Conditional Recurrent Flow: Conditional Generation of Longitudinal Samples with Applications to Neuroimaging.

Seong Jae Hwang, Zirui Tao, Won Hwa Kim, Vikas Singh
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Abstract

We develop a conditional generative model for longitudinal image datasets based on sequential invertible neural networks. Longitudinal image acquisitions are common in various scientific and biomedical studies where often each image sequence sample may also come together with various secondary (fixed or temporally dependent) measurements. The key goal is not only to estimate the parameters of a deep generative model for the given longitudinal data, but also to enable evaluation of how the temporal course of the generated longitudinal samples are influenced as a function of induced changes in the (secondary) temporal measurements (or events). Our proposed formulation incorporates recurrent subnetworks and temporal context gating, which provide a smooth transition in a temporal sequence of generated data that can be easily informed or modulated by secondary temporal conditioning variables. We show that the formulation works well despite the smaller sample sizes common in these applications. Our model is validated on two video datasets and a longitudinal Alzheimer's disease (AD) dataset for both quantitative and qualitative evaluations of the generated samples. Further, using our generated longitudinal image samples, we show that we can capture the pathological progressions in the brain that turn out to be consistent with the existing literature, and could facilitate various types of downstream statistical analysis.

条件循环流:纵向样本的条件生成与神经成像应用
我们开发了一种基于序列可逆神经网络的纵向图像数据集条件生成模型。纵向图像采集在各种科学和生物医学研究中很常见,其中每个图像序列样本往往还可能与各种二次测量(固定或时间相关)一起进行。我们的主要目标不仅是为给定的纵向数据估算深度生成模型的参数,还包括评估生成的纵向样本的时间过程如何受到(次要)时间测量(或事件)中诱导变化的影响。我们提出的方法包含了递归子网络和时间上下文门控,这为生成数据的时间序列提供了平滑过渡,可以很容易地通过次要的时间条件变量进行通知或调节。我们的研究表明,尽管这些应用中常见的样本量较小,但该模型仍能良好运行。我们的模型在两个视频数据集和一个纵向阿尔茨海默病(AD)数据集上进行了验证,对生成的样本进行了定量和定性评估。此外,利用我们生成的纵向图像样本,我们表明我们可以捕捉到大脑中的病理进展,这与现有文献一致,并可促进各种类型的下游统计分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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