| Literature DB >> 35741186 |
Melissa Min-Szu Yao1,2, Hao Du3,4, Mikael Hartman3,4,5, Wing P Chan1,2,6, Mengling Feng1,4,7.
Abstract
Purpose: We aimed to develop a novel interpretable artificial intelligence (AI) model algorithm focusing on automatic detection and classification of various patterns of calcification distribution in mammographic images using a unique graph convolution approach. Materials and methods: Images from 292 patients, which showed calcifications according to the mammographic reports and diagnosed breast cancers, were collected. The calcification distributions were classified as diffuse, segmental, regional, grouped, or linear. Excluded were mammograms with (1) breast cancer with multiple lexicons such as mass, asymmetry, or architectural distortion without calcifications; (2) hidden calcifications that were difficult to mark; or (3) incomplete medical records.Entities:
Keywords: artificial intelligence; calcifications; deep learning; graph convolution network; mammography
Year: 2022 PMID: 35741186 PMCID: PMC9222096 DOI: 10.3390/diagnostics12061376
Source DB: PubMed Journal: Diagnostics (Basel) ISSN: 2075-4418
Figure 1Examples of calcification distribution descriptors. For each distribution descriptor, one illustration is shown on the top and one example from the study dataset is shown at the bottom. Illustrations are adapted according to BI-RADS 5th Edition [9]. Calcification patterns are annotated and marked by red contours in examples.
Figure 2Overview of proposed graph neural network model framework.
Performance of various methods on overall distribution classification.
| Precision | Sensitivity | Specificity | F1 Score | Accuracy | Multi-Class AUC | |
|---|---|---|---|---|---|---|
| ResNet | 0.388 (±0.067) | 0.594 (±0.019) | 0.810 (±0.013) | 0.459 (±0.044) | 0.594 (±0.019) | 0.672 (±0.035) |
| DenseNet | 0.388 (±0.060) | 0.590 (±0.013) | 0.808 (±0.012) | 0.451 (±0.034) | 0.590 (±0.013) | 0.657 (±0.025) |
| MobileNet | 0.507 (±0.037) | 0.607 (±0.009) | 0.816 (±0.008) | 0.481 (±0.018) | 0.607 (±0.009) | 0.695 (±0.882) |
| EfficientNet | 0.356 (±0.043) | 0.581 (±0.009) | 0.802 (±0.003) | 0.430 (±0.015) | 0.581 (±0.009) | 0.695 (±0.030) |
|
|
Abbreviation: AUC, area under the curve. Bold here is used to highlight the performance of the proposed model.
Figure 3Confusion matrix for distribution classification in one fold of five-fold cross validation.
Figure 4Multi-class receiver operating characteristic curves for distribution classification.
Figure 5Visualizations of calcification diffusion patterns. One example from each distribution category is selected to be shown in (a–e). In each left panel, the radiologist’s annotation is outlined in red. Each middle panel shows the graphical saliency map for the corresponding image. Nodes are color-coded according to importance, where blue indicates low importance to the proposed network, yellow indicates medium importance, and red indicates high importance. Each right panel shows the saliency map using the ResNet baseline.