Effect of slab thickness on pulmonary nodule detection using maximum intensity projection in a deep learning-based computer-aided detection system
S. Zheng (Groningen, Netherlands), X. Cui (Tianjin, China), M. Vonder (Groningen, Netherlands), R. Veldhuis (Enschede, Netherlands), M. Dorrius (Groningen, Netherlands), Z. Ye (Tianjin, China), R. Vliegenthart (Groningen, Netherlands), M. Oudkerk (Groningen, Netherlands), P. Van Ooijen (Groningen, Netherlands)
Source: Virtual Congress 2020 – Screening and imaging in lung cancer
Session: Screening and imaging in lung cancer
Session type: Oral Presentation
Number: 4169
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S. Zheng (Groningen, Netherlands), X. Cui (Tianjin, China), M. Vonder (Groningen, Netherlands), R. Veldhuis (Enschede, Netherlands), M. Dorrius (Groningen, Netherlands), Z. Ye (Tianjin, China), R. Vliegenthart (Groningen, Netherlands), M. Oudkerk (Groningen, Netherlands), P. Van Ooijen (Groningen, Netherlands). Effect of slab thickness on pulmonary nodule detection using maximum intensity projection in a deep learning-based computer-aided detection system. 4169
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