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From patient-informed to patient-specific organ dose estimation in clinical computed tomography

机译:从患者信息到临床计算机断层扫描中的患者特异性器官剂量估算

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Many hospitals keep a record of dose after each patient's CT scan to monitor and manage radiation risks. To facilitate risk management, it is essential to use the most relevant metric, which is the patient-specific organ dose. The purpose of this study was to develop and validate a patient-specific and automated organ dose estimation framework. This framework includes both patient and radiation exposure modeling. From patient CT images, major organs were automatically segmented using Convolutional Neural Networks (CNNs). Smaller organs and structures that were not otherwise segmented were automatically filled in by deforming a matched XCAT phantom from an existing library of models. The organ doses were then estimated using a validated Monte Carlo (PENELOPE) simulation. The segmentation and deformation components of the framework were validated independently. The segmentation methods were trained and validated using 50-patient CT datasets that were manually delineated. The deformation methods were validated using a leave-one-out technique across 50 existing XCAT phantoms that were deformed to create a patient-specific XCAT for each of 50 targets. Both components were evaluated in terms of dice similarity coefficients (DSC) and organ dose. For dose comparisons, a clinical chest-abdomen-pelvis protocol was simulated under fixed tube current (mA). The organ doses were estimated by a validated Monte Carlo package and compared between automated and manual segmentation and between patient-specific XCAT phantoms and their corresponding XCAT targets. Organ dose for phantoms from automated vs. manual segmentation showed a ~2% difference, and organ dose for phantoms deformed by the study vs. their targets showed a variation of ~5% for most organs. These results demonstrate the great potential to assess organ doses in a highly patient-specific manner.
机译:许多医院在每位患者的CT扫描后保留记录剂量以监测和管理辐射风险。为了促进风险管理,必须使用最相关的公制,这是特定患者的器官剂量。本研究的目的是开发和验证患者特异性和自动化器官剂量估计框架。该框架包括患者和辐射曝光建模。从患者CT图像,主要使用卷积神经网络(CNNS)自动分段。通过从现有的模型库中变形匹配的XCAT幻像,自动填充未另行分段的较小器官和结构。然后使用经过验证的蒙特卡罗(Penelope)模拟估计器官剂量。框架的分割和变形组分独立验证。使用手动描绘的50例患者CT数据集进行培训并验证分段方法。使用横跨50个现有的XcAT杂色的休养方法进行验证,验证了变形方法,其变形为50个靶标的患者特异性XcAT。在骰子相似度系数(DSC)和器官剂量方面评估了两种组分。对于剂量比较,在固定管电流(MA)下模拟了临床胸部骨盆方案。器官剂量由经过验证的蒙特卡罗包估计,并在自动化和手动分段之间以及患者特异性Xcat幽灵之间进行比较和相应的Xcat靶。器官剂量来自自动化与自动化对的手动分段显示出〜2%的差异,并且通过该研究与幽灵变形的幽灵器官剂量与大多数器官的变异显示出〜5%的变化。这些结果表明,以高患者特异性方式评估器官剂量的巨大潜力。

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