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首页> 外文期刊>Scientific reports. >Dual-energy CT for automatic organs-at-risk segmentation in brain-tumor patients using a multi-atlas and deep-learning approach
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Dual-energy CT for automatic organs-at-risk segmentation in brain-tumor patients using a multi-atlas and deep-learning approach

机译:双能CT使用多图谱和深度学习方法对脑肿瘤患者的危险器官自动分割

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In radiotherapy, computed tomography (CT) datasets are mostly used for radiation treatment planning to achieve a high-conformal tumor coverage while optimally sparing healthy tissue surrounding the tumor, referred to as organs-at-risk (OARs). Based on CT scan and/or magnetic resonance images, OARs have to be manually delineated by clinicians, which is one of the most time-consuming tasks in the clinical workflow. Recent multi-atlas (MA) or deep-learning (DL) based methods aim to improve the clinical routine by an automatic segmentation of OARs on a CT dataset. However, so far no studies investigated the performance of these MA or DL methods on dual-energy CT (DECT) datasets, which have been shown to improve the image quality compared to conventional 120?kVp single-energy CT. In this study, the performance of an in-house developed MA and a DL method (two-step three-dimensional U-net) was quantitatively and qualitatively evaluated on various DECT-derived pseudo-monoenergetic CT datasets ranging from 40?keV to 170?keV. At lower energies, the MA method resulted in more accurate OAR segmentations. Both the qualitative and quantitative metric analysis showed that the DL approach often performed better than the MA method.
机译:在放射治疗中,计算机断层扫描(CT)数据集主要用于放射治疗计划,以达到高保形的肿瘤覆盖率,同时最佳地保留肿瘤周围的健康组织,称为有风险的器官(OARs)。基于CT扫描和/或磁共振图像,临床医生必须手动描述OAR,这是临床工作流程中最耗时的任务之一。最近基于多图集(MA)或深度学习(DL)的方法旨在通过在CT数据集上自动分割OAR来改善临床常规。但是,到目前为止,尚无研究调查这些MA或DL方法在双能CT(DECT)数据集上的性能,与常规120?kVp单能CT相比,这些数据已显示可改善图像质量。在这项研究中,对各种DECT衍生的伪单能CT数据集(范围从40?keV到170)的内部开发的MA和DL方法(两步三维U-net)的性能进行了定量和定性评估。 ?keV。在较低能量下,MA方法可导致更准确的OAR分割。定性和定量指标分析均表明,DL方法通常比MA方法表现更好。

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