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Scatgan for Reconstruction of Ultrasound Scatterers Using Generative Adversarial Networks

机译:使用生成对抗网络重建超声散射体的Scatgan

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Computational simulation of ultrasound (US) echography is essential for training sonographers. Realistic simulation of US interaction with microscopic tissue structures is often modeled by a tissue representation in the form of point scatterers, convolved with a spatially varying point spread function. This yields a realistic US B-mode speckle texture, given that a scatterer representation for a particular tissue type is readily available. This is often not the case and scatterers are nontrivial to determine. In this work we propose to estimate scatterer maps from sample US B-mode images of a tissue, by formulating this inverse mapping problem as image translation, where we learn the mapping with Generative Adversarial Networks using a US simulation software for training. We demonstrate robust reconstruction results, invariant to US viewing and imaging settings such as imaging direction and center frequency. Our method is shown to generalize beyond the trained imaging settings, demonstrated on in vivo US data. Our inference runs orders of magnitude faster than optimization-based techniques, enabling future extensions for reconstructing 3DB-mode volumes with only linear computational complexity.
机译:超声(美国)回波描记术的计算仿真对于培训超声医师至关重要。 US与微观组织结构相互作用的现实模拟通常通过点散射体形式的组织表示来建模,并与空间变化的点扩散函数进行卷积。假定可以轻松获得特定组织类型的散射体表示,这将产生逼真的US B模式斑点纹理。通常情况并非如此,并且确定散射点并非易事。在这项工作中,我们建议通过将逆映射问题公式化为图像平移来从组织的样本美国B型图像中估计散射图,在该过程中,我们将使用美国模拟软件进行训练,通过对抗性网络学习映射。我们展示了强大的重建结果,不影响美国的观看和成像设置,例如成像方向和中心频率。我们的方法显示出超越训练有素的成像设置的普遍性,这在体内美国数据中得到了证明。我们的推论比基于优化的技术快几个数量级,从而使将来的扩展仅以线性计算复杂性即可重建3DB模式卷。

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