论文标题
稳定深层扫描重建
Stabilizing Deep Tomographic Reconstruction
论文作者
论文摘要
深度学习的层析成像图像重建是一个新兴领域,但最近的地标研究表明,对于计算机断层扫描(CT)和磁共振成像(MRI),几个深层重建网络是不稳定的。具体而言,报道了三种不稳定性:(1)来自微小扰动的强图像伪像,(2)深度重建图像中缺少的小特征,(3)随着输入数据的增加,成像性能降低了成像性能。另一方面,由于内置的内核意识,压缩感测(CS)启发的重建方法不会遭受这些不稳定性的影响。为了使深层重建具有全部潜力并成为层析成像的主流方法,因此,通过稳定深层重建网络来应对这一挑战至关重要。在这里,我们提出了一个分析性压缩的迭代深(酸)框架来应对这一挑战。酸协调了一个深入的重建网络,该网络培训了大数据,CS启发的加工的内核意识以及迭代的改进,以最大程度地减少相对于实际测量的数据残留。我们的研究表明,使用酸的深层重建是准确稳定的,并阐明了在有限的相对误差规范(BREN)条件下酸迭代的收敛机理。特别是,该研究表明,基于酸的重建是针对对抗性攻击的弹性,仅凭经典的稀疏性重构重建,并消除了三种不稳定性。我们预计,这种综合数据驱动的方法将有助于促进深层层析成像图像重建网络转化为临床应用的发展和翻译。
Tomographic image reconstruction with deep learning is an emerging field, but a recent landmark study reveals that several deep reconstruction networks are unstable for computed tomography (CT) and magnetic resonance imaging (MRI). Specifically, three kinds of instabilities were reported: (1) strong image artefacts from tiny perturbations, (2) small features missing in a deeply reconstructed image, and (3) decreased imaging performance with increased input data. On the other hand, compressed sensing (CS) inspired reconstruction methods do not suffer from these instabilities because of their built-in kernel awareness. For deep reconstruction to realize its full potential and become a mainstream approach for tomographic imaging, it is thus critically important to meet this challenge by stabilizing deep reconstruction networks. Here we propose an Analytic Compressed Iterative Deep (ACID) framework to address this challenge. ACID synergizes a deep reconstruction network trained on big data, kernel awareness from CS-inspired processing, and iterative refinement to minimize the data residual relative to real measurement. Our study demonstrates that the deep reconstruction using ACID is accurate and stable, and sheds light on the converging mechanism of the ACID iteration under a Bounded Relative Error Norm (BREN) condition. In particular, the study shows that ACID-based reconstruction is resilient against adversarial attacks, superior to classic sparsity-regularized reconstruction alone, and eliminates the three kinds of instabilities. We anticipate that this integrative data-driven approach will help promote development and translation of deep tomographic image reconstruction networks into clinical applications.