Abstract

Tumor segmentation is the foundation of breast ultrasound image analysis. However, intensity inhomogeneity occurred in ultrasound images results in the ambiguous segmentation. In order to tackle the challenge, this paper proposed label-distribution learning embedded active contour model for the breast tumor segmentation. Considering that reasonable exploitation of label ambiguity may help to improve performance, a deep pixel-wise label distribution learning model is first proposed to learn an ambiguous label map. The learned map is independent on the intensity variation, which is robust to the intensity inhomogeneity. After that, a novel label distribution learning embedded active contour model is proposed. The new energy function is developed by introducing the new label distribution fitting energy into the active contour model framework. The proposed new fitting energy can enforce the label of pixels to be similar to the learned distribution map, which improves the robustness to the intensity inhomogeneity. To demonstrate the effectiveness of the proposed method, we conduct the experiment on the breast ultrasound images database which consists of 135 benign cases and 51 malignant cases. Our experimental results demonstrated that the proposed method outperforms the state of the art.

Highlights

  • Breast cancer is one of the most lethal cancer [1]–[3]

  • In order to incorporate with the learned ambiguous label map, the new energy function is developed by introducing a new label distribution fitting energy into the level set framework

  • The proposed new fitting energy can enforce the label distribution of pixels to be similar with the learned distribution map which is robust to intensity inhomogeneity

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Summary

INTRODUCTION

Breast cancer is one of the most lethal cancer [1]–[3]. Ultrasound imaging is a commonly used tool for helping with diagnosis of breast cancer. In order to address the serious intensity inhomogeneity problem, this paper proposed a novel label distributionlearning embedded active contour model for breast ultrasound image segmentation. A novel label distribution-learning embedded active contour model is proposed. In order to incorporate with the learned ambiguous label map, the new energy function is developed by introducing a new label distribution fitting energy into the level set framework. The proposed new fitting energy can guarantee that the final segmentation result will be similar with the learned ambiguous label map, which can improve the robustness to intensity inhomogeneity. (2) We develop a novel label distribution learning embedded active contour model for breast ultrasound image segmentation. The proposed new fitting energy can enforce the label distribution of pixels to be similar with the learned distribution map which is robust to intensity inhomogeneity

RELATED WORK
LABEL-DISTRIBUTION-LEARNING-EMBEDDED ACTIVE CONTOUR MODEL
Findings
CONCLUSION
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