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Key insights in the AIDA community policy on sharing of clinical imaging data for research in Sweden
14
Zitationen
3
Autoren
2020
Jahr
Abstract
Development of world-class artificial intelligence (AI) for medical imaging requires access to massive amounts of training data from clinical sources, but effective data sharing is often hindered by uncertainty regarding data protection. We describe an initiative to reduce this uncertainty through a policy describing a national community consensus on sound data sharing practices.
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