KMID : 1148920230570020094
|
|
Nuclear Medicine and Molecular Imaging 2023 Volume.57 No. 2 p.94 ~ p.102
|
|
Voxel-Based Internal Dosimetry for 177Lu-Labeled Radiopharmaceutical Therapy Using Deep Residual Learning
|
|
Kim Keon-Min
Lee Min-Sun Suh Min-Seok Cheon Gi-Jeong Lee Jae-Sung
|
|
Abstract
|
|
|
Purpose : In this study, we propose a deep learning (DL)?based voxel-based dosimetry method in which dose maps acquired using the multiple voxel S-value (VSV) approach were used for residual learning.
Methods : Twenty-two SPECT/CT datasets from seven patients who underwent 177Lu-DOTATATE treatment were used in this study. The dose maps generated from Monte Carlo (MC) simulations were used as the reference approach and target images for network training. The multiple VSV approach was used for residual learning and compared with dose maps generated from deep learning. The conventional 3D U-Net network was modified for residual learning. The absorbed doses in the organs were calculated as the mass-weighted average of the volume of interest (VOI).
Results : he DL approach provided a slightly more accurate estimation than the multiple-VSV approach, but the results were not statistically significant. The single-VSV approach yielded a relatively inaccurate estimation. No significant difference was noted between the multiple VSV and DL approach on the dose maps. However, this difference was prominent in the error maps. The multiple VSV and DL approach showed a similar correlation. In contrast, the multiple VSV approach underestimated doses in the low-dose range, but it accounted for the underestimation when the DL approach was applied.
Conclusion : Dose estimation using the deep learning?based approach was approximately equal to that in the MC simulation. Accordingly, the proposed deep learning network is useful for accurate and fast dosimetry after radiation therapy using 177Lu-labeled radiopharmaceuticals.
|
|
KEYWORD
|
|
Radiation dosimetry, Deep learning, 3D U-net, Dose kernel, Radionuclide therapy, Monte Carlo simulation
|
|
FullTexts / Linksout information
|
|
|
|
Listed journal information
|
|
|