DUAL-GLOW:基于条件流的模态迁移生成模型。

Haoliang Sun, Ronak Mehta, Hao H Zhou, Zhichun Huang, Sterling C Johnson, Vivek Prabhakaran, Vikas Singh
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引用次数: 40

摘要

正电子发射断层扫描(PET)成像是诊断许多神经系统疾病的一种成像方式。与磁共振成像(MRI)相比,PET是昂贵的,并且需要向患者注射放射性物质。由于视觉模态转移的发展,我们研究了从MRI数据中生成某些类型的PET图像。我们得出了新的基于流的生成模型,我们证明它在这个小样本量范围内表现良好(远小于标准视觉任务中可用的数据集大小)。我们的公式,DUAL-GLOW,是基于两个可逆网络和一个相互映射潜在空间的关系网络。我们讨论了在给定先验分布的情况下,学习给定MRI图像的PET的条件分布如何简化为在两种图像类型之间获得两个潜在代码之间的条件分布。我们还扩展了框架,以便在可用时利用“侧”信息(或属性)。通过“调节”年龄来控制PET的产生,我们的模型也能够捕捉到大脑FDG-PET(低代谢)的变化,作为年龄的函数。我们在826名受试者的阿尔茨海默病神经成像倡议(ADNI)数据集上进行了实验,在PET图像合成方面取得了良好的性能,在定性和定量上都优于最近的研究成果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DUAL-GLOW: Conditional Flow-Based Generative Model for Modality Transfer.

Positron emission tomography (PET) imaging is an imaging modality for diagnosing a number of neurological diseases. In contrast to Magnetic Resonance Imaging (MRI), PET is costly and involves injecting a radioactive substance into the patient. Motivated by developments in modality transfer in vision, we study the generation of certain types of PET images from MRI data. We derive new flow-based generative models which we show perform well in this small sample size regime (much smaller than dataset sizes available in standard vision tasks). Our formulation, DUAL-GLOW, is based on two invertible networks and a relation network that maps the latent spaces to each other. We discuss how given the prior distribution, learning the conditional distribution of PET given the MRI image reduces to obtaining the conditional distribution between the two latent codes w.r.t. the two image types. We also extend our framework to leverage "side" information (or attributes) when available. By controlling the PET generation through "conditioning" on age, our model is also able to capture brain FDG-PET (hypometabolism) changes, as a function of age. We present experiments on the Alzheimers Disease Neuroimaging Initiative (ADNI) dataset with 826 subjects, and obtain good performance in PET image synthesis, qualitatively and quantitatively better than recent works.

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