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Clinical validation of a commercially available deep learning software for synthetic CT generation for brain

机译:脑脑合成CT生成的市售深层学习软件的临床验证

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Most studies on synthetic computed tomography (sCT) generation for brain rely on in-house developed methods. They often focus on performance rather than clinical feasibility. Therefore, the aim of this work was to validate sCT images generated using a commercially available software, based on a convolutional neural network (CNN) algorithm, to enable MRI-only treatment planning for the brain in a clinical setting. This prospective study included 20 patients with brain malignancies of which 14 had areas of resected skull bone due to surgery. A Dixon magnetic resonance (MR) acquisition sequence for sCT generation was added to the clinical brain MR-protocol. The corresponding sCT images were provided by the software MRI Planner (Spectronic Medical AB, Sweden). sCT images were rigidly registered and resampled to CT for each patient. Treatment plans were optimized on CT and recalculated on sCT images for evaluation of dosimetric and geometric endpoints. Further analysis was also performed for the post-surgical cases. Clinical robustness in patient setup verification was assessed by rigidly registering cone beam CT (CBCT) to sCT and CT images, respectively. All sCT images were successfully generated. Areas of bone resection due to surgery were accurately depicted. Mean absolute error of the sCT images within the body contour for all patients was 62.2?±?4.1 HU. Average absorbed dose differences were below 0.2% for parameters evaluated for both targets and organs at risk. Mean pass rate of global gamma (1%/1?mm) for all patients was 100.0?±?0.0% within PTV and 99.1?±?0.6% for the full dose distribution. No clinically relevant deviations were found in the CBCT-sCT vs CBCT-CT image registrations. In addition, mean values of voxel-wise patient specific geometric distortion in the Dixon images for sCT generation were below 0.1?mm for soft tissue, and below 0.2?mm for air and bone. This work successfully validated a commercially available CNN-based software for sCT generation. Results were comparable for sCT and CT images in both dosimetric and geometric evaluation, for both patients with and without anatomical anomalies. Thus, MRI Planner is feasible to use for radiotherapy treatment planning of brain tumours.
机译:大多数研究综合计算断层扫描(SCT)的研究依赖于内部开发方法。他们经常专注于性能而不是临床可行性。因此,这项工作的目的是验证基于卷积神经网络(CNN)算法的商业上可用软件生成的SCT图像,以使临床环境中的大脑能够实现MRI治疗计划。该前瞻性研究包括20例脑病患者,其中14名脑病由于手术引起的被切除的头骨骨。将SCT产生的Dixon磁共振(MR)采集序列加入到临床脑MR-Qualita。通过软件MRI计划者(Spectronic Medical Ab,瑞典)提供相应的SCT图像。对于每位患者,SCT图像刚性注册并重新采样至CT。处理计划在CT上进行了优化,并在SCT图像上重新计算,以评估剂量测定和几何终点。还对外科后病例进行了进一步的分析。通过分别将锥形光束CT(CBCT)刚性地注册到SCT和CT图像来评估患者设置验证的临床稳健性。所有SCT图像都已成功生成。准确地描绘了由于手术引起的骨切除区域。所有患者身体轮廓内的SCT图像的平均绝对误差为62.2?±4.1胡。对于靶标和器官的参数,平均吸收剂量差异低于0.2%,对于风险有靶标和器官。所有患者的全球γ(1%/ 1×mm)的平均速率为100.0〜±0.0%在PTV和99.1〜±0.6%以上的全剂量分布。在CBCT-SCT VS CBCT-CT图像注册中发现了没有临床相关偏差。此外,对于SCT产生的Dixon图像中的Voxel-Wise患者特异性几何变形的平均值低于0.1Ωmm,对于软组织,低于0.2ΩΩmm。空气和骨骼。这项工作成功验证了用于SCT生成的商业上可用的基于CNN的软件。对于患有和不含解剖异常的患者,患有剂量和几何评估中的SCT和CT图像的结果可比较。因此,MRI规划师可用于用于脑肿瘤的放射治疗计划。

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