DEED: DEep Evidential Doctor

Artificial Intelligence - Tập 325 - Trang 104019 - 2023
Awais Ashfaq1,2, Markus Lingman1,2,3, Murat Sensoy4, Sławomir Nowaczyk1
1School of ITE, Halmstad University, Sweden
2Halland Hospital, Region Halland, Sweden
3Dept. of Molecular and Clinical Medicine/Cardiology, Sahlgrenska Academy, University of Gothenburg, Sweden
4Amazon Alexa AI, London, UK

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