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Knowledge, perceptions, and expectations of Artificial intelligence in radiography practice: A global radiography workforce survey
57
Zitationen
6
Autoren
2022
Jahr
Abstract
Advancement of AI technologies and implementation should be accompanied by proportional training of end-users in radiography and beyond. There are many benefits of AI-enabled radiography workflows and improvement on efficiencies but equally there will be widespread disruption of traditional roles and patient-centred care, which can be managed by a well-educated and well-informed workforce.
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