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Imaging And Genomics: Is There A Synergy?

C. Jaffe
Published 2012 · Medicine

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One promising route for imaging is exemplified by the article by Gevaert et al in this issue: That study, which analyzed features extracted from non–small cell lung cancer CT and PET cases, offers an original approach to exploring the clinical prognostic value of imaging-genomics.
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