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Accurate tracking of tumor volume change during radiotherapy by CT-CBCT registration with intensity correction

机译:通过CT-CBCT配准和强度校正准确追踪放疗期间的肿瘤体积变化

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In this paper, we propose a CT-CBCT registration method to accurately predict the tumor volume change based on daily cone-beam CTs (CBCTs) during radiotherapy. CBCT is commonly used to reduce patient setup error during radiotherapy, but its poor image quality impedes accurate monitoring of anatomical changes. Although physician's contours drawn on the planning CT can be automatically propagated to daily CBCTs by deformable image registration (DIR), artifacts in CBCT often cause undesirable errors. To improve the accuracy of the registration-based segmentation, we developed a DIR method that iteratively corrects CBCT intensities by local histogram matching. Three popular DIR algorithms (B-spline, demons, and optical flow) with the intensity correction were implemented on a graphics processing unit for efficient computation. We evaluated their performances on six head and neck (HN) cancer cases. For each case, four trained scientists manually contoured the nodal gross tumor volume (GTV) on the planning CT and every other fraction CBCTs to which the propagated GTV contours by DIR were compared. The performance was also compared with commercial image registration software based on conventional mutual information (MI), VelocityAI (Varian Medical Systems Inc.). The volume differences (mean±std in cc) between the average of the manual segmentations and automatic segmentations are 3.70±2.30 (B-spline), 1.25±1.78 (demons), 0.93±1.14 (optical flow), and 4.39±3.86 (VelocityAI). The proposed method significantly reduced the estimation error by 9% (B-spline), 38% (demons), and 51% (optical flow) over the results using VelocityAI. Although demonstrated only on HN nodal GTVs, the results imply that the proposed method can produce improved segmentation of other critical structures over conventional methods.
机译:在本文中,我们提出了一种CT-CBCT配准方法,可以基于放射治疗期间的每日锥形束CT(CBCT)准确预测肿瘤体积的变化。 CBCT通常用于减少放射治疗期间的患者设置错误,但是其差的图像质量妨碍了对解剖变化的精确监控。尽管计划CT上绘制的医师轮廓可以通过可变形图像配准(DIR)自动传播到日常CBCT,但CBCT中的伪影通常会引起不希望的错误。为了提高基于配准的分割的准确性,我们开发了一种DIR方法,该方法通过局部直方图匹配来迭代地校正CBCT强度。在图形处理单元上实现了三种具有强度校正的流行DIR算法(B样条,恶魔和光流),以进行有效的计算。我们评估了它们在6例头颈(HN)癌症病例中的表现。对于每种情况,四名训练有素的科学家在计划的CT和其他每部分CBCT上手动绘制了节点总肿瘤体积(GTV)的轮廓,并与通过DIR传播的GTV轮廓进行了比较。还将性能与基于常规互信息(MI)的商业图像配准软件VelocityAI(Varian Medical Systems Inc.)进行了比较。手动分割和自动分割的平均值之间的体积差异(cc的均值±std)为3.70±2.30(B样条曲线),1.25±1.78(恶魔),0.93±1.14(光学流)和4.39±3.86( VelocityAI)。与使用VelocityAI的结果相比,所提出的方法将估计误差显着降低了9%(B样条曲线),38%(恶魔)和51%(光学流)。尽管仅在HN节点GTV上进行了演示,但结果表明,与传统方法相比,所提出的方法可以对其他关键结构进行改进的分割。

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