4.7 Article

FissureNet: A Deep Learning Approach For Pulmonary Fissure Detection in CT Images

期刊

IEEE TRANSACTIONS ON MEDICAL IMAGING
卷 38, 期 1, 页码 156-166

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMI.2018.2858202

关键词

Lung; segmentation; X-ray imaging and computed tomography; machine learning; ConvNet; CNN

资金

  1. NIH [R01 HL089897, R01 HL089856]
  2. NATIONAL CANCER INSTITUTE [R01CA166703] Funding Source: NIH RePORTER
  3. NATIONAL HEART, LUNG, AND BLOOD INSTITUTE [U01HL089897, R01HL112986, U01HL089856, R01HL089856] Funding Source: NIH RePORTER

向作者/读者索取更多资源

Pulmonary fissure detection in computed tomography (CT) is a critical component for automatic lobar segmentation. The majority of fissure detection methods use feature descriptors that are hand-crafted, low-level, and have local spatial extent. The design of such feature detectors is typically targeted toward normal fissure anatomy, yielding low sensitivity to weak, and abnormal fissures that are common in clinical data sets. Furthermore, local features commonly suffer from low specificity, as the complex textures in the lung can be indistinguishable from the fissure when the global context is not considered. We propose a supervised discriminative learning framework for simultaneous feature extraction and classification. The proposed framework, called FissureNet, is a coarse-to-fine cascade of two convolutional neural networks. The coarse-to-fine strategy alleviates the challenges associated with training a network to segment a thin structure that represents a small fraction of the image voxels. FissureNet was evaluated on a cohort of 3706 subjects with inspiration and expiration 3DCT scans from the COPDGene clinical trial and a cohort of 20 subjects with 4DCT scans from a lung cancer clinical trial. On both data sets, FissureNet showed superior performance compared with a deep learning approach using the U-Net architecture and a Hessian-based fissure detection method in terms of area under the precision-recall curve (PR-AUC). The overall PR-AUC for FissureNet, U-Net, and Hessian on the COPDGene (lung cancer) data set was 0.980 (0.966), 0.963 (0.937), and 0.158 (0.182), respectively. On a subset of 30 COPDGene scans, FissureNet was compared with a recently proposed advanced fissure detection method called derivative of sticks (DoS) and showed superior performance with a PR-AUC of 0.991 compared with 0.668 for DoS.

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