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2021 AAPM Virtual 63rd Annual Meeting - Session: Novel Algorithms for High-quality Diagnostic and On-board Cone-beam CT

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Deep-Learning-Enabled Autofocus for Image-Domain Deformable Motion Compensation in Cone Beam CT
Alejandro Sisniega, PhD Johns Hopkins University

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All videos in this session:
Data-Driven Methods for Image Reconstruction and Artifact Correction in Cone Beam CT - Marc Kachelriess, PhD DKFZ Heidelberg, FS05
New Technologies for Dual Energy Cone Beam CT - Adam Wang, PhD Stanford University
Translating Recent Advances in CBCT to Clinical Practice - Yi Rong, PhD Mayo Clinic Arizona
Q&A - Alejandro Sisniega, PhD Johns Hopkins University
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