4.6 Article

Automatic Calcification Morphology and Distribution Classification for Breast Mammograms With Multi-Task Graph Convolutional Neural Network

Journal

IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS
Volume 27, Issue 8, Pages 3782-3793

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JBHI.2023.3249404

Keywords

Calcification characterization; graph convolutional network; mammogram analysis

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The morphology and distribution of microcalcifications are important descriptors for diagnosing breast cancer based on mammograms. However, manual characterization of these descriptors is challenging and time-consuming, and there is a lack of effective automatic solutions. This study proposes a multi-task deep graph convolutional network (GCN) method to automatically characterize the morphology and distribution of microcalcifications. The method transforms the characterization into a node and graph classification problem and learns representations concurrently. The proposed method shows significant improvements compared to baseline models, indicating the potential of using GCNs for more robust understanding of medical images.
The morphology and distribution of microcalcifications are the most important descriptors for radiologists to diagnose breast cancer based on mammograms. However, it is very challenging and time-consuming for radiologists to characterize these descriptors manually, and there also lacks of effective and automatic solutions for this problem. We observed that the distribution and morphology descriptors are determined by the radiologists based on the spatial and visual relationships among calcifications. Thus, we hypothesize that this information can be effectively modelled by learning a relationship-aware representation using graph convolutional networks (GCNs). In this study, we propose a multi-task deep GCN method for automatic characterization of both the morphology and distribution of microcalcifications in mammograms. Our proposed method transforms morphology and distribution characterization into node and graph classification problem and learns the representations concurrently. We trained and validated the proposed method in an in-house dataset and public DDSM dataset with 195 and 583 cases,respectively. The proposed method reaches good and stable results with distribution AUC at 0.812 +/- 0.043 and 0.873 +/- 0.019, morphology AUC at 0.663 +/- 0.016 and 0.700 +/- 0.044 for both in-house and public datasets. In both datasets, our proposed method demonstrates statistically significant improvements compared to the baseline models. The performance improvements brought by our proposed multi-task mechanism can be attributed to the association between the distribution and morphology of calcifications in mammograms, which is interpretable using graphical visualizations and consistent with the definitions of descriptors in the standard BI-RADS guideline. In short, we explore, for the first time, the application of GCNs in microcalcification characterization that suggests the potential of using graph learning for more robust understanding of medical images.

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