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How machine learning is embedded to support clinician decision making: an analysis of FDA-approved medical devices
90
Zitationen
5
Autoren
2021
Jahr
Abstract
Leveraging the benefits of ML algorithms to support clinicians while mitigating risks, requires a solid relationship between clinician and ML-based devices. Such relationships must be carefully designed, considering how algorithms are embedded in devices, the tasks supported, information provided and clinicians' interactions with them.
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