BRAIxDet: Learning to Detect Malignant Breast Lesion with Incomplete Annotations
Yuanhong Chen, Yuyuan Liu, Chong Wang, Michael Elliott, Chun Fung, Kwok, Carlos Pena-Solorzano, Yu Tian, Fengbei Liu, Helen Frazer, Davis J., McCarthy, Gustavo Carneiro

TL;DR
This paper introduces a semi-supervised learning approach for detecting malignant breast lesions in mammograms using datasets with incomplete annotations, achieving state-of-the-art results.
Contribution
It proposes a novel two-stage method combining weakly-supervised pre-training and semi-supervised detection to effectively utilize datasets with incomplete annotations.
Findings
Achieves state-of-the-art detection accuracy on real-world datasets.
Effectively leverages both fully and weakly annotated data.
Demonstrates robustness in real-world screening scenarios.
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…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Global Cancer Incidence and Screening
