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Quantification of Lung Abnormalities in Cystic Fibrosis using Deep Networks

机译:使用深层网络定量囊性纤维化中的肺异常

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摘要

Cystic fibrosis is a genetic disease which may appear in early life with structural abnormalities in lung tissues. We propose to detect these abnormalities using a texture classification approach. Our method is a cascade of two convolutional neural networks. The first network detects the presence of abnormal tissues. The second network identifies the type of the structural abnormalities: bronchiectasis, atelectasis or mucus plugging. We also propose a network computing pixel-wise heatmaps of abnormality presence learning only from the patch-wise annotations. Our database consists of CT scans of 194 subjects. We use 154 subjects to train our algorithms and the 40 remaining ones as a test set. We compare our method with random forest and a single neural network approach. The first network reaches an accuracy of 0,94 for disease detection, 0,18 higher than the random forest classifier and 0,37 higher than the single neural network. Our cascade approach yields a final class-averaged F1-score of 0,33, outperforming the baseline method and the single network by 0,10 and 0,12 .
机译:囊性纤维化是一种遗传疾病,可能在生命早期出现,并在肺组织中出现结构异常。我们建议使用纹理分类方法检测这些异常。我们的方法是两个卷积神经网络的级联。第一网络检测异常组织的存在。第二个网络可识别结构异常的类型:支气管扩张,肺不张或粘液堵塞。我们还提出了一种网络计算异常存在的像素方式热图,该方法仅从补丁方式注释中学习。我们的数据库包含194位受试者的CT扫描。我们使用154个主题来训练我们的算法,其余40个作为测试集。我们将我们的方法与随机森林和单个神经网络方法进行比较。第一个网络的疾病检测精度为0.94,比随机森林分类器高0.18,比单个神经网络高0.37。我们的级联方法产生的最终平均类平均F1分数为0.33,优于基线方法和单个网络的0.10和0.12。

著录项

  • 来源
    《SPIE Medical Imaging Conference》|2018年|105741G.1-105741G.7|共7页
  • 会议地点 Houston(US)
  • 作者单位

    Biomedical Imaging Group Rotterdam Department of Radiology and Medical Informatics Erasmus MC Rotterdam The Netherlands Faculty of Engineering of University of Porto Porto Portugal;

    Biomedical Imaging Group Rotterdam Department of Radiology and Medical Informatics Erasmus MC Rotterdam The Netherlands;

    Department of Pediatric Pulmonology and Allergology Erasmus MC Rotterdam the Netherlands;

    Biomedical Imaging Group Rotterdam Department of Radiology and Medical Informatics Erasmus MC Rotterdam The Netherlands Department of Computer Science University of Copenhagen Denmark;

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  • 原文格式 PDF
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  • 关键词

    Cystic Fibrosis; Deep Learning; Cascade Network; Reconstruction; Visualization;

    机译:囊性纤维化;深度学习;级联网络;重建;可视化;

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