Tian Yinli, Xue Fei, Lambo Ricardo, He Jiahui, An Chao, Xie Yaoqin, Cao Hailin, Qin Wenjian
School of Microelectronics and Communication Engineering, Chongqing University, Chongqing 400044, China; Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Shenzhen 518055, China.
Osaka University, 1-1 Yamadaoka, Suita, Osaka 5650871, Japan.
Comput Methods Programs Biomed. 2021 Mar;200:105818. doi: 10.1016/j.cmpb.2020.105818. Epub 2020 Nov 4.
Automatic functional region annotation of liver should be very useful for preoperative planning of liver resection in the clinical domain. However, many traditional computer-aided annotation methods based on anatomical landmarks or the vascular tree often fail to extract accurate liver segments. Furthermore, these methods are difficult to fully automate and thus remain time-consuming. To address these issues, in this study we aim to develop a fully-automated approach for functional region annotation of liver using deep learning based on 2.5D class-aware deep neural networks with spatial adaptation.
112 CT scans were fed into our 2.5D class-aware deep neural network with spatial adaptation for automatic functional region annotation of liver. The proposed model was built upon the ResU-net architecture, which adaptively selected a stack of adjacent CT slices as input and, generating masks corresponding to the center slice, automatically annotated the liver functional region from abdominal CT images. Furthermore, to minimize the problem of class-level ambiguity between different slices, the anatomy class-specific information was used.
The final algorithm performance for automatic functional region annotation of liver showed large overlap with that of manual reference segmentation. The dice similarity coefficient of hepatic segments achieved high scores and an average dice score of 0.882. The entire calculation time was quite fast (5 s) compared to manual annotation (2.5 hours).
The proposed models described in this paper offer a feasible solution for fully-automated functional region annotation of liver from CT images. The experimental results demonstrated that the proposed method can attain a high average dice score and low computational time. Therefore, this work should allow for improved liver surgical resection planning by our precise segmentation and simple fully-automated method.
肝脏功能区域的自动标注对于临床领域肝脏切除术前规划非常有用。然而,许多基于解剖标志或血管树的传统计算机辅助标注方法常常无法准确提取肝脏段。此外,这些方法难以完全自动化,因此仍然耗时。为了解决这些问题,在本研究中,我们旨在开发一种基于具有空间适应性的2.5D类感知深度神经网络的深度学习方法,用于肝脏功能区域的全自动标注。
将112例CT扫描图像输入到我们具有空间适应性的2.5D类感知深度神经网络中,用于肝脏功能区域的自动标注。所提出的模型基于ResU-net架构构建,该架构自适应地选择相邻CT切片的堆栈作为输入,并生成与中心切片对应的掩码,从而从腹部CT图像中自动标注肝脏功能区域。此外,为了最小化不同切片之间类级模糊性的问题,使用了解剖学特定类别的信息。
肝脏功能区域自动标注的最终算法性能与手动参考分割的性能有很大重叠。肝段的骰子相似系数获得高分,平均骰子分数为0.882。与手动标注(约2.5小时)相比,整个计算时间相当快(约5秒)。
本文所述的所提出的模型为从CT图像中进行肝脏功能区域的全自动标注提供了一种可行的解决方案。实验结果表明,所提出的方法可以获得较高的平均骰子分数和较低的计算时间。因此,这项工作应通过我们精确的分割和简单的全自动方法改善肝脏手术切除规划。