Building an Ethical and Trustworthy Biomedical AI Ecosystem for the Translational and Clinical Integration of Foundational Models
Foundational Models (FMs) are gaining increasing attention in the biomedical AI ecosystem due to their ability to represent and contextualize multimodal biomedical data. These capabilities make FMs a valuable tool for a variety of tasks, including biomedical reasoning, hypothesis generation, and int...
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Main Authors | , , , , , , , , , , , |
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Format | Journal Article |
Language | English |
Published |
18.07.2024
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Subjects | |
Online Access | Get full text |
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Summary: | Foundational Models (FMs) are gaining increasing attention in the biomedical
AI ecosystem due to their ability to represent and contextualize multimodal
biomedical data. These capabilities make FMs a valuable tool for a variety of
tasks, including biomedical reasoning, hypothesis generation, and interpreting
complex imaging data. In this review paper, we address the unique challenges
associated with establishing an ethical and trustworthy biomedical AI
ecosystem, with a particular focus on the development of FMs and their
downstream applications. We explore strategies that can be implemented
throughout the biomedical AI pipeline to effectively tackle these challenges,
ensuring that these FMs are translated responsibly into clinical and
translational settings. Additionally, we emphasize the importance of key
stewardship and co-design principles that not only ensure robust regulation but
also guarantee that the interests of all stakeholders, especially those
involved in or affected by these clinical and translational applications are
adequately represented. We aim to empower the biomedical AI community to
harness these models responsibly and effectively. As we navigate this exciting
frontier, our collective commitment to ethical stewardship, co-design, and
responsible translation will be instrumental in ensuring that the evolution of
FMs truly enhances patient care and medical decision making, ultimately leading
to a more equitable and trustworthy biomedical AI ecosystem. |
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DOI: | 10.48550/arxiv.2408.01431 |