首页> 外文会议>International Conference on Medical Imaging Physics and Engineering >Automatic airway tree segmentation from pediatric CT images with foreign bodies based on convolutional neural network
【24h】

Automatic airway tree segmentation from pediatric CT images with foreign bodies based on convolutional neural network

机译:基于卷积神经网络的异物自动呼吸道树细分

获取原文

摘要

Foreign bodies in airway are most common emergency diseases in pediatrics. The peak incidence is for children of 2-3 years old, being one of the main causes of accidental death in children. In most cases, the symptoms of airway foreign body inhalation are non-specific, making early diagnosis difficult and critical. Multi-slice spiral CT examination plays an important role in the initial diagnosis and follow-up evaluation of foreign bodies in the respiratory tract. However, as the foreign body could be very small in size and varies in shape and the physicians might be stressed especially at night, it is extremely prone to missed diagnosis and misdiagnosis, affecting timely treatment and endangering the lives of children. This paper proposed to segment children’s airway trees based on a deep fully convolutional neural network to aid the diagnosis. In the proposed method, the atrous convolution with different rates was employed to capture multiscale feature information and receptive fields, and the upsampling model based on global pooling and attention mechanism was explored to integrate the global content information of high-level features into low-level features. The proposed method was validated on 2 datasets. In 20 test cases of the children’s thoracic data, the Dice similarity coefficient, volumetric overlap error, relative volume difference and average symmetric surface distance were 90.87%, 15.41%, 18.01% and 0. 57mm, respectively. In 8 test cases from the EXACT09 challenge, the proposed method performed better than existing methods to yield a tree length of 135. 33cm. The proposed airway tree segmentation method could be a potential tool to aid and enhance diagnosis of airway foreign bodies of children.
机译:航空公司的异物是儿科的最常见的急诊疾病。峰值发病率适用于2-3岁的儿童,是儿童意外死亡的主要原因之一。在大多数情况下,气道异物吸入的症状是非特异性的,使早期诊断难以和批判。多层螺旋CT检查在呼吸道中的异物的初步诊断和后续评估中起着重要作用。然而,由于异物的尺寸非常小,而且形状变化,而医生可能会特别在夜间压力,非常容易错过诊断和误诊,影响及时治疗和危害儿童的生活。本文提出基于深度全卷积神经网络分割儿童气道树,以帮助诊断。在提出的方法中,采用不同率的不足卷积来捕获多尺度特征信息和接受领域,并探讨了基于全局汇集和关注机制的上采样模型,将高级功能的全球内容信息集成到低级中特征。所提出的方法在2个数据集上验证。在儿童胸部数据的20个测试用例中,骰子相似系数,体积重叠误差,相对体积差异和平均对称表面距离分别为90.87%,15.41%,18.01%和0.57mm。在Acrige09挑战的8个测试用例中,所提出的方法比现有方法更好地产生135.3厘米。所提出的气道树分割方法可以是辅助和增强儿童气道异物的诊断的潜在工具。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号