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Automatic segmentation of colorectal cancer in 3D MRI by combining deep learning and 3D level-set algorithm-a preliminary study

机译:深层学习与3D级别算法 - 初步研究自动分割3D MRI中结肠直肠癌的分割

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In this paper, a novel method to automatically segment colorectal cancer from 3D MR images based on combination of 3D fully convolutional neural networks (3D-FCNNs) and 3D level-set is proposed. The 3D-level set is incorporated in the 3D-FCNNs aiming at: i) a fine-tuning of the training phase; ii) a refinement of the outputs during the testing phase by integrating smoothing function and prior information in a post-processing step. The proposed method is assessed and compared with 3D-FCNNs without 3D-level set (3D-FCNNs alone) in terms of Dice Similarity Coefficient (DSC) as a performance metric. The proposed method showed higher DSC than 3D-FCNNs alone on both training and testing data set as, (0.91813 vs 0.8568) and (0.9378 vs 0.86238), respectively. Our results on 3D colorectal MRI data demonstrated that the proposed method gives better and accurate segmentation results than 3D-FCNNs alone.
机译:本文提出了一种基于3D完全卷积神经网络(3D-FCNNS)和3D电平集合的三维MR图像自动分段结直肠癌的新方法。 3D级别集中于旨在的3D-FCNNS中:i)训练阶段的微调; ii)通过将平滑功能和先前信息集成在后处理步骤中,在测试阶段中改进输出。根据骰子相似度系数(DSC)作为性能度量,与3D-FCNNS进行评估并与3D-FCNNS进行比较,与3D-FCNNS进行比较。所提出的方法在训练和测试数据(0.91813 VS 0.8568)和(0.9378 Vs 0.86238)中,所提出的方法比3D-FCNNS高于3D-FCNNS。我们对3D结肠直肠MRI数据的结果表明,所提出的方法仅提供比3D-FCNNS更好,准确的分段结果。

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