Deep Nonparametric Conditional Independence Tests for Images
This work addresses the limitation of existing conditional independence tests for complex data like images, offering a more powerful method for researchers in fields such as neuroscience and medical imaging, though it is incremental as it builds on and adapts existing techniques.
The authors tackled the problem of testing conditional independence for high-dimensional variables like images by introducing deep nonparametric conditional independence tests (DNCITs), which combine embedding maps with nonparametric tests, and applied them to brain MRI scans and behavioral traits in the UK Biobank, confirming null results from previous studies and enabling a potential reduction in confounder dimension.
Conditional independence tests (CITs) test for conditional dependence between random variables. As existing CITs are limited in their applicability to complex, high-dimensional variables such as images, we introduce deep nonparametric CITs (DNCITs). The DNCITs combine embedding maps, which extract feature representations of high-dimensional variables, with nonparametric CITs applicable to these feature representations. For the embedding maps, we derive general properties on their parameter estimators to obtain valid DNCITs and show that these properties include embedding maps learned through (conditional) unsupervised or transfer learning. For the nonparametric CITs, appropriate tests are selected and adapted to be applicable to feature representations. Through simulations, we investigate the performance of the DNCITs for different embedding maps and nonparametric CITs under varying confounder dimensions and confounder relationships. We apply the DNCITs to brain MRI scans and behavioral traits, given confounders, of healthy individuals from the UK Biobank (UKB), confirming null results from a number of ambiguous personality neuroscience studies with a larger data set and with our more powerful tests. In addition, in a confounder control study, we apply the DNCITs to brain MRI scans and a confounder set to test for sufficient confounder control, leading to a potential reduction in the confounder dimension under improved confounder control compared to existing state-of-the-art confounder control studies for the UKB. Finally, we provide an R package implementing the DNCITs.