Artificial Intelligence and Digital Pathology: Challenges and Opportunities

Journal of Pathology Informatics - Tập 9 - Trang 38 - 2018
Hamid Reza Tizhoosh1,2, Liron Pantanowitz3
1Kimia Lab, University of Waterloo, Canada
2Huron Digital Pathology, Engineering Department, St. Jacobs, ON, Canada
3Department of Pathology, University of Pittsburgh Medical Center, Pittsburgh, PA 15261, USA

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