论文标题

从医学成像测量中学习随机对象模型,使用逐步增长的环境

Learning stochastic object models from medical imaging measurements using Progressively-Growing AmbientGANs

论文作者

Zhou, Weimin, Bhadra, Sayantan, Brooks, Frank J., Li, Hua, Anastasio, Mark A.

论文摘要

有人提倡医学成像系统和重建算法应通过使用客观的图像质量测量值来评估和优化,以量化在特定诊断任务下观察者的性能。一个重要的可变性来源可以显着限制观察者的性能,这是对象成像的对象的变化。这种可变性来源可以通过随机对象模型(SOM)来描述。 SOM是一种生成模型,可用于建立具有规定统计属性的待办事项的集合。为了准确地模拟解剖结构和对象纹理的变化,希望通过使用良好的成像系统获得实验成像测量结果来建立SOM。深层生成神经网络,例如生成的对抗网络(GAN),为这项任务具有巨大的潜力。但是,通常通过使用重建图像来训练常规的gan,这些图像受测量噪声和重建过程的影响。为了避免这种情况,已经提出了一个Ambientgan,它可以通过测量操作员来增强gan。但是,最初的Ambientgan无法立即受益于现代培训程序,例如渐进式增长,这限制了其应用于现实尺寸的医疗图像数据的能力。为了阐明这项工作,在这项工作中,开发了一种新的渐进式增长Ambientgan(Proamgan)策略,用于从医学成像测量中建立SOM。进行了与常见医学成像方式相对应的程式化的数值研究,以证明和验证提出的建立SOM的方法。

It has been advocated that medical imaging systems and reconstruction algorithms should be assessed and optimized by use of objective measures of image quality that quantify the performance of an observer at specific diagnostic tasks. One important source of variability that can significantly limit observer performance is variation in the objects to-be-imaged. This source of variability can be described by stochastic object models (SOMs). A SOM is a generative model that can be employed to establish an ensemble of to-be-imaged objects with prescribed statistical properties. In order to accurately model variations in anatomical structures and object textures, it is desirable to establish SOMs from experimental imaging measurements acquired by use of a well-characterized imaging system. Deep generative neural networks, such as generative adversarial networks (GANs) hold great potential for this task. However, conventional GANs are typically trained by use of reconstructed images that are influenced by the effects of measurement noise and the reconstruction process. To circumvent this, an AmbientGAN has been proposed that augments a GAN with a measurement operator. However, the original AmbientGAN could not immediately benefit from modern training procedures, such as progressive growing, which limited its ability to be applied to realistically sized medical image data. To circumvent this, in this work, a new Progressive Growing AmbientGAN (ProAmGAN) strategy is developed for establishing SOMs from medical imaging measurements. Stylized numerical studies corresponding to common medical imaging modalities are conducted to demonstrate and validate the proposed method for establishing SOMs.

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