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首页> 外文期刊>Advances in Radiation Oncology >Robustness and Generalizability of Deep Learning Synthetic Computed Tomography for Positron Emission Tomography/Magnetic Resonance Imaging–Based Radiation Therapy Planning of Patients With Head and Neck Cancer
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Robustness and Generalizability of Deep Learning Synthetic Computed Tomography for Positron Emission Tomography/Magnetic Resonance Imaging–Based Radiation Therapy Planning of Patients With Head and Neck Cancer

机译:正电子发射断层扫描/磁共振成像的深度学习合成计算断层扫描的鲁棒性和完全性

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PurposeRadiotherapy planning based only on positron emission tomography/magnetic resonance imaging (PET/MRI) lacks computed tomography (CT) information required for dose calculations. In this study, a previously developed deep learning model for creating synthetic CT (sCT) from MRI in patients with head and neck cancer was evaluated in 2 scenarios: (1) using an independent external dataset, and (2) using a local dataset after an update of the model related to scanner software-induced changes to the input MRI.Methods and MaterialsSix patients from an external site and 17 patients from a local cohort were analyzed separately. Each patient underwent a CT and a PET/MRI with a Dixon MRI sequence over either one (external) or 2 (local) bed positions. For the external cohort, a previously developed deep learning model for deriving sCT from Dixon MRI was directly applied. For the local cohort, we adapted the model for an upgraded MRI acquisition using transfer learning and evaluated it in a leave-one-out process. The sCT mean absolute error for each patient was assessed. Radiotherapy dose plans based on sCT and CT were compared by assessing relevant absorbed dose differences in target volumes and organs at risk.ResultsThe MAEs were 78 ± 13 HU and 76 ± 12 HU for the external and local cohort, respectively. For the external cohort, absorbed dose differences in target volumes were within ± 2.3% and within ± 1% in 95% of the cases. Differences in organs at risk were <2%. Similar results were obtained for the local cohort.ConclusionsWe have demonstrated a robust performance of a deep learning model for deriving sCT from MRI when applied to an independent external dataset. We updated the model to accommodate a larger axial field of view and software-induced changes to the input MRI. In both scenarios dose calculations based on sCT were similar to those of CT suggesting a robust and reliable method.
机译:仅基于正电子发射断层扫描/磁共振成像(PET / MRI)的Purposeradiotherapy规划缺乏剂量计算所需的计算机断层扫描(CT)信息。在这项研究中,在2场景中评估了从头部和颈部癌症患者中MRI创建合成CT(SCT)的先前开发的深层学习模型:(1)使用独立的外部数据集,(2)使用当地数据集分别分别分析与扫描MRI.Methods和来自外部部位的17名患者的扫描仪软件引起的改变的模型的更新。每位患者在一个(外部)或2(本地)床位上具有Dixon MRI序列的CT和PET / MRI。对于外部队列,直接申请从迪克森MRI获得SCT的先前开发的深度学习模型。对于本地队列,我们​​使用转移学习进行了升级的MRI采集的模型,并在休假过程中进行了评估。评估每个患者的SCT指明绝对误差。通过评估靶量体积和器官的相关吸收剂量差异来比较基于SCT和CT的放射疗法的剂量计划分别为危险的靶量和器官的相关吸收剂量差异进行了比较。方法分别为78±13胡锦涛和76±12胡锦涛为外部和本地队列。对于外部队列,目标体积的吸收剂量差异在±2.3%内,95%的病例中的±1%内。风险的器官的差异为<2%。为本地Cohort.Conclusions获得了类似的结果。当应用于独立外部数据集时,Conclusionswe已经证明了从MRI中得出的SCT的深度学习模型的稳健性能。我们更新了模型,以适应更大的轴向视野和软件引起的输入MRI的更改。在这两种情况下,基于SCT的剂量计算类似于CT建议稳健且可靠的方法。

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