Rectifying Supporting Regions with Mixed and Active Supervision for Rib Fracture Recognition

  • Yi Jie Huang
  • , Weiping Liu
  • , Xiuying Wang
  • , Qu Fang
  • , Renzhen Wang
  • , Yi Wang
  • , Huai Chen
  • , Hao Chen
  • , Deyu Meng
  • , Lisheng Wang

Research output: Contribution to journalArticlepeer-review

26 Scopus citations

Abstract

Automatic rib fracture recognition from chest X-ray images is clinically important yet challenging due to weak saliency of fractures. Weakly Supervised Learning (WSL) models recognize fractures by learning from large-scale image-level labels. In WSL, Class Activation Maps (CAMs) are considered to provide spatial interpretations on classification decisions. However, the high-responding regions, namely Supporting Regions of CAMs may erroneously lock to regions irrelevant to fractures, which thereby raises concerns on the reliability of WSL models for clinical applications. Currently available Mixed Supervised Learning (MSL) models utilize object-level labels to assist fitting WSL-derived CAMs. However, as a prerequisite of MSL, the large quantity of precisely delineated labels is rarely available for rib fracture tasks. To address these problems, this paper proposes a novel MSL framework. Firstly, by embedding the adversarial classification learning into WSL frameworks, the proposed Biased Correlation Decoupling and Instance Separation Enhancing strategies guide CAMs to true fractures indirectly. The CAM guidance is insensitive to shape and size variations of object descriptions, thereby enables robust learning from bounding boxes. Secondly, to further minimize annotation cost in MSL, a CAM-based Active Learning strategy is proposed to recognize and annotate samples whose Supporting Regions cannot be confidently localized. Consequently, the quantity demand of object-level labels can be reduced without compromising the performance. Over a chest X-ray rib-fracture dataset of 10966 images, the experimental results show that our method produces rational Supporting Regions to interpret its classification decisions and outperforms competing methods at an expense of annotating 20% of the positive samples with bounding boxes.

Original languageEnglish
Article number9130071
Pages (from-to)3843-3854
Number of pages12
JournalIEEE Transactions on Medical Imaging
Volume39
Issue number12
DOIs
StatePublished - Dec 2020

Keywords

  • Convolutional neural network~(CNN)
  • active learning~(AL)
  • class activation map~(CAM)
  • mixed supervised learning~(MSL)
  • supporting region

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