DeepRepViz: Identifying Confounders in Deep Learning Model Predictions
Roshan Prakash Rane, JiHoon Kim, Arjun Umesha, Didem Stark,, Marc-Andr\'e Schulz, Kerstin Ritter

TL;DR
DeepRepViz is a framework that visualizes and quantifies confounders in deep learning neuroimaging models, enhancing transparency and reliability in predicting behaviors and pathologies.
Contribution
It introduces a novel visualization tool and a quantitative metric, Con-score, for identifying confounders in deep learning models applied to neuroimaging data.
Findings
Con-score effectively detects confounders like sex and age.
DeepRepViz successfully applied to large neuroimaging datasets.
Identifies significant confounders in MRI-phenotype prediction tasks.
Abstract
Deep Learning (DL) models have gained popularity in neuroimaging studies for predicting psychological behaviors, cognitive traits, and brain pathologies. However, these models can be biased by confounders such as age, sex, or imaging artifacts from the acquisition process. To address this, we introduce 'DeepRepViz', a two-part framework designed to identify confounders in DL model predictions. The first component is a visualization tool that can be used to qualitatively examine the final latent representation of the DL model. The second component is a metric called 'Con-score' that quantifies the confounder risk associated with a variable, using the final latent representation of the DL model. We demonstrate the effectiveness of the Con-score using a simple simulated setup by iteratively altering the strength of a simulated confounder and observing the corresponding change in the…
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Taxonomy
TopicsMachine Learning in Healthcare · Acute Ischemic Stroke Management · Health, Environment, Cognitive Aging
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
