School of Software, Soongsil University, 369 Sangdo-Ro, Dongjak-Gu, Seoul 06978, South Korea.
Department of Computer Science and Engineering, Seoul National University, 1 Gwanak-ro, Gwanak-gu, Seoul 08826, South Korea.
Artif Intell Med. 2021 Mar;113:102023. doi: 10.1016/j.artmed.2021.102023. Epub 2021 Jan 23.
Accurate image segmentation of the liver is a challenging problem owing to its large shape variability and unclear boundaries. Although the applications of fully convolutional neural networks (CNNs) have shown groundbreaking results, limited studies have focused on the performance of generalization. In this study, we introduce a CNN for liver segmentation on abdominal computed tomography (CT) images that focus on the performance of generalization and accuracy.
To improve the generalization performance, we initially propose an auto-context algorithm in a single CNN. The proposed auto-context neural network exploits an effective high-level residual estimation to obtain the shape prior. Identical dual paths are effectively trained to represent mutual complementary features for an accurate posterior analysis of a liver. Further, we extend our network by employing a self-supervised contour scheme. We trained sparse contour features by penalizing the ground-truth contour to focus more contour attentions on the failures.
We used 180 abdominal CT images for training and validation. Two-fold cross-validation is presented for a comparison with the state-of-the-art neural networks. The experimental results show that the proposed network results in better accuracy when compared to the state-of-the-art networks by reducing 10.31% of the Hausdorff distance. Novel multiple N-fold cross-validations are conducted to show the best performance of generalization of the proposed network.
The proposed method minimized the error between training and test images more than any other modern neural networks. Moreover, the contour scheme was successfully employed in the network by introducing a self-supervising metric.
由于肝脏形状变化大且边界不清晰,因此准确的肝脏图像分割是一个具有挑战性的问题。虽然全卷积神经网络(CNN)的应用已经取得了突破性的成果,但很少有研究关注泛化性能。在本研究中,我们引入了一种用于腹部 CT 图像肝脏分割的 CNN,重点关注泛化性能和准确性。
为了提高泛化性能,我们最初在单个 CNN 中提出了一种自动上下文算法。所提出的自动上下文神经网络利用有效的高级残差估计来获取形状先验。有效训练相同的双路径以表示相互补充的特征,以便对肝脏进行准确的后验分析。此外,我们通过采用自监督轮廓方案扩展了网络。我们通过惩罚地面实况轮廓来训练稀疏轮廓特征,以使更多的轮廓注意力集中在失败上。
我们使用了 180 个腹部 CT 图像进行训练和验证。进行了两折交叉验证以与最先进的神经网络进行比较。实验结果表明,与最先进的网络相比,所提出的网络通过减少 10.31%的 Hausdorff 距离,提高了准确性。进行了新的多次 N 折交叉验证,以显示所提出网络的最佳泛化性能。
所提出的方法比任何其他现代神经网络都能更好地减少训练图像和测试图像之间的误差。此外,通过引入自监督度量,成功地将轮廓方案引入网络中。