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Automatic Online Quality Control of Synthetic CTs

机译:合成CT的自动在线质量控制

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Accurate MR-to-CT synthesis is a requirement for MR-only workflows in radiotherapy (RT) treatment planning. In recent years, deep learning-based approaches have shown impressive results in this field. However, to prevent downstream errors in RT treatment planning, it is important that deep learning models are only applied to data for which they are trained and that generated synthetic CT (sCT) images do not contain severe errors. For this, a mechanism for online quality control should be in place. In this work, we use an ensemble of sCT generators and assess their disagreement as a measure of uncertainty of the results. We show that this uncertainty measure can be used for two kinds of online quality control. First, to detect input images that are outside the expected distribution of MR images. Second, to identify sCT images that were generated from suitable MR images but potentially contain errors. Such automatic online quality control for sCT generation is likely to become an integral part of MR-only RT workflows.
机译:准确的MR到CT合成是放射治疗(RT)治疗计划中仅MR工作流程的要求。近年来,基于深度学习的方法在该领域显示出了令人印象深刻的结果。但是,为防止在RT治疗计划中出现下游错误,重要的是深度学习模型仅应用于经过训练的数据,并且生成的合成CT(sCT)图像不包含严重错误。为此,应该建立在线质量控制机制。在这项工作中,我们使用了一组sCT生成器,并评估了它们的不同之处,以衡量结果的不确定性。我们表明,这种不确定性度量可用于两种在线质量控制。首先,检测超出MR图像预期分布的输入图像。其次,识别从合适的MR图像生成但可能包含错误的sCT图像。这种用于sCT生成的自动在线质量控制可能会成为纯MR RT工作流程中不可或缺的一部分。

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