基于CC和MLO视图的乳腺造影语义标签预测

Xiaomeng Wang, Jiyun Li, Chen Qian
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引用次数: 3

摘要

乳房x线摄影图像通常包含两个不同方向的视图- cc和MLO。在目前的计算机辅助乳房x线摄影标签预测系统中,大多数模型要么仅从单一视图评估信息,这增加了假阳性率,要么综合评估两个乳房的四个视图信息,而不区分两个乳房。在本文中,我们提出了一个基于CC和MLO视图共同考虑的乳腺x线摄影语义标签预测模型。首先,利用DCN对密集图像进行分类和增强。其次,通过融合CC视图和MLO视图的特征,设计了一个MLLN来生成乳腺x线图像的语义标签。实验表明,该模型比单视图模型和四视图模型分别提高了7.3%和23.3%的预测mAP。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic Label Prediction of Mammography Based on CC and MLO Views
Mammography image usually contains two views in different orientations-CC and MLO. In current computer-aided mammography label prediction systems, most models either assess information from only a single view which increases the false-positive rate or comprehensively evaluate information from four views of two breasts without distinguishing between the two breasts. In this paper, we propose a semantic label prediction model of mammography based on co-consideration of CC and MLO views. Firstly, a DCN is used to classify and enhance dense images. Secondly, a MLLN is designed to generate semantic labels of mammography by fusing the features of CC view and MLO view. The experiment shows that our model improves the prediction mAP of 7.3% compared to the single view model and 23.3% compared to the four-view model, respectively.
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