Gifu University, Gifu-shi, Gifu, Japan.
Adv Exp Med Biol. 2020;1213:135-147. doi: 10.1007/978-3-030-33128-3_9.
This chapter focuses on modern deep learning techniques that are proposed for automatically recognizing and segmenting multiple organ regions on three-dimensional (3D) computed tomography (CT) images. CT images are widely used to visualize 3D anatomical structures composed of multiple organ regions inside the human body in clinical medicine. Automatic recognition and segmentation of multiple organs on CT images is a fundamental processing step of computer-aided diagnosis, surgery, and radiation therapy systems, which aim to achieve precision and personalized medicines. In this chapter, we introduce our recent works on addressing the issue of multiple organ segmentation on 3D CT images by using deep learning, a completely novel approach, instead of conventional segmentation methods originated from traditional digital image processing techniques. We evaluated and compared the segmentation performances of two different deep learning approaches based on 2D- and 3D deep convolutional neural networks (CNNs) without and with a pre-processing step. A conventional method based on a probabilistic atlas algorithm, which presented the best performance within the conventional approaches, was also adopted as a baseline for performance comparison. A dataset containing 240 CT scans of different portions of human bodies was used for training the CNNs and validating the segmentation performance of the learning results. A maximum number of 17 types of organ regions in each CT scan were segmented automatically and validated with the human annotations by using ratio of intersection over union (IoU) as the criterion. Our experimental results showed that the IoUs of the segmentation results had a mean value of 79% and 67% by averaging 17 types of organs that were segmented by the proposed 3D and 2D deep CNNs, respectively. All results using the deep learning approaches showed better accuracy and robustness than the conventional segmentation method that used the probabilistic atlas algorithm. The effectiveness and usefulness of deep learning approaches were demonstrated for multiple organ segmentation on 3D CT images.
这一章专注于现代深度学习技术,这些技术被提出用于自动识别和分割三维(3D)计算机断层扫描(CT)图像上的多个器官区域。CT 图像广泛用于临床医学中可视化人体内部由多个器官区域组成的 3D 解剖结构。3D CT 图像上的多个器官自动识别和分割是计算机辅助诊断、手术和放射治疗系统的基本处理步骤,旨在实现精准和个性化医疗。在这一章中,我们介绍了我们最近的工作,即使用深度学习(一种全新的方法)而不是源自传统数字图像处理技术的传统分割方法来解决 3D CT 图像上的多个器官分割问题。我们评估并比较了两种不同的深度学习方法的分割性能,这两种方法分别基于二维和三维深度卷积神经网络(CNN),并且没有和有一个预处理步骤。还采用了一种基于概率图谱算法的传统方法作为性能比较的基线,该方法在传统方法中表现出最佳性能。使用包含人体不同部位的 240 个 CT 扫描的数据集来训练 CNN 并验证学习结果的分割性能。使用交并比(IoU)作为标准,自动分割每个 CT 扫描中最多 17 种器官类型,并通过人工注释进行验证。我们的实验结果表明,通过平均分割的 17 种器官,所提出的 3D 和 2D 深度 CNN 的分割结果的 IoU 分别具有 79%和 67%的平均值。使用深度学习方法的所有结果都显示出比使用概率图谱算法的传统分割方法更高的准确性和鲁棒性。证明了深度学习方法在 3D CT 图像上的多个器官分割中的有效性和实用性。