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Convolutional-neural-network based breast thickness correction in digital breast tomosynthesis

机译:数字乳腺断层合成中基于卷积神经网络的乳房厚度校正

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This work addresses equalization and thickness estimation of breast periphery in digital breast tomosynthesis (DBT). Breast compression in DBT would lead to a relatively uniform thickness at inner breast but not at the periphery. Proper peripheral enhancement or thickness correction is needed for diagnostic convenience and for accurate volumetric breast density estimation. Such correction methods have been developed albeit with several shortcomings. We present a thickness correction method based on a supervised learning scheme with a convolutional neural network (CNN), which is one of the widely-used deep learning structures, to improve the pixel value of the peripheral region. The network was successfully trained and showed a robust and satisfactory performance in our numerical phantom study.
机译:这项工作解决了数字化乳房断层合成(DBT)中乳房周围的均衡和厚度估计。 DBT中的乳房压迫会导致内部乳房处的厚度相对均匀,而不是周围区域。需要适当的外围增强或厚度校正,以方便诊断和准确的乳房体积密度估计。尽管存在一些缺点,但是已经开发了这种校正方法。我们提出了一种基于卷积神经网络(CNN)的监督学习方案的厚度校正方法,该方法是广泛使用的深度学习结构之一,以提高周边区域的像素值。该网络已成功训练,并在我们的数字体模研究中显示出强大而令人满意的性能。

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