Department of Nuclear Medicine, College of Medicine, Seoul National University, Seoul, 03080, Korea.
Department of Biomedical Sciences, College of Medicine, Seoul National University, Seoul, 03080, Korea.
Sci Rep. 2019 Jul 16;9(1):10308. doi: 10.1038/s41598-019-46620-y.
Personalized dosimetry with high accuracy is crucial owing to the growing interests in personalized medicine. The direct Monte Carlo simulation is considered as a state-of-art voxel-based dosimetry technique; however, it incurs an excessive computational cost and time. To overcome the limitations of the direct Monte Carlo approach, we propose using a deep convolutional neural network (CNN) for the voxel dose prediction. PET and CT image patches were used as inputs for the CNN with the given ground truth from direct Monte Carlo. The predicted voxel dose rate maps from the CNN were compared with the ground truth and dose rate maps generated voxel S-value (VSV) kernel convolution method, which is one of the common voxel-based dosimetry techniques. The CNN-based dose rate map agreed well with the ground truth with voxel dose rate errors of 2.54% ± 2.09%. The VSV kernel approach showed a voxel error of 9.97% ± 1.79%. In the whole-body dosimetry study, the average organ absorbed dose errors were 1.07%, 9.43%, and 34.22% for the CNN, VSV, and OLINDA/EXM dosimetry software, respectively. The proposed CNN-based dosimetry method showed improvements compared to the conventional dosimetry approaches and showed results comparable with that of the direct Monte Carlo simulation with significantly lower calculation time.
由于人们对个性化医学越来越感兴趣,因此高精度的个性化剂量学至关重要。直接蒙特卡罗模拟被认为是一种基于体素的先进剂量学技术;然而,它会带来过高的计算成本和时间。为了克服直接蒙特卡罗方法的局限性,我们提出使用深度卷积神经网络(CNN)进行体素剂量预测。将 PET 和 CT 图像补丁用作 CNN 的输入,并使用来自直接蒙特卡罗的真实值作为输入。将从 CNN 预测的体素剂量率图与真实值和体素 S 值(VSV)核卷积方法生成的剂量率图进行比较,体素 S 值(VSV)核卷积方法是一种常见的基于体素的剂量学技术。基于 CNN 的剂量率图与真实值吻合良好,体素剂量率误差为 2.54%±2.09%。VSV 核方法的体素误差为 9.97%±1.79%。在全身剂量学研究中,对于 CNN、VSV 和 OLINDA/EXM 剂量学软件,器官吸收剂量的平均误差分别为 1.07%、9.43%和 34.22%。与传统剂量学方法相比,所提出的基于 CNN 的剂量学方法得到了改善,并且与直接蒙特卡罗模拟的结果相当,而计算时间明显降低。