Abstract

Breast cancer is the most common cancer with highest mortality risk among the female worldwide and breast mass is the most effective sign for cancer identification. Thus, accurate segmentation of breast mass is regarded as a key step to reduce the death rate. Traditional segmentation methods require prior knowledge and manually set parameters, while recent studies prefer to construct neural networks based on feature reuse. However, breast mass can display in different orientations and the spatial context is complex, which makes the segmentation remain a challenging task. For these concerns, we propose a Spatial Enhanced Rotation Aware Network (SERAN) for automatic breast mass segmentation. SERAN consists of two critical components: 1) a residual attention encoder with spatial enhancement mechanism for effective feature extraction, and 2) a decoder constructed by multi-stream rotation aware blocks for feature fusion and prediction refinement. To optimize SERAN better and avoid misclassification in background area, a regulation item named Inside-outside Loss (IOL) is used in training procedure. The experimental results tested on a representative subset of Digital Database for Screening Mammography (DDSM) dataset show that SERAN outperforms state-of-the-art methods among most adopted evaluation metrics.

Highlights

  • Breast cancer is one of the most harmful diseases among the female worldwide

  • To reduce processing time and improve the accuracy of segmentation result, computer-aided detection (CADe) technology has been rapidly developed since the late 1980s [4] and digital mammogram is the most reliable technique which widely used in breast mass segmentation [5]

  • Two main critical components are proposed for effective feature extraction and prediction refinement

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Summary

Introduction

Breast cancer is one of the most harmful diseases among the female worldwide. According to 2018 Global Cancer Statistics [1], breast cancer sufferers account for a quarter of all female cancer patients. Early diagnosis is highly suggested for reducing death rate of breast cancer. Breast mass segmentation on medical image is regarded as the first step of early diagnosis and the key step prior to classification of benign and malignant. Traditional approaches for breast mass segmentation are manually, time-consuming and heavily dependent on radiologist’s experience. To reduce processing time and improve the accuracy of segmentation result, computer-aided detection (CADe) technology has been rapidly developed since the late 1980s [4] and digital mammogram is the most reliable technique which widely used in breast mass segmentation [5]. Breast masses are varied in a wide range in shape, size and texture, which make the segmentation remain a challenging task [6]. The batch size is set to 16 and the weight of IOL is set to 0.01 in training phase

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