Artificial intelligence for detecting small FDG-positive lung nodules in digital PET/CT: impact of image reconstructions on diagnostic performance
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V. Treyer | G. V. von Schulthess | Daniela A. Ferraro | I. Burger | P. Kaufmann | K. Martini | M. Messerli | M. Schwyzer | D. Benz | Ken Kudura | M. Huellner | D. C. Benz | K. Kudura
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