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Precision histology: how deep learning is poised to revitalize histomorphology for personalized cancer care
179
Zitationen
4
Autoren
2017
Jahr
Abstract
Accurate interpretation of the hematoxylin and eosin (H&E) slide has remained the foundation of pathological analysis and diagnostic medicine for over a century. It combines art and science to help triage and guide more focused and specialized ancillary studies. 3] Some have even proposed that given the exponential decrease in sequencing costs, medical assessment could effectively begin with wholegenome analysis. Here, we discuss the current state and the possible future of the H&E stain by highlighting some of its strengths and shortcomings. It may well be that the scrutiny that the H&E microscopic exam has faced in recent years 4 is no fault of its own, but the lack of effective approaches to routinely extract more of the rich morphologic information it contains.
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