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Synthetic CT generation from CBCT images via deep learning

机译:来自CBCT图像的合成CT通过深度学习生成

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Purpose Cone‐beam computed tomography (CBCT) scanning is used daily or weekly (i.e., on‐treatment CBCT) for accurate patient setup in image‐guided radiotherapy. However, inaccuracy of CT numbers prevents CBCT from performing advanced tasks such as dose calculation and treatment planning. Motivated by the promising performance of deep learning in medical imaging, we propose a deep U‐net‐based approach that synthesizes CT‐like images with accurate numbers from planning CT, while keeping the same anatomical structure as on‐treatment CBCT. Methods We formulated the CT synthesis problem under a deep learning framework, where a deep U‐net architecture was used to take advantage of the anatomical structure of on‐treatment CBCT and image intensity information of planning CT. U‐net was chosen because it exploits both global and local features in the image spatial domain, matching our task to suppress global scattering artifacts and local artifacts such as noise in CBCT. To train the synthetic CT generation U‐net (sCTU‐net), we include on‐treatment CBCT and initial planning CT of 37 patients (30 for training, seven for validation) as the input. Additional replanning CT images acquired on the same day as CBCT after deformable registration are utilized as the corresponding reference. To demonstrate the effectiveness of the proposed sCTU‐net, we use another seven independent patient cases (560 slices) for testing. Results We quantitatively compared the resulting synthetic CT (sCT) with the original CBCT image using deformed same‐day pCT images as reference. The averaged accuracy measured by mean absolute error (MAE) between sCT and reference CT (rCT) on testing data is 18.98?HU, while MAE between CBCT and rCT is 44.38 HU. Conclusions The proposed sCTU‐net can synthesize CT‐quality images with accurate CT numbers from on‐treatment CBCT and planning CT. This potentially enables advanced CBCT applications for adaptive treatment planning.
机译:目的锥形束计算机断层扫描(CBCT)扫描每日或每周使用(即,在治疗CBCT)中用于图像引导放射治疗中的准确患者设置。然而,CT号码的不准确性阻止CBCT执行高级任务,例如剂量计算和治疗计划。在医学成像中深入学习的有希望性能的动机,我们提出了一种基于U-Net的基于U-Net的方法,该方法与规划CT的准确数字合成CT样图像,同时保持与治疗CBCT相同的解剖结构。方法我们在深度学习框架下制定了CT综合问题,其中使用深度U-Net架构利用规划CT的治疗CBCT和图像强度信息的解剖结构。选择U-Net,因为它利用了图像空间域中的全局和本地功能,匹配我们的任务来抑制全球散射工件和当地工件,例如CBCT中的噪声。为了培训合成CT生成U-Net(SCTU-Net),我们包括治疗CBCT和37名患者的初始计划CT(30次训练,七个用于验证)作为输入。在可变形配准后,在当天在同一天获取的额外重新恢复CT图像作为相应的参考。为了证明所提出的SCTU-Net的有效性,我们使用另外七种独立患者案例(560片)进行测试。结果我们使用变形的当天PCT图像作为参考的变形当天PCT图像来定量地将所得合成CT(SCT)与原始CBCT图像进行比较。通过SCT和参考CT(RCT)之间的平均绝对误差(MAE)测量的平均准确度为18.98?HU,而CBCT和RCT之间的MAE是44.38 HU。结论所提出的SCTU-NET可以用精确的CT编号从治疗CBCT和规划CT合成CT质量图像。这可能使高级CBCT应用用于自适应治疗计划。

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