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Dr. Gurcan has written a chapter in the recently published book, "Digital Pathology"

Dr. Gurcan has contributed to the newly published book, "Digital Pathology." He has written a chapter on the fundamentals of image analysis.

To purchase the textbook, follow the link: https://www.ascp.org/store/productlisting/productdetail?productId=36433654

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