Task-based statistical image reconstruction for high-quality cone-beam CT
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Xiaohui Wang | Wojciech Zbijewski | Jeffrey H Siewerdsen | Nafi Aygun | Alejandro Sisniega | J Webster Stayman | Jennifer Xu | Hao Dang | Michael Mow | David H Foos | Vassilis E Koliatsos | N. Aygun | J. Siewerdsen | W. Zbijewski | Xiaohui Wang | D. Foos | J. Stayman | V. Koliatsos | H. Dang | A. Sisniega | Jennifer Xu | M. Mow
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