MRI-based treatment planning for liver stereotactic body radiotherapy: validation of a deep learning-based synthetic CT generation method
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Title
MRI-based treatment planning for liver stereotactic body radiotherapy: validation of a deep learning-based synthetic CT generation method
Authors
Keywords
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Journal
BRITISH JOURNAL OF RADIOLOGY
Volume 92, Issue 1100, Pages 20190067
Publisher
British Institute of Radiology
Online
2019-06-13
DOI
10.1259/bjr.20190067
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