Abstract:This study examines the relationship between speech representations and the hierarchical structure of cognitive assessment in mild cognitive impairment. Utilizing 5,754 German neuropsychological assessment recordings, we evaluate six cognitive tasks across three score levels: task, domain, and global levels. We compare hand-crafted acoustic features with self-supervised learning (SSL) embeddings. Results show that although SSL representations generally outperform hand-crafted features at lower levels, this trend reverses for MCI classification. Furthermore, task-specific constraints influence performance: tasks with greater response freedom exhibit performance dilution as hierarchical levels increase, suggesting ``specialist'' representations, whereas the performance of highly structured tasks increases toward higher levels, suggesting ``generalist'' representations. These findings show links between task constraints and assessment hierarchy in automated clinical speech analysis.
Abstract:Deep Learning (DL) models are increasingly used to analyze neuroimaging data and uncover insights about the brain, brain pathologies, and psychological traits. However, extraneous `confounders' variables such as the age of the participants, sex, or imaging artifacts can bias model predictions, preventing the models from learning relevant brain-phenotype relationships. In this study, we provide a solution called the `DeepRepViz' framework that enables researchers to systematically detect confounders in their DL model predictions. The framework consists of (1) a metric that quantifies the effect of potential confounders and (2) a visualization tool that allows researchers to qualitatively inspect what the DL model is learning. By performing experiments on simulated and neuroimaging datasets, we demonstrate the benefits of using DeepRepViz in combination with DL models. For example, experiments on the neuroimaging datasets reveal that sex is a significant confounder in a DL model predicting chronic alcohol users (Con-score=0.35). Similarly, DeepRepViz identifies age as a confounder in a DL model predicting participants' performance on a cognitive task (Con-score=0.3). Overall, DeepRepViz enables researchers to systematically test for potential confounders and expose DL models that rely on extraneous information such as age, sex, or imaging artifacts.