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BRAIxDet: Learning to detect malignant breast lesion with incomplete annotations.
Chen, Yuanhong; Liu, Yuyuan; Wang, Chong; Elliott, Michael; Kwok, Chun Fung; Peña-Solorzano, Carlos; Tian, Yu; Liu, Fengbei; Frazer, Helen; McCarthy, Davis J; Carneiro, Gustavo.
Affiliation
  • Chen Y; Australian Institute for Machine Learning, The University of Adelaide, Adelaide, Australia. Electronic address: yuanhong.chen@adelaide.edu.au.
  • Liu Y; Australian Institute for Machine Learning, The University of Adelaide, Adelaide, Australia.
  • Wang C; Australian Institute for Machine Learning, The University of Adelaide, Adelaide, Australia. Electronic address: chong.wang@adelaide.edu.au.
  • Elliott M; Bioinformatics and Cellular Genomics, St Vincent's Institute of Medical Research, Melbourne, Australia.
  • Kwok CF; Bioinformatics and Cellular Genomics, St Vincent's Institute of Medical Research, Melbourne, Australia.
  • Peña-Solorzano C; Bioinformatics and Cellular Genomics, St Vincent's Institute of Medical Research, Melbourne, Australia.
  • Tian Y; Australian Institute for Machine Learning, The University of Adelaide, Adelaide, Australia.
  • Liu F; Australian Institute for Machine Learning, The University of Adelaide, Adelaide, Australia.
  • Frazer H; St Vincent's Hospital Melbourne, Melbourne, Australia.
  • McCarthy DJ; Bioinformatics and Cellular Genomics, St Vincent's Institute of Medical Research, Melbourne, Australia; Melbourne Integrative Genomics, The University of Melbourne, Melbourne, Australia.
  • Carneiro G; Centre for Vision, Speech and Signal Processing, University of Surrey, Guildford, United Kingdom.
Med Image Anal ; 96: 103192, 2024 Aug.
Article in En | MEDLINE | ID: mdl-38810516
ABSTRACT
Methods to detect malignant lesions from screening mammograms are usually trained with fully annotated datasets, where images are labelled with the localisation and classification of cancerous lesions. However, real-world screening mammogram datasets commonly have a subset that is fully annotated and another subset that is weakly annotated with just the global classification (i.e., without lesion localisation). Given the large size of such datasets, researchers usually face a dilemma with the weakly annotated subset to not use it or to fully annotate it. The first option will reduce detection accuracy because it does not use the whole dataset, and the second option is too expensive given that the annotation needs to be done by expert radiologists. In this paper, we propose a middle-ground solution for the dilemma, which is to formulate the training as a weakly- and semi-supervised learning problem that we refer to as malignant breast lesion detection with incomplete annotations. To address this problem, our new method comprises two stages, namely (1) pre-training a multi-view mammogram classifier with weak supervision from the whole dataset, and (2) extending the trained classifier to become a multi-view detector that is trained with semi-supervised student-teacher learning, where the training set contains fully and weakly-annotated mammograms. We provide extensive detection results on two real-world screening mammogram datasets containing incomplete annotations and show that our proposed approach achieves state-of-the-art results in the detection of malignant breast lesions with incomplete annotations.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Breast Neoplasms / Mammography / Radiographic Image Interpretation, Computer-Assisted Limits: Female / Humans Language: En Journal: Med Image Anal Journal subject: DIAGNOSTICO POR IMAGEM Year: 2024 Document type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Breast Neoplasms / Mammography / Radiographic Image Interpretation, Computer-Assisted Limits: Female / Humans Language: En Journal: Med Image Anal Journal subject: DIAGNOSTICO POR IMAGEM Year: 2024 Document type: Article