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RPLS-Net:基于三维全卷积网络和多任务学习的肺叶分割。

RPLS-Net: pulmonary lobe segmentation based on 3D fully convolutional networks and multi-task learning.

机构信息

College of Computer Science, Sichuan University, Chengdu, 610065, Sichuan Province, People's Republic of China.

Department of Respiratory and Critical Care Medicine, West China Hospital, Sichuan University, Chengdu, 610041, Sichuan Province, People's Republic of China.

出版信息

Int J Comput Assist Radiol Surg. 2021 Jun;16(6):895-904. doi: 10.1007/s11548-021-02360-x. Epub 2021 Apr 12.

Abstract

PURPOSE

The robust and automatic segmentation of the pulmonary lobe is vital to surgical planning and regional image analysis of pulmonary related diseases in real-time Computer Aided Diagnosis systems. While a number of studies have examined this issue, the segmentation of unclear borders of the five lobes of the lung remains challenging because of incomplete fissures, the diversity of anatomical pulmonary information, and obstructive lesions caused by pulmonary diseases. This study proposes a model called Regularized Pulmonary Lobe Segmentation Network to accurately predict the lobes as well as the borders.

METHODS

First, a 3D fully convolutional network is constructed to extract contextual features from computed tomography images. Second, multi-task learning is employed to learn the segmentations of the lobes and the borders between them to train the neural network to better predict the borders via shared representation. Third, a 3D depth-wise separable de-convolution block is proposed for deep supervision to efficiently train the network. We also propose a hybrid loss function by combining cross-entropy loss with focal loss using adaptive parameters to focus on the tissues and the borders of the lobes.

RESULTS

Experiments are conducted on a dataset annotated by experienced clinical radiologists. A 4-fold cross-validation result demonstrates that the proposed approach can achieve a mean dice coefficient of 0.9421 and average symmetric surface distance of 1.3546 mm, which is comparable to state of the art methods. The proposed approach has the capability to accurately segment voxels that are near the lung wall and fissure.

CONCLUSION

In this paper, a 3D fully convolutional networks framework is proposed to segment pulmonary lobes in chest CT images accurately. Experimental results show the effectiveness of the proposed approach in segmenting the tissues as well as the borders of the lobes.

摘要

目的

在实时计算机辅助诊断系统中,对肺叶进行稳健且自动的分割对于手术规划和肺部相关疾病的区域图像分析至关重要。虽然已经有许多研究探讨了这个问题,但由于肺裂不完整、解剖学肺部信息的多样性以及肺部疾病引起的阻塞性病变,肺的五个叶的分割仍然具有挑战性。本研究提出了一种称为正则化肺叶分割网络的模型,以准确地预测肺叶及其边界。

方法

首先,构建了一个 3D 全卷积网络,从 CT 图像中提取上下文特征。其次,采用多任务学习来学习肺叶的分割及其边界的分割,以训练神经网络通过共享表示更好地预测边界。第三,提出了一种 3D 深度可分离的反卷积块进行深度监督,以有效地训练网络。我们还提出了一种混合损失函数,通过结合交叉熵损失和焦点损失,使用自适应参数来关注组织和肺叶的边界。

结果

在由经验丰富的临床放射科医生注释的数据集上进行了实验。四折交叉验证结果表明,所提出的方法可以达到 0.9421 的平均骰子系数和 1.3546mm 的平均对称表面距离,与最先进的方法相当。所提出的方法能够准确地分割靠近肺壁和肺裂的体素。

结论

本文提出了一种 3D 全卷积网络框架,用于准确地分割胸部 CT 图像中的肺叶。实验结果表明,该方法在分割组织和肺叶边界方面是有效的。

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