3.8 Proceedings Paper

ULDOR: A UNIVERSAL LESION DETECTOR FOR CT SCANS WITH PSEUDO MASKS AND HARD NEGATIVE EXAMPLE MINING

Publisher

IEEE
DOI: 10.1109/isbi.2019.8759478

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Funding

  1. Intramural Research Program of the National Institutes of Health Clinical Center
  2. Ping An Insurance Company

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Automatic lesion detection from computed tomography (CT) scans is an important task in medical imaging analysis, which is still very challenging due to similar appearances (e.g., intensity and texture) between lesions and other tissues. Instead of developing a specific-type lesion detector, this work builds a Universal Lesion Detector (ULDor) based on Mask R-CNN, which is able to detect all different kinds of lesions from whole body parts. As a state-of-the-art object detector, Mask R-CNN adds a branch for predicting segmentation masks on each Region of Interest (RoI) to improve the detection performance. However, it is almost impossible to manually annotate a large-scale dataset with pixel-level lesion masks to train the Mask R-CNN for lesion detection. To address this problem, this work constructs a pseudo mask for each lesion region that can be considered as a surrogate of the real mask, based on which the Mask R-CNN is employed for lesion detection. On the other hand, this work proposes a hard negative example mining strategy to reduce the false positives for improving the detection performance. Experimental results on the NILI DeepLesion dataset demonstrate that the UL,Dor is enhanced using pseudo masks and the proposed hard negative example mining strategy and achieves a sensitivity of 86.21% with five false positives per image.

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