Gong Zhaoxuan, Song Jing, Guo Wei, Ju Ronghui, Zhao Dazhe, Tan Wenjun, Zhou Wei, Zhang Guodong
Department of Computer Science and Information Engineering, Shenyang Aerospace University, Shenyang 110136, China.
Key Laboratory of Intelligent Computing in Medical Image, Ministry of Education, Shenyang 110819, China.
Math Biosci Eng. 2022 Sep 23;19(12):14074-14085. doi: 10.3934/mbe.2022655.
Accurate abdomen tissues segmentation is one of the crucial tasks in radiation therapy planning of related diseases. However, abdomen tissues segmentation (liver, kidney) is difficult because the low contrast between abdomen tissues and their surrounding organs. In this paper, an attention-based deep learning method for automated abdomen tissues segmentation is proposed. In our method, image cropping is first applied to the original images. U-net model with attention mechanism is then constructed to obtain the initial abdomen tissues. Finally, level set evolution which consists of three energy terms is used for optimize the initial abdomen segmentation. The proposed model is evaluated across 470 subsets. For liver segmentation, the mean dice are 96.2 and 95.1% for the FLARE21 datasets and the LiTS datasets, respectively. For kidney segmentation, the mean dice are 96.6 and 95.7% for the FLARE21 datasets and the LiTS datasets, respectively. Experimental evaluation exhibits that the proposed method can obtain better segmentation results than other methods.
准确的腹部组织分割是相关疾病放射治疗计划中的关键任务之一。然而,腹部组织(肝脏、肾脏)的分割很困难,因为腹部组织与其周围器官之间的对比度较低。本文提出了一种基于注意力的深度学习方法用于自动腹部组织分割。在我们的方法中,首先对原始图像进行图像裁剪。然后构建具有注意力机制的U-net模型以获得初始腹部组织。最后,使用由三个能量项组成的水平集演化来优化初始腹部分割。所提出的模型在470个子集上进行了评估。对于肝脏分割,在FLARE21数据集和LiTS数据集上,平均骰子系数分别为96.2%和95.1%。对于肾脏分割,在FLARE21数据集和LiTS数据集上,平均骰子系数分别为96.6%和95.7%。实验评估表明,所提出的方法比其他方法能获得更好的分割结果。