Deep Multi-instance Networks with Sparse Label Assignment for Whole Mammogram Classification

23 May 2017  ·  Wentao Zhu, Qi Lou, Yeeleng Scott Vang, Xiaohui Xie ·

Mammogram classification is directly related to computer-aided diagnosis of breast cancer. Traditional methods rely on regions of interest (ROIs) which require great efforts to annotate. Inspired by the success of using deep convolutional features for natural image analysis and multi-instance learning (MIL) for labeling a set of instances/patches, we propose end-to-end trained deep multi-instance networks for mass classification based on whole mammogram without the aforementioned ROIs. We explore three different schemes to construct deep multi-instance networks for whole mammogram classification. Experimental results on the INbreast dataset demonstrate the robustness of proposed networks compared to previous work using segmentation and detection annotations.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Suspicous (BIRADS 4,5)-no suspicous (BIRADS 1,2,3) per image classification InBreast AlexNet+Sparse MIL INbr. Auto. AUC 0.89 # 9
Suspicous (BIRADS 4,5)-no suspicous (BIRADS 1,2,3) per image classification InBreast AlexNet+Label Assign. MIL INbr. Auto. AUC 0.84 # 12
Suspicous (BIRADS 4,5)-no suspicous (BIRADS 1,2,3) per image classification InBreast AlexNet+Max Pooling MIL AUC 0.83 # 14
Suspicous (BIRADS 4,5)-no suspicous (BIRADS 1,2,3) per image classification InBreast AlexNet AUC 0.79 # 15

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