AI Article Synopsis

  • MRI-only radiotherapy planning (MROP) improves patient treatment by eliminating errors from combining MRI and CT images, streamlining workflows, and reducing radiation exposure.
  • The study aimed to enhance the accuracy of synthetic CT (sCT) generated from MRI, especially in bony regions, using an unsupervised deep learning model called CycleGAN with added bony structure constraints and utilizing Dixon images for better contrast.
  • Results showed that the modified multi-channel CycleGAN achieved the highest accuracy in depicting bony structures, with the lowest errors and best similarity to actual planning CT images, making it a promising approach for clinical use.

Article Abstract

Background: MRI-only radiotherapy planning (MROP) is beneficial to patients by avoiding MRI/CT registration errors, simplifying the radiation treatment simulation workflow and reducing exposure to ionizing radiation. MRI is the primary imaging modality for soft tissue delineation. Treatment planning CTs (i.e., CT simulation scan) are redundant if a synthetic CT (sCT) can be generated from the MRI to provide the patient positioning and electron density information. Unsupervised deep learning (DL) models like CycleGAN are widely used in MR-to-sCT conversion, when paired patient CT and MR image datasets are not available for model training. However, compared to supervised DL models, they cannot guarantee anatomic consistency, especially around bone.

Purpose: The purpose of this work was to improve the sCT accuracy generated from MRI around bone for MROP.

Methods: To generate more reliable bony structures on sCT images, we proposed to add bony structure constraints in the unsupervised CycleGAN model's loss function and leverage Dixon constructed fat and in-phase (IP) MR images. Dixon images provide better bone contrast than T2-weighted images as inputs to a modified multi-channel CycleGAN. A private dataset with a total of 31 prostate cancer patients were used for training (20) and testing (11).

Results: We compared model performance with and without bony structure constraints using single- and multi-channel inputs. Among all the models, multi-channel CycleGAN with bony structure constraints had the lowest mean absolute error, both inside the bone and whole body (50.7 and 145.2 HU). This approach also resulted in the highest Dice similarity coefficient (0.88) of all bony structures compared with the planning CT.

Conclusion: Modified multi-channel CycleGAN with bony structure constraints, taking Dixon-constructed fat and IP images as inputs, can generate clinically suitable sCT images in both bone and soft tissue. The generated sCT images have the potential to be used for accurate dose calculation and patient positioning in MROP radiation therapy.

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http://dx.doi.org/10.1002/mp.16556DOI Listing

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