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Pieces-of-parts for supervoxel segmentation with global context: Application to DCE-MRI tumour delineation

机译:具有全局上下文的超级体素分割的各个部分:在DCE-MRI肿瘤描绘中的应用

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摘要

class="kwd-title">Keywords: Parts-based graphical models, Supervoxel, Classification, Segmentation, DCE-MRI, Rectal tumour class="head no_bottom_margin" id="abs0001title">AbstractRectal tumour segmentation in dynamic contrast-enhanced MRI (DCE-MRI) is a challenging task, and an automated and consistent method would be highly desirable to improve the modelling and prediction of patient outcomes from tissue contrast enhancement characteristics – particularly in routine clinical practice. A framework is developed to automate DCE-MRI tumour segmentation, by introducing: perfusion-supervoxels to over-segment and classify DCE-MRI volumes using the dynamic contrast enhancement characteristics; and the pieces-of-parts graphical model, which adds global (anatomic) constraints that further refine the supervoxel components that comprise the tumour. The framework was evaluated on 23 DCE-MRI scans of patients with rectal adenocarcinomas, and achieved a voxelwise area-under the receiver operating characteristic curve (AUC) of 0.97 compared to expert delineations. Creating a binary tumour segmentation, 21 of the 23 cases were segmented correctly with a median Dice similarity coefficient (DSC) of 0.63, which is close to the inter-rater variability of this challenging task. A second study is also included to demonstrate the method’s generalisability and achieved a DSC of 0.71. The framework achieves promising results for the underexplored area of rectal tumour segmentation in DCE-MRI, and the methods have potential to be applied to other DCE-MRI and supervoxel segmentation problems.
机译:<!-fig ft0-> <!-fig @ position =“ anchor” mode =文章f4-> <!-fig mode =“ anchred” f5-> <!-fig / graphic | fig / alternatives / graphic mode =“ anchored” m1-> class =“ kwd-title”>关键字:基于零件的图形模型,Supervoxel,分类,分割,DCE-MRI,直肠肿瘤类摘要动态对比增强MRI(DCE-MRI)中的直肠肿瘤分割是一项具有挑战性的任务,因此非常需要一种自动化且一致的方法来改善建模和组织对比增强特征来预测患者结果-尤其是在常规临床实践中。通过引入以下内容,开发了一个框架来实现DCE-MRI肿瘤分割的自动化:灌注超体素使用动态对比增强特征对DCE-MRI体积进行过度分割和分类;以及零件图形模型,该模型添加了全局(解剖)约束,可进一步完善构成肿瘤的超体素组件。该框架通过对直肠腺癌患者进行的23次DCE-MRI扫描进行了评估,与专家描述相比,在受试者工作特征曲线下(AUC)的立体像素面积为0.97。创建二元肿瘤分割后,正确分割了23例病例中的21例,中位Dice相似系数(DSC)为0.63,接近此挑战性任务的评估者间差异。还包括第二项研究,以证明该方法的通用性,并且DSC为0.71。该框架在DCE-MRI中未充分研究的直肠肿瘤分割领域中取得了令人鼓舞的结果,并且该方法有可能应用于其他DCE-MRI和超体素分割问题。

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