Department of Biostatistics, University of Michigan, Ann Arbor, Michigan, USA.
Biometrics. 2022 Mar;78(1):72-84. doi: 10.1111/biom.13420. Epub 2021 Jan 13.
Image-on-image regression analysis, using images to predict images, is a challenging task, due to (1) the high dimensionality and (2) the complex spatial dependence structures in image predictors and image outcomes. In this work, we propose a novel image-on-image regression model, by extending a spatial Bayesian latent factor model to image data, where low-dimensional latent factors are adopted to make connections between high-dimensional image outcomes and image predictors. We assign Gaussian process priors to the spatially varying regression coefficients in the model, which can well capture the complex spatial dependence among image outcomes as well as that among the image predictors. We perform simulation studies to evaluate the out-of-sample prediction performance of our method compared with linear regression and voxel-wise regression methods for different scenarios. The proposed method achieves better prediction accuracy by effectively accounting for the spatial dependence and efficiently reduces image dimensions with latent factors. We apply the proposed method to analysis of multimodal image data in the Human Connectome Project where we predict task-related contrast maps using subcortical volumetric seed maps.
图像到图像回归分析,即使用图像来预测图像,是一项具有挑战性的任务,这主要是因为(1)图像预测器和图像结果具有很高的维度,以及(2)复杂的空间依赖结构。在这项工作中,我们通过将空间贝叶斯潜在因子模型扩展到图像数据中,提出了一种新的图像到图像回归模型,其中采用低维潜在因子来建立高维图像结果与图像预测器之间的联系。我们为模型中的空间变化回归系数分配高斯过程先验,这可以很好地捕捉图像结果之间以及图像预测器之间的复杂空间依赖关系。我们针对不同的场景,通过与线性回归和体素回归方法进行比较,评估了我们的方法在样本外预测性能方面的表现。该方法通过有效地考虑空间依赖性并利用潜在因子有效地降低图像维度,从而实现了更好的预测准确性。我们将所提出的方法应用于人类连接组计划中的多模态图像数据分析中,使用皮质下体积种子图来预测与任务相关的对比图。