CT Texture Analysis: Definitions, Applications, Biologic Correlates, and Challenges.
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Perry J Pickhardt | D. Sahani | P. Pickhardt | M. Lubner | K. Sandrasegaran | Dushyant V Sahani | Meghan G Lubner | Andrew D Smith | Kumar Sandrasegaran | Andrew D. Smith
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