MACAW: A Causal Generative Model for Medical Imaging
Vibujithan Vigneshwaran, Erik Ohara, Matthias Wilms, Nils Forkert

TL;DR
MACAW introduces a novel causal generative model for neuroimaging that incorporates causal structures, performs counterfactual predictions, and provides uncertainty estimates, improving interpretability and predictive accuracy in medical imaging tasks.
Contribution
The paper presents a new causal generative architecture called MACAW that integrates complex causal structures into normalizing flows for neuroimaging applications.
Findings
Accurately encodes causal reasoning and generates counterfactuals related to brain aging.
Predicts age from a single MRI slice with high accuracy.
Generates new samples with varied subject-specific indicators like age and sex.
Abstract
Although deep learning techniques show promising results for many neuroimaging tasks in research settings, they have not yet found widespread use in clinical scenarios. One of the reasons for this problem is that many machine learning models only identify correlations between the input images and the outputs of interest, which can lead to many practical problems, such as encoding of uninformative biases and reduced explainability. Thus, recent research is exploring if integrating a priori causal knowledge into deep learning models is a potential avenue to identify these problems. This work introduces a new causal generative architecture named Masked Causal Flow (MACAW) for neuroimaging applications. Within this context, three main contributions are described. First, a novel approach that integrates complex causal structures into normalizing flows is proposed. Second, counterfactual…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Biomedical Text Mining and Ontologies · Machine Learning in Healthcare
MethodsCounterfactuals Explanations · Normalizing Flows
