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基于深度学习的胰腺分割算法分析以提高双期CT上胰腺关键区域分割能力

[Analysis of pancreatic segmentation algorithm based on deep learning to improve pancreatic critical region segmentation ability on dual-phase CT].

作者信息

Wang X H, Xue H D, Qu T P, Li X L, Cheng S H, Li J, Zhu L, Wu Q L, Jin Z Y

机构信息

Department of Radiology, Peking Union Medical College Hospital, Peking Union Medical College, Chinese Academy of Medicine, Beijing, 100730, China.

Deepwise AI Lab, Deepwise Inc., Beijing, 100080, China.

出版信息

Zhonghua Yi Xue Za Zhi. 2021 Feb 23;101(7):470-475. doi: 10.3760/cma.j.cn112137-20200930-02756.

Abstract

To investigate the segmentation effects of the deep learning method on CT in the arterial phase and venous phase respectively by using subjective and objective evaluation system, and to investigate the factors that affect the difference between arterial phase and venous phase pancreas segmentation and the related factors affecting the venous pancreas segmentation. A total of 218 cases of pancreatic CT scan data in the Department of Radiology of Peking Union Medical College Hospital from January to November 2019 were retrospectively collected. Each case contained images of arterial and venous phases, and the data were randomly divided into training set (139 cases), validation set (20 cases) and test set (59 cases) according to the ratio of the training and verification set to the test set of 7∶3. The two-stage global local progressive fusion network was trained on the training set, the model parameters of the optimal segmentation effect were found on the validation set, and the test set was predicted and the results were evaluated subjectively and objectively. The Likert 5-point scale was used for subjective evaluation based on the critical regions between pancreas and peripheral organs, while the Dice similarity coefficient (DSC) was used for objective evaluation. The paired test or Wilcoxon paired rank test was used to compare the differences of subjective and objective scores of the arterial phase and venous phase. For the critical regions of the pancreas at the duodenum, duodenal jejunal flexure, left adrenal gland, portal vein, superior mesenteric vein, splenic artery and splenic vein, the median number of subjective scores in arterial phase were 4(4, 5), 5(4, 5), 5(4, 5), 4(4, 5), 5(4, 5), 5(5, 5) and 4(3, 5)points respectively, the median number(first quartile, third quartile) of subjective scores in venous phase were 4(4, 4), 5(4, 5), 5(4, 5), 5(4, 5), 5(5, 5), 4(3, 4) and 5(5, 5) points respectively,there were statistically significant differences of the median number(first quartile, third quartile) of the subjective scores between the arterial and venous phase for the critical regions of the pancreas at the organs described above (all <0.05). DSC in the venous phase was slightly higher than that in the arterial phase and the difference was not statistically significant (DSC: 0.932 vs 0.921, =0.952). Subjective scores in venous phase of the pancreas and duodenal jejunum, stomach, and left adrenal gland with fat gaps were 4.64,4.68 and 4.63 points respectively, and those of the group without fat gaps were 4.56,4.62 and 4.56 points respectively, there were statistically significant differences of the subjective scores in venous phase of the groups with fat gaps or not between the pancreas and the organs described above (=2.147, 2.112, 2.277, all <0.05). Except the spleen, the density differences between the critical regions of the pancreas and other surrounding organs were statistically significant in arterial phase and venous phase segmentation (all <0.05). Dual-phase CT was used to construct a deep learning automatic pancreas segmentation model, and the segmentation effect was evaluated subjectively and objectively. Subjective evaluation was helpful to improve the ability to segment the critical regions of the pancreas in the future.

摘要

采用主观和客观评价体系,分别探讨深度学习方法对CT动脉期和静脉期胰腺的分割效果,以及影响动脉期与静脉期胰腺分割差异的因素和影响静脉期胰腺分割的相关因素。回顾性收集2019年1月至11月北京协和医院放射科218例胰腺CT扫描数据。每例均包含动脉期和静脉期图像,数据按训练集、验证集和测试集7∶3的比例随机分为训练集(139例)、验证集(20例)和测试集(59例)。在训练集上训练两阶段全局局部渐进融合网络,在验证集上找到分割效果最佳的模型参数,并对测试集进行预测,主观和客观地评估结果。基于胰腺与周围器官之间的关键区域,采用Likert 5级量表进行主观评价,客观评价采用Dice相似系数(DSC)。采用配对t检验或Wilcoxon配对秩和检验比较动脉期和静脉期主观和客观评分的差异。在十二指肠、十二指肠空肠曲、左肾上腺、门静脉、肠系膜上静脉、脾动脉和脾静脉处胰腺的关键区域,动脉期主观评分中位数分别为4(4,5)、5(4,5)、5(4,5)、4(4,5)、5(4,5)、5(5,5)和4(3,5)分,静脉期主观评分中位数(第一四分位数,第三四分位数)分别为4(4,4)、5(4,5)、5(4,5)、5(4,5)、5(5,5)、4(3,4)和5(5,5)分,上述器官处胰腺关键区域动脉期与静脉期主观评分中位数(第一四分位数,第三四分位数)差异均有统计学意义(均P<0.05)。静脉期DSC略高于动脉期,差异无统计学意义(DSC:0.932比0.921,P=0.952)。胰腺与十二指肠空肠曲、胃、有脂肪间隙的左肾上腺静脉期主观评分分别为4.64、4.68和4.63分,无脂肪间隙组分别为4.56、4.62和4.56分,胰腺与上述器官有无脂肪间隙组静脉期主观评分差异有统计学意义(P=2.147、2.112、2.277,均P<0.05)。除脾脏外,胰腺关键区域与其他周围器官在动脉期和静脉期分割中的密度差异均有统计学意义(均P<0.05)。采用双期CT构建深度学习自动胰腺分割模型,并进行主观和客观评价。主观评价有助于提高未来胰腺关键区域的分割能力。

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