首页> 外文期刊>Journal of applied clinical medical physics / >Boosting radiotherapy dose calculation accuracy with deep learning
【24h】

Boosting radiotherapy dose calculation accuracy with deep learning

机译:深度学习提高放疗剂量计算精度

获取原文
       

摘要

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: Anisotropic analytic algorithm (AAA) and Acuros XB (AXB). A hierarchically dense U‐Net model was developed to boost the accuracy of AAA dose toward 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. Anisotropic analytic algorithm and AXB doses were calculated in pairs for 120 lung radiotherapy plans covering various treatment techniques, beam energies, tumor locations, and dose levels. For each case, the CT and the AAA dose were used as the input and the AXB dose as the “ground‐truth” output, to train and test the model. The mean squared errors (MSEs) and gamma passing rates (2?mm/2% & 1?mm/1%) were calculated between the boosted AAA doses and the “ground‐truth” AXB doses. The boosted AAA doses demonstrated substantially improved match to the “ground‐truth” AXB doses, with average (± s.d.) gamma passing rate (1?mm/1%) 97.6% (±2.4%) compared to 87.8% (±9.0%) of the original AAA doses. The corresponding average MSE was 0.11(±0.05) vs 0.31(±0.21). Deep learning is able to capture the differences between dose calculation algorithms to boost the low‐accuracy algorithms. By combining a less accurate dose calculation algorithm with a trained deep learning model, dose calculation can potentially achieve both high accuracy and efficiency.
机译:在放射疗法中,在计算工作负载/速度和剂量计算精度之间存在权衡。计算方法如铅笔束卷积,比Monte-Carlo方法更快,但更准确。剂量差异主要由不均匀性和电子不平衡引起,与剂量分布和潜在的解剖组织密度高度相关。我们假设可以建立转换方案以利用从计算机断层扫描(CT)图像获得的强度信息来提高低精度剂量以高精度。开发了深入的学习驱动的框架来通过转换两种商业化剂量计算方法来测试假设:各向异性分析算法(AAA)和ACUROS XB(AXB)。开发了一种分层致密的U-NET模型以提高AAA剂量朝向AXB水平的准确性。网络包含多个不同的特征尺寸,以在本地和全球地区的与CT的关系中学习它们的剂量差异。各向异性分析算法和AXB剂量成对计算,用于覆盖各种治疗技术,梁能量,肿瘤位置和剂量水平的120肺放射疗法计划。对于每种情况,CT和AAA剂量用作输入和AXB剂量作为“地面真理”输出,培训和测试模型。在增强AAA剂量和“地理真理”AXB剂量之间计算平均平方误差(MSES)和γ通过速率(2毫米/ 2%&1?mm / 1%)。增强的AAA剂量表现出与“地面真理”AXB剂量的显着改善的匹配,平均(±SD)γ通过速率(1?mm / 1%)97.6%(±2.4%),而87.8%(±9.0%) )原始的AAA剂量。相应的平均MSE为0.11(±0.05)Vs 0.31(±0.21)。深度学习能够捕获剂量计算算法之间的差异来提高低精度算法。通过将缺陷的深度学习模型组合较低的剂量计算算法,剂量计算可能占用高精度和效率。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号