论文标题

通过深度学习提高放疗剂量计算精度

Boosting radiotherapy dose calculation accuracy with deep learning

论文作者

Xing, Yixun, D., Ph., Zhang, You, D., Ph., Nguyen, Dan, D., Ph., Lin, Mu-Han, D., Ph., Lu, Weiguo, D., Ph., Jiang, Steve, D, Ph.

论文摘要

在放射疗法中,计算工作量/速度和剂量计算精度之间存在权衡。诸如铅笔梁卷积之类的计算方法可能比蒙特卡洛方法快得多,但准确性较低。剂量差异主要是由不均匀性和电子不平衡引起的,与剂量分布和潜在的解剖组织密度高度相关。我们假设可以使用从计算机断层扫描(CT)图像获得的强度信息来建立转化方案,以将低临界剂量提高到高临界性。开发了一个深度学习驱动的框架来检验假设,通过在两种商业上可用的剂量计算方法之间转换:AAA(AAAA(各向异性分析))和AXB(ACUROS XB)。一个层次上的U-NET模型是为了提高AAA dose dose dose dose的准确性的U-NET模型。该网络包含多个不同特征大小的层,以了解与本地和全球CT关系的剂量差异。 AAA和AXB剂量以120个肺放疗计划的成对计算,涵盖了各种治疗技术,束能量,肿瘤位置和剂量水平。

In radiotherapy, a trade-off exists between computational workload/speed and dose calculation accuracy. Calculation methods like pencil-beam convolution can be much faster than Monte-Carlo methods, but less accurate. The dose difference, mostly caused by inhomogeneities and electronic disequilibrium, is highly correlated with the dose distribution and the underlying anatomical tissue density. We hypothesize that a conversion scheme can be established to boost low-accuracy doses to high-accuracy, using intensity information obtained from computed tomography (CT) images. A deep learning-driven framework was developed to test the hypothesis by converting between two commercially-available dose calculation methods: AAA (anisotropic-analytic-algorithm) and AXB (Acuros XB).A hierarchically-dense U-Net model was developed to boost the accuracy of AAA dose towards the AXB level. The network contained multiple layers of varying feature sizes to learn their dose differences, in relationship to CT, both locally and globally. AAA and AXB doses were calculated in pairs for 120 lung radiotherapy plans covering various treatment techniques, beam energies, tumor locations, and dose levels.

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