An Improved Deep Learning Framework For Mr-To-Ct Image Synthesis With A New Hybrid Objective Function
Sui Paul Ang, Son Lam Phung, Matthew Field, Mark Schira
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There is an emerging interest in radiotherapy treatment planning that uses only magnetic resonance (MR) imaging. Current clinical workflows rely on computed tomography (CT) images for dose calculation and patient positioning, therefore synthetic CT images need to be derived from MR images. Recent efforts for MR-to-CT image synthesis have focused on unsupervised training for ease of data preparation. However, accuracy is more important than convenience. In this paper, we propose a deep learning framework for MR-to-CT image synthesis that is trained in a supervised manner. The proposed framework utilizes a new hybrid objective function to enforce visual realism, accurate electron density information, and structural consistency between the MR and CT image domains. Our experiments show that the proposed method (MAE of 68.22, PSNR of 22.28, and FID of 0.73) outperforms the existing unsupervised and supervised techniques in both quantitative and qualitative comparisons.