), given the opaque nature of many deep learning methods. The U.S. National Institutes of Health (NIH) has initiated a significant research and development program, Bridge2AI, aimed at producing new "flagship" datasets designed to support AI/ML analysis of complex biomedical challenges, elucidate best practices, develop tools and standards in AI/ML data science, and disseminate these datasets, tools, and methods broadly to the biomedical community. An essential set of concepts to be developed and disseminated in this program along with the data and tools produced are criteria for AI-readiness of data, including critical considerations for XAI and ethical, legal, and social implications (ELSI) of AI technologies. NIH Bridge to Artificial Intelligence (Bridge2AI) Standards Working Group members prepared this article to present methods for assessing the AI-readiness of biomedical data and the data standards perspectives and criteria we have developed throughout this program. While the field is rapidly evolving, these criteria are foundational for scientific rigor and the ethical design and application of biomedical AI methods.
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Autoren
- Tim W. Clark
- J. Harry Caufield
- Jillian A. Parker
- Mohammad Sadnan Al Manir
- Edilberto Amorim
- James A. Eddy
- Nayoon Gim
- Brian Gow
- Wesley Goar
- Melissa Haendel
- Jan N. Hansen
- Nomi L. Harris
- Henning Hermjakob
- Marcin P. Joachimiak
- G. K. S. Jordan
- In‐Hee Lee
- Shannon K. McWeeney
- Camille Nebeker
- Milen Nikolov
- Jamie Shaffer
- Nathan C. Sheffield
- Gloria Sheynkman
- James Stevenson
- Jake Y. Chen
- Chris Mungall
- Alex H. Wagner
- Sek Won Kong
- Satrajit Ghosh
- Bhavesh Patel
- Andrew E. Williams
- Mónica Muñoz-Torres
Institutionen
- University of Virginia(US)
- Lawrence Berkeley National Laboratory(US)
- University of California, San Diego(US)
- University of California, San Francisco(US)
- Avanti (United Kingdom)(GB)
- University of Washington(US)
- Massachusetts Institute of Technology(US)
- Nationwide Children's Hospital(US)
- University of North Carolina at Chapel Hill(US)
- Stanford University(US)
- European Bioinformatics Institute(GB)
- Sage Bionetworks(US)
- Boston Children's Museum(US)
- Boston Children's Hospital(US)
- Oregon Health & Science University(US)
- University of Alabama at Birmingham(US)
- California Medical Innovations Institute(US)
- Tufts University(US)
- University of Colorado Anschutz Medical Campus(US)