Department of Engineering, University of Roma Tre, Via Vito Volterra 62, 00146 Rome, Italy.
Department of Radiological Sciences, University of Pisa, Via Savi 10, 56126 Pisa, Italy.
J Healthc Eng. 2019 Jan 31;2019:1075434. doi: 10.1155/2019/1075434. eCollection 2019.
The main goal of this work is to automatically segment colorectal tumors in 3D T2-weighted (T2w) MRI with reasonable accuracy. For such a purpose, a novel deep learning-based algorithm suited for volumetric colorectal tumor segmentation is proposed. The proposed CNN architecture, based on densely connected neural network, contains multiscale dense interconnectivity between layers of fine and coarse scales, thus leveraging multiscale contextual information in the network to get better flow of information throughout the network. Additionally, the 3D level-set algorithm was incorporated as a postprocessing task to refine contours of the network predicted segmentation. The method was assessed on T2-weighted 3D MRI of 43 patients diagnosed with locally advanced colorectal tumor (cT3/T4). Cross validation was performed in 100 rounds by partitioning the dataset into 30 volumes for training and 13 for testing. Three performance metrics were computed to assess the similarity between predicted segmentation and the ground truth (i.e., manual segmentation by an expert radiologist/oncologist), including Dice similarity coefficient (DSC), recall rate (RR), and average surface distance (ASD). The above performance metrics were computed in terms of mean and standard deviation (mean ± standard deviation). The DSC, RR, and ASD were 0.8406 ± 0.0191, 0.8513 ± 0.0201, and 2.6407 ± 2.7975 before postprocessing, and these performance metrics became 0.8585 ± 0.0184, 0.8719 ± 0.0195, and 2.5401 ± 2.402 after postprocessing, respectively. We compared our proposed method to other existing volumetric medical image segmentation baseline methods (particularly 3D U-net and DenseVoxNet) in our segmentation tasks. The experimental results reveal that the proposed method has achieved better performance in colorectal tumor segmentation in volumetric MRI than the other baseline techniques.
这项工作的主要目标是使用合理的准确性自动分割 3D T2 加权(T2w)MRI 中的结直肠肿瘤。为此,提出了一种新的基于深度学习的适用于容积结直肠肿瘤分割的算法。所提出的基于密集连接神经网络的 CNN 架构包含精细和粗尺度之间的多尺度密集互连,从而利用网络中的多尺度上下文信息来更好地在网络中传递信息。此外,还将 3D 水平集算法纳入作为后处理任务,以细化网络预测分割的轮廓。该方法在 43 名局部晚期结直肠肿瘤(cT3/T4)患者的 T2 加权 3D MRI 上进行了评估。通过将数据集划分为 30 个卷进行训练和 13 个进行测试,在 100 次迭代中进行了交叉验证。为了评估预测分割与真实分割(即由专家放射科医生/肿瘤学家进行的手动分割)之间的相似性,计算了三个性能指标,包括骰子相似系数(DSC)、召回率(RR)和平均表面距离(ASD)。上述性能指标是根据平均值和标准差(平均值 ± 标准差)计算的。后处理前的 DSC、RR 和 ASD 分别为 0.8406 ± 0.0191、0.8513 ± 0.0201 和 2.6407 ± 2.7975,后处理后的这些性能指标分别变为 0.8585 ± 0.0184、0.8719 ± 0.0195 和 2.5401 ± 2.402。我们将提出的方法与其他现有的容积医学图像分割基线方法(特别是 3D U-net 和 DenseVoxNet)在我们的分割任务中进行了比较。实验结果表明,与其他基线技术相比,所提出的方法在容积 MRI 中的结直肠肿瘤分割中具有更好的性能。