ImageNomer: description of a functional connectivity and omics analysis tool and case study identifying a race confound
Anton Orlichenko, Grant Daly, Ziyu Zhou, Anqi Liu, Hui Shen, Hong-Wen, Deng, Yu-Ping Wang

TL;DR
ImageNomer is a user-friendly visualization tool that helps identify confounds like race in fMRI and genomic data, revealing race as a significant confound in achievement score prediction.
Contribution
The paper introduces ImageNomer, a GUI-based Python tool that simplifies data exploration and confound detection in high-dimensional neuroimaging and genomic datasets.
Findings
Race confound significantly affects FC and genomic data correlations with achievement scores.
Using ImageNomer, race was identified as a confound that explains the correlation between FC and achievement.
Confounding effects of race diminish the predictive power of FC and SNP features for achievement scores.
Abstract
Most packages for the analysis of fMRI-based functional connectivity (FC) and genomic data are used with a programming language interface, lacking an easy-to-navigate GUI frontend. This exacerbates two problems found in these types of data: demographic confounds and quality control in the face of high dimensionality of features. The reason is that it is too slow and cumbersome to use a programming interface to create all the necessary visualizations required to identify all correlations, confounding effects, or quality control problems in a dataset. To remedy this situation, we have developed ImageNomer, a data visualization and analysis tool that allows inspection of both subject-level and cohort-level demographic, genomic, and imaging features. The software is Python-based, runs in a self-contained Docker image, and contains a browser-based GUI frontend. We demonstrate the usefulness…
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Taxonomy
TopicsHealth, Environment, Cognitive Aging · Functional Brain Connectivity Studies · Health disparities and outcomes
