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Breast Density Mapping based upon System Calibration, X-Ray Techniques, and FFDM Images

机译:基于系统校准,X射线技术和FFDM图像的乳房密度映射

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Clinical studies have correlated a high breast density to a women's risk of breast cancer. A breast density measurement that can quantitatively depict the volume distribution and percentage of dense tissues in breasts would be very useful for risk factor assessment of breast cancer, and might be more predictive of risks than the common but subjective and coarse 4-point BIRADS scale. This paper proposes to use a neural-network mapping to compute the breast density information based upon system calibration data, x-ray techniques, and Full Field Digital Mammography (FFDM) images. The mapping consists of four modules, namely, system calibration, generator of beam quality, generator of normalized absorption, and a multi-layer feed-forward neural network. As the core of breast density mapping, the network accepts x-ray target/filter combination, normalized x-ray absorption, pixel-wise breast thickness map, and x-ray beam quality during image acquisition as input elements, and exports a pixel-wise breast density distribution and a single breast density percentage for the imaged breast. Training and testing data sets for the design and verification of the network were formulated from calibrated x-ray beam quality, imaging data with a step wedge phantom under a variety x-ray imaging techniques, and nominal breast densities of tissue equivalent materials. The network was trained using a Levenberg-Marquardt algorithm based back-propagation learning method. Various thickness and glandular density phantom studies were performed with clinical x-ray techniques. Preliminary results showed that the neural network mapping is promising in accurately computing glandular density distribution and breast density percentage.
机译:临床研究已将高乳房密度与女性患乳腺癌的风险相关联。可以定量描述乳房中致密组织的体积分布和百分比的乳房密度测量对乳腺癌的危险因素评估非常有用,并且比普通但主观且粗糙的4点BIRADS量表更能预测风险。本文建议使用神经网络映射基于系统校准数据,X射线技术和全场数字乳房X线摄影(FFDM)图像来计算乳房密度信息。映射包括四个模块,即系统校准,光束质量生成器,归一化吸收生成器和多层前馈神经网络。作为乳房密度映射的核心,该网络接受x射线目标/滤光片组合,归一化x射线吸收,逐像素乳房厚度图和图像获取期间的x射线束质量作为输入元素,并输出像素-明智的乳房密度分布和成像乳房的单个乳房密度百分比。用于网络设计和验证的训练和测试数据集由校准的X射线束质量,在各种X射线成像技术下使用阶梯楔形体模成像的图像数据以及组织等效材料的标称乳房密度组成。使用基于Levenberg-Marquardt算法的反向传播学习方法对网络进行了训练。使用临床X射线技术进行了各种厚度和腺体密度体模研究。初步结果表明,神经网络映射在准确计算腺体密度分布和乳房密度百分比方面很有希望。

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