Utility of virtual monoenergetic images from spectral detector computed tomography in improving image segmentation for purposes of 3D printing and modeling

Journal Title: 3D Printing in Medicine - Year 2019, Vol 5, Issue

Abstract

The datasets used and/or analyzed during the current study are available from the corresponding author on reasonable request.

Authors and Affiliations

Elias Kikano, Nils Grosse Hokamp, Leslie Ciancibello, Nikhil Ramaiya, Christos Kosmas, Amit Gupta

Keywords

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  • EP ID EP680701
  • DOI  10.1186/s41205-019-0038-y
  • Views 44
  • Downloads 0

How To Cite

Elias Kikano, Nils Grosse Hokamp, Leslie Ciancibello, Nikhil Ramaiya, Christos Kosmas, Amit Gupta (2019). Utility of virtual monoenergetic images from spectral detector computed tomography in improving image segmentation for purposes of 3D printing and modeling. 3D Printing in Medicine, 5(), -. https://europub.co.uk/articles/-A-680701