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J. Surg. Pathol}} 42 , year={2018} } @book{b77, , title={{Food and Drug Administration, 510(k) Substantial Equivalence Determination Decision Memorandum-K190332}} , author={{ U }} } @incollection{b78, , title={{Closing the translation gap: AI applications in digital pathology}} , author={{ DSteiner } and { PChen } and { CMermel }} , journal={{Biochimica et Biophysica Acta (BBA) -Reviews on Cancer}} 0304-419X 1875 , year={Issue 1, 2021, 188452} }