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Deep learning-based fully automatic segmentation of whole-body [18F]FDG PET/CT images from lymphoma patients: addition of CT data has poor impact on networks performance
Deep learning-based fully automatic segmentation of whole-body [18F]FDG PET/CT images from lymphoma patients: addition of CT data has poor impact on networks performance
Type
Other Publications
Year
2023
Authors
Constantino, CS
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Oliveira, FPM
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Leocádio, S
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Silva, M
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Oliveira, C
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Castanheira, JC
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Teixeira, R
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Neves, M
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Lúcio, P
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Joao, C
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Vinga, S
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Costa, DC
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