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Drs. Goceri and Gurcan Published in Computer in Biology and Medicine Journal


Drs.  Goceri and Gurcan have a new paper published in Computers in Biology and Medicine, April 2016 edition. Their paper "Quantification of liver fat: A comprehensive review" provides an overview on recent advantages in liver fat quantification and discusses the role of dedicated imaging modalities for quantification of liver fat. Their paper also assesses the potential role of automated image processing methodologies to aid in image analysis.

The abstract and full paper can be found at the following website: http://www.computersinbiologyandmedicine.com/article/S0010-4825(16)30042-7/abstract


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