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改进的Unet网络在脑CT图像出血区域识别与分割中的应用

[Application of Improved Unet Network in the Recognition and Segmentation of Hemorrhage Regions in Brain CT Images].

作者信息

Zhou Zheng-Song, Chen Xu-Miao, Zhang Hao-Yu, Wan Hong-Li, Zhao Jie-Yi, Zhang Tao, Wang Xiao-Yu

机构信息

Chengdu Jincheng College, Chengdu 611731, China.

West China School of Public Health and West China Fourth Hospital, Sichuan University, Chengdu 610041, China.

出版信息

Sichuan Da Xue Xue Bao Yi Xue Ban. 2022 Jan;53(1):114-120. doi: 10.12182/20220160302.

Abstract

OBJECTIVE

To examine the performance and application value of improved Unet network technology in the recognition and segmentation of hemorrhage regions in brain CT images.

METHODS

A total of 476 brain CT images of patients with spontaneous intracerebral hemorrhage (SICH) were retrospectively included. The improved Unet network was used to identify and segment the hemorrhage regions in the patients' brain CT images. The CT imaging data of the hemorrhage regions were manually labelled by clinicians. After randomized sorting, 430 data sets from 106 patients were selected for inclusion in the training set and 46 data sets from 11 patients were included in the test set. After data enhancement, the experimental data set underwent network training and model testing in order to assess the segmentation performance. The segmentation results were compared with the those of the Unet network (Base), FCN-8s network and Unet++ network.

RESULTS

In the segmentation of brain CT image hemorrhage region with the improved Unet network, the three evaluation indicators of Dice similarity coefficient, positive predictive value (PPV), and sensitivity coefficient (SC) reached 0.8738, 0.9011 and 0.8648, respectively, increasing by 8.80%, 7.14% and 8.96%, respectively, compared with those of FCN-8s, and increasing by 4.56%, 4.44% and 4.15%, respectively, compared with those of Unet network (Base). The improved Unet network also showed better segmentation performance than that of Unet++ network.

CONCLUSION

The improved method based on Unet network proposed in this report displayed good performance in the recognition and segmentation of hemorrhage regions in brain CT images, and is an appropriate method for the recognition and segmentation of hemorrhage regions in brain CT images, showing potential application value for assisting clinical decision-making and preventing early hematoma expansion.

摘要

目的

探讨改进的Unet网络技术在脑CT图像出血区域识别与分割中的性能及应用价值。

方法

回顾性纳入476例自发性脑出血(SICH)患者的脑CT图像。采用改进的Unet网络对患者脑CT图像中的出血区域进行识别和分割。出血区域的CT成像数据由临床医生手动标注。随机排序后,选取106例患者的430个数据集纳入训练集,11例患者的46个数据集纳入测试集。经过数据增强后,对实验数据集进行网络训练和模型测试,以评估分割性能。将分割结果与Unet网络(基础版)、FCN - 8s网络和Unet++网络的分割结果进行比较。

结果

在使用改进的Unet网络分割脑CT图像出血区域时,Dice相似系数、阳性预测值(PPV)和敏感系数(SC)这三个评估指标分别达到0.8738、0.9011和0.8648,与FCN - 8s相比,分别提高了8.80%、7.14%和8.96%,与Unet网络(基础版)相比,分别提高了4.56%、4.44%和4.15%。改进的Unet网络在分割性能上也优于Unet++网络。

结论

本报告提出的基于Unet网络的改进方法在脑CT图像出血区域的识别与分割中表现良好,是一种适用于脑CT图像出血区域识别与分割的方法,在辅助临床决策和预防早期血肿扩大方面显示出潜在的应用价值。

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