首页> 外文期刊>BMC Medical Informatics and Decision Making >Automated segmentation and diagnosis of pneumothorax on chest X-rays with fully convolutional multi-scale ScSE-DenseNet: a retrospective study
【24h】

Automated segmentation and diagnosis of pneumothorax on chest X-rays with fully convolutional multi-scale ScSE-DenseNet: a retrospective study

机译:完全卷积多尺度SCESEENET的胸部X射线气胸的自动分割和诊断:回顾性研究

获取原文
           

摘要

Pneumothorax (PTX) may cause a life-threatening medical emergency with cardio-respiratory collapse that requires immediate intervention and rapid treatment. The screening and diagnosis of pneumothorax usually rely on chest radiographs. However, the pneumothoraces in chest X-rays may be very subtle with highly variable in shape and overlapped with the ribs or clavicles, which are often difficult to identify. Our objective was to create a large chest X-ray dataset for pneumothorax with pixel-level annotation and to train an automatic segmentation and diagnosis framework to assist radiologists to identify pneumothorax accurately and timely. In this study, an end-to-end deep learning framework is proposed for the segmentation and diagnosis of pneumothorax on chest X-rays, which incorporates a fully convolutional DenseNet (FC-DenseNet) with multi-scale module and spatial and channel squeezes and excitation (scSE) modules. To further improve the precision of boundary segmentation, we propose a spatial weighted cross-entropy loss function to penalize the target, background and contour pixels with different weights. This retrospective study are conducted on a total of eligible 11,051 front-view chest X-ray images (5566 cases of PTX and 5485 cases of Non-PTX). The experimental results show that the proposed algorithm outperforms the five state-of-the-art segmentation algorithms in terms of mean pixel-wise accuracy (MPA) with $$0.93pm 0.13$$ and dice similarity coefficient (DSC) with $$0.92pm 0.14$$ , and achieves competitive performance on diagnostic accuracy with 93.45% and $$F_1$$ -score with 92.97%. This framework provides substantial improvements for the automatic segmentation and diagnosis of pneumothorax and is expected to become a clinical application tool to help radiologists to identify pneumothorax on chest X-rays.
机译:气胸(PTX)可能会导致危及生命的医疗紧急情况,需要立即干预和快速治疗的心脏呼吸崩溃。筛查和诊断肺炎通常依赖于胸部射线照片。然而,胸部X射线中的气胸部可以非常微妙地具有高度变化的形状并与肋或锁骨重叠,这通常难以识别。我们的目标是为气胸的大型胸部X射线数据集具有像素级注释,并培训自动分割和诊断框架,以帮助放射科学医生准确及时识别气胸。在这项研究中,提出了一种端到端的深度学习框架,用于对胸部X射线进行分割和诊断胸部X射线的分割和诊断,它包含一个具有多尺度模块和空间和通道挤压的完全卷积的DENNET(FC-DENENET)激励(SCSE)模块。为了进一步提高边界分割的精度,我们提出了一种空间加权交叉熵损失函数,以惩罚具有不同权重的目标,背景和轮廓像素。该回顾性研究总共进行了合格的11,051前视胸X射线图像(5566例PTX和5485例非PTX案例)。实验结果表明,所提出的算法在平均像素 - 方面精度(MPA)方面优于五种最先进的分段算法,其具有$ 0.93 PM 0.13 $$和骰子相似度系数(DSC),具有$ 0.92 PM 0.14 $$,并在诊断准确性上实现竞争性能,93.45%和$$ f_1 $$ -score,92.97%。该框架提供了对气胸的自动分割和诊断提供了大量改进,并且预计将成为帮助放射科医生识别胸部X射线上的气胸的临床应用工具。

著录项

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