论文标题
基于深度学习的数据驱动剂量计算算法
Data-driven dose calculation algorithm based on deep learning
论文作者
论文摘要
在这项研究中,我们对基于深度学习技术实施快速准确的剂量计算进行了可行性研究。首先,使用射线遍历算法将二维(2D)的通量图转换为三维(3D)体积。然后建立了像深残留网络这样的3D U-NET,以学习转换后的3D体积,CT和3D剂量分布之间的映射。因此,在不使用显着复杂的神经网络的情况下,在通量图及其相应的3D剂量分布之间建立了间接关系。收集了200名患者,包括鼻咽,肺,直肠和乳腺癌病例,并应用于训练拟议的网络。随机选择了另外47名患者,以通过比较剂量分布,剂量体积直方图(DVH)和临床指数与治疗计划系统(TPS)的结果来评估所提出方法的准确性,该研究系统(TPS)被用作本研究中的地面真相。结果:拟议的基于深度学习的剂量计算算法实现了良好的预测性能。对于47名测试的患者,相对于TPS计算,深度学习计算值和标准偏差的平均每腔偏置为0.17%。将相关临床指数的平均深度学习计算值和标准偏差与TPS计算的结果进行了比较,t检验p值证明了它们之间的一致性。结论:在这项研究中,我们开发了一种新的基于深度学习的剂量计算方法。通过不同部位的临床病例评估了这种方法。我们的结果表明了其可行性和可靠性,并表明了其提高不同治疗方式辐射剂量计算效率和准确性的巨大潜力
In this study we performed a feasibility investigation on implementing a fast and accurate dose calculation based on a deep learning technique. A two dimensional (2D) fluence map was first converted into a three dimensional (3D) volume using ray traversal algorithm. A 3D U-Net like deep residual network was then established to learn a mapping between this converted 3D volume, CT and 3D dose distribution. Therefore an indirect relationship was built between a fluence map and its corresponding 3D dose distribution without using significantly complex neural networks. 200 patients, including nasopharyngeal, lung, rectum and breast cancer cases, were collected and applied to train the proposed network. Additional 47 patients were randomly selected to evaluate the accuracy of the proposed method through comparing dose distributions, dose volume histograms (DVH) and clinical indices with the results from a treatment planning system (TPS), which was used as the ground truth in this study. Results: The proposed deep learning based dose calculation algorithm achieved good predictive performance. For 47 tested patients, the average per-voxel bias of the deep learning calculated value and standard deviation (normalized to the prescription), relative to the TPS calculation, is 0.17%. The average deep learning calculated values and standard deviations for relevant clinical indices were compared with the TPS calculated results and the t-test p-values demonstrated the consistency between them. Conclusions: In this study we developed a new deep learning based dose calculation method. This approach was evaluated by the clinical cases with different sites. Our results demonstrated its feasibility and reliability and indicated its great potential to improve the efficiency and accuracy of radiation dose calculation for different treatment modalities