检索规则说明:AND代表“并且”;OR代表“或者”;NOT代表“不包含”;(注意必须大写,运算符两边需空一格)
检 索 范 例 :范例一: (K=图书馆学 OR K=情报学) AND A=范并思 范例二:J=计算机应用与软件 AND (U=C++ OR U=Basic) NOT M=Visual
作 者:谢宏彪 刘志勤[1] 王庆凤[1] 黄俊[1] 陈波[1] 周莹[2] XIE Hong-biao;LIU Zhi-qin;WANG Qing-feng;HUANG Jun;CHEN Bo;ZHOU Ying(School of Computer Science and Technology,Southwest University of Science and Technology,Mianyang 621010,China;Mianyang Central Hospital,Mianyang 621010,China)
机构地区:[1]西南科技大学计算机科学与技术学院,四川绵阳621010 [2]绵阳市中心医院,四川绵阳621010
出 处:《计算机技术与发展》2023年第9期149-154,共6页Computer Technology and Development
基 金:四川省自然科学基金(2022NSFSC0940,2022NSFSC0894);西南科技大学博士基金(19zx7143,20zx7137)。
摘 要:肝癌是常见癌症之一,有着较高的死亡率,精准分割肝癌区域是辅助诊断治疗的重要前提。然而肝脏CT图像需要专业的医师进行标注,有标签数据较少,获取途径单一。针对分割腹部肝脏CT图像需要大量高质量标签并且较难获取的问题,提出了一种采用协同训练的半监督学习分割方法。首先,将有标签数据输入3D U-Net和3D Res U-Net进行有监督训练,保存训练得到的两个分割模型,在两个分割模型中分别对无标签数据进行预测;然后,挑选预测的结果,再加入全连接条件随机场处理挑选出的伪标签,细化伪标签的边缘信息,提升伪标签的精确度;最后,加入到训练集中,重复上述步骤直到分割结果的Dice相似系数停止提升时结束训练。实验在LiTS2017 Challenge肝脏数据集上进行测试,结果表明,在有标签数据集占总数据集的30%时,该方法的Dice值达到90.22%,几乎与全监督3D Res U-Net分割结果持平,说明该半监督学习方法是有效的。Liver cancer is one of the common cancers with a high mortality rate.Accurate segmentation of liver cancer regions is an important prerequisite for auxiliary diagnosis and treatment.However,liver CT images need to be labeled by professional physicians,and there are few labeled data and a single way to obtain them.In order to solve the problem that segmentation of abdominal liver CT images requires a large number of high-quality labels and is difficult to obtain,a semi-supervised automatic segmentation method based on cooperative training is proposed.Firstly,the labeled data is input into 3D U-Net and 3D Res U-Net for supervised training,and the two segmentation models obtained by training are saved.The unlabeled data are predicted respectively in the two segmentation models.Then the predicted results are selected,and the pseudo-labels selected by the fully connected conditional random field processing are added to refine the edge information of the pseudo-labels.It can improve the accuracy of the pseudo-label,and finally add it to the training set.Repeat the above steps until the Dice similarity coefficient of the segmentation results stops improving to end the training.The experiment was tested on the LiTS2017 Challenge.The results showed when the labeled data sets account for 30%of the total set,the Dice of the proposed method reaches 90.22%,which is almost equal to the fully supervised 3D Res U-Net segmentation result,indicating that the semi-supervised method is effective.
关 键 词:协同训练 肝脏分割 半监督学习 全连接条件随机场 U-Net
分 类 号:TP391.41[自动化与计算机技术—计算机应用技术]
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...
正在载入数据...
正在链接到云南高校图书馆文献保障联盟下载...
云南高校图书馆联盟文献共享服务平台 版权所有©
您的IP:216.73.216.49