...
首页> 外文期刊>IEEE Transactions on Medical Imaging >Fetal Congenital Heart Disease Echocardiogram Screening Based on DGACNN: Adversarial One-Class Classification Combined with Video Transfer Learning
【24h】

Fetal Congenital Heart Disease Echocardiogram Screening Based on DGACNN: Adversarial One-Class Classification Combined with Video Transfer Learning

机译:胎儿先天性心脏病超声心动图筛查基于DGACNN:对抗一类分类与视频转移学习相结合

获取原文
获取原文并翻译 | 示例
           

摘要

Fetal congenital heart disease (FHD) is a common and serious congenital malformation in children. In Asia, FHD birth defect rates have reached as high as 9.3 0025. For the early detection of birth defects and mortality, echocardiography remains the most effective method for screening fetal heart malformations. However, standard echocardiograms of the fetal heart, especially four-chamber view images, are difficult to obtain. In addition, the pathophysiological changes in fetal hearts during different pregnancy periods lead to ever-changing two-dimensional fetal heart structures and hemodynamics, and it requires extensive professional knowledge to recognize and judge disease development. Thus, research on the automatic screening for FHD is necessary. In this paper, we proposed a new model named DGACNN that shows the best performance in recognizing FHD, achieving a rate of 85. The motivation for this network is to deal with the problem that there are insufficient training datasets to train a robust model. There are many unlabeled video slices, but they are tough and time-consuming to annotate. Thus, how to use these un-annotated video slices to improve the DGACNN capability for recognizing FHD, in terms of both recognition accuracy and robustness, is very meaningful for FHD screening. The architecture of DGACNN comprises two parts, that is, DANomaly and GACNN (Wgan-GP and CNN). DANomaly, similar to the ALOCC network, but incorporates cycle adversarial learning to train an end-to-end one-class classification (OCC) network that is more robust and has a higher accuracy than ALOCC in screening video slices. For the GACNN architecture, we use FCH (four chamber heart) video slices at around the end-systole, as screened by DANomaly, to train a WGAN-GP for the purpose of obtaining ideal low-level features that can robustly improve the FHD recognition accuracy. A few annotated video slices, as screened by DANomaly, can also be used for data augmentation so as to improve the FHD recognition further. The experiments show that the DGACNN outperforms other state-of-the-art networks by 10025; in recognizing FHD. A comparison experiment shows that the proposed network already outperforms the performance of expert cardiologists in recognizing FHD, reaching 84 025; in a test. Thus, the proposed architecture has high potential for helping cardiologists complete early FHD screenings.
机译:胎儿先天性心脏病(FHD)是儿童的共同和严重的先天性畸形。在亚洲,FHD出生缺陷率已达到高达9.3 0025.对于早期发现出生缺陷和死亡率,超声心动图仍然是筛选胎儿畸形的最有效方法。然而,胎儿心脏,尤其是四室视图图像的标准超声心动图难以获得。此外,不同妊娠期胎儿心脏的病理生理变化导致不断变化的二维胎儿心脏结构和血流动力学,并且需要广泛的专业知识来识别和判断疾病发展。因此,需要对自动筛选FHD进行研究。在本文中,我们提出了一个名为DGACNN的新型号,该模型显示了识别FHD的最佳性能,实现了85的速度。该网络的动机是处理训练数据集不足的问题,以训练鲁棒模型。有许多未标记的视频切片,但它们是艰难且耗时的注释。因此,如何使用这些未注释的视频切片来提高DGACNN能力来识别FHD,就识别准确性和鲁棒性而言,对FHD筛选非常有意义。 DGACNN的结构包括两部分,即Danomaly和Gacnn(Wan-GP和CNN)。 Danomaly,类似于Alocc网络,但包括循环对抗性学习,培训一个更坚固的端到端单级分类(OCC)网络,比筛选视频切片中的ALOCC更高的精度。对于GACNN架构,我们使用FCH(四室心脏)视频片在末端 - 末端围绕Danomaly筛选,以培训Wnggan-GP,以获得可以强大地改善FHD识别的理想低级功能准确性。由Danomaly筛选的一些带注释的视频切片也可用于数据增强,以便进一步提高FHD识别。实验表明,DGACNN在10025年之前优于其他最先进的网络;识别FHD。比较实验表明,所提出的网络已经表现出专家心灵学家在识别FHD时表现,达到84 025;在测试中。因此,拟议的架构具有高潜力,帮助心脏病学家完成早期的FHD筛选。

著录项

  • 来源
    《IEEE Transactions on Medical Imaging》 |2020年第4期|1206-1222|共17页
  • 作者单位

    Beihang Univ Sch Comp Sci & Engn State Key Lab Software Dev Environm Beijing 100083 Peoples R China|Beihang Univ Sch Biol Sci & Med Engn Beijing 100083 Peoples R China;

    Beihang Univ Sch Comp Sci & Engn State Key Lab Software Dev Environm Beijing 100083 Peoples R China|Beihang Univ Sch Biol Sci & Med Engn Beijing 100083 Peoples R China;

    Beihang Univ Sch Comp Sci & Engn State Key Lab Software Dev Environm Beijing 100083 Peoples R China|Beihang Univ Beijing Adv Innovat Ctr Biomed Engn Beijing 100083 Peoples R China|Beihang Univiers Hefei Innovat Res Inst Beijing 100083 Peoples R China;

    Capital Med Univ Beijing Anzhen Hosp Dept Ultrasound Beijing 100069 Peoples R China;

    Beihang Univ Sch Comp Sci & Engn State Key Lab Software Dev Environm Beijing 100083 Peoples R China;

    Capital Med Univ Beijing Anzhen Hosp Dept Ultrasound Beijing 100069 Peoples R China;

    Capital Med Univ Beijing Anzhen Hosp Dept Ultrasound Beijing 100069 Peoples R China;

    Beijing Inst Technol Sch Comp Sci & Technol Beijing 100811 Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Fetal congenital heart disease; one-class classification; generative adversarial network; transfer learning; echocardiography; four-chamber heart;

    机译:胎儿先天性心脏病;一流的分类;生成对抗网络;转移学习;超声心动图;四室心脏;

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