RAP-NET:使用单一随机解剖先验进行从粗到细的多器官分割。

Ho Hin Lee, Yucheng Tang, Shunxing Bao, Richard G Abramson, Yuankai Huo, Bennett A Landman
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引用次数: 0

摘要

进行从粗到细的腹部多器官分割有助于提取高分辨率分割,最大限度地减少空间上下文信息的损失。然而,目前从粗到细的方法需要大量模型才能进行单器官分割。我们提出了一种从粗到精的管道 RAP-Net,它首先使用低分辨率的粗网络从三维体积中提取多个器官的全局先验上下文,然后在精细阶段使用单个精细模型分割所有腹部器官,而不是多个器官对应的模型。我们将解剖先验与相应的提取斑块相结合,以保留解剖位置和边界信息,从而在单一模型中对所有器官进行高分辨率分割。为了训练和评估我们的方法,我们使用了一个临床研究队列,该队列由 100 个病人体积组成,其中 13 个器官都有详细标注。我们使用 4 倍交叉验证对算法进行了测试,并计算了 Dice 分数,以评估 13 个器官的分割性能。我们提出的使用单一自动上下文的方法在 13 个模型上的表现优于最先进的方法,平均 Dice 分数为 84.58% 对 81.69% (P<0.05)。
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RAP-NET: COARSE-TO-FINE MULTI-ORGAN SEGMENTATION WITH SINGLE RANDOM ANATOMICAL PRIOR.

Performing coarse-to-fine abdominal multi-organ segmentation facilitates extraction of high-resolution segmentation minimizing the loss of spatial contextual information. However, current coarse-to-refine approaches require a significant number of models to perform single organ segmentation. We propose a coarse-to-fine pipeline RAP-Net, which starts from the extraction of the global prior context of multiple organs from 3D volumes using a low-resolution coarse network, followed by a fine phase that uses a single refined model to segment all abdominal organs instead of multiple organ corresponding models. We combine the anatomical prior with corresponding extracted patches to preserve the anatomical locations and boundary information for performing high-resolution segmentation across all organs in a single model. To train and evaluate our method, a clinical research cohort consisting of 100 patient volumes with 13 organs well-annotated is used. We tested our algorithms with 4-fold cross-validation and computed the Dice score for evaluating the segmentation performance of the 13 organs. Our proposed method using single auto-context outperforms the state-of-the-art on 13 models with an average Dice score 84.58% versus 81.69% (p<0.0001).

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