A 3D deep convolutional neural network approach for the automated measurement of cerebellum tracer uptake in FDG PET-CT scans.
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John M Buatti | Christian Bauer | Xiaofan Xiong | Timothy J Linhardt | Weiren Liu | Brian J Smith | Wenqing Sun | John J Sunderland | Michael M Graham | Reinhard R Beichel | Brian J. Smith | J. Buatti | M. Graham | Wenqing Sun | J. Sunderland | R. Beichel | Christian Bauer | Weiren Liu | Timothy J. Linhardt | Xiaofan Xiong
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