Department of Electrical Engineering and Information Technology, ETH Zürich and University of Zürich, Zürich, Switzerland.
Photon Science Division, Paul Scherrer Institut, Villigen, Switzerland.
PLoS One. 2022 Sep 1;17(9):e0272963. doi: 10.1371/journal.pone.0272963. eCollection 2022.
Breast cancer remains the most prevalent malignancy in women in many countries around the world, thus calling for better imaging technologies to improve screening and diagnosis. Grating interferometry (GI)-based phase contrast X-ray CT is a promising technique which could make the transition to clinical practice and improve breast cancer diagnosis by combining the high three-dimensional resolution of conventional CT with higher soft-tissue contrast. Unfortunately though, obtaining high-quality images is challenging. Grating fabrication defects and photon starvation lead to high noise amplitudes in the measured data. Moreover, the highly ill-conditioned differential nature of the GI-CT forward operator renders the inversion from corrupted data even more cumbersome. In this paper, we propose a novel regularized iterative reconstruction algorithm with an improved tomographic operator and a powerful data-driven regularizer to tackle this challenging inverse problem. Our algorithm combines the L-BFGS optimization scheme with a data-driven prior parameterized by a deep neural network. Importantly, we propose a novel regularization strategy to ensure that the trained network is non-expansive, which is critical for the convergence and stability analysis we provide. We empirically show that the proposed method achieves high quality images, both on simulated data as well as on real measurements.
在世界上许多国家,乳腺癌仍然是女性中最常见的恶性肿瘤,因此需要更好的成像技术来提高筛查和诊断水平。基于光栅干涉(GI)的相衬 X 射线 CT 是一种很有前途的技术,可以通过将传统 CT 的高三维分辨率与更高的软组织对比度相结合,从而过渡到临床实践并提高乳腺癌的诊断水平。然而,获得高质量的图像具有挑战性。光栅制造缺陷和光子饥饿会导致测量数据中的噪声幅度很高。此外,GI-CT 正向算子的高度病态微分性质使得从损坏的数据进行反演更加繁琐。在本文中,我们提出了一种新的正则化迭代重建算法,该算法具有改进的层析成像算子和强大的数据驱动正则化项,可用于解决这一具有挑战性的逆问题。我们的算法将 L-BFGS 优化方案与通过深度神经网络参数化的数据驱动项相结合。重要的是,我们提出了一种新的正则化策略,以确保训练的网络是非扩张的,这对于我们提供的收敛性和稳定性分析至关重要。我们的实验表明,该方法在模拟数据和真实测量数据上都能获得高质量的图像。