학술논문

RMExplorer: A Visual Analytics Approach to Explore the Performance and the Fairness of Disease Risk Models on Population Subgroups
Document Type
Conference
Source
2022 IEEE Visualization and Visual Analytics (VIS) VIS Visualization and Visual Analytics (VIS), 2022 IEEE. :50-54 Oct, 2022
Subject
Computing and Processing
Analytical models
Biological system modeling
Visual analytics
Computational modeling
Sociology
Data visualization
Atrial fibrillation
visual analytics
health informatics
fairness
subgroup analysis
explainability
interpretability
electronic health records
Human-centered computing
Visualization
Language
ISSN
2771-9553
Abstract
Disease risk models can identify high-risk patients and help clinicians provide more personalized care. However, risk models de-veloped on one dataset may not generalize across diverse subpop-ulations of patients in different datasets and may have unexpected performance. It is challenging for clinical researchers to inspect risk models across different subgroups without any tools. Therefore, we developed an interactive visualization system called RMExplorer (Risk Model Explorer) to enable interactive risk model assessment. Specifically, the system allows users to define subgroups of patients by selecting clinical, demographic, or other characteristics, to ex-plore the performance and fairness of risk models on the subgroups, and to understand the feature contributions to risk scores. To demonstrate the usefulness of the tool, we conduct a case study, where we use RMExplorer to explore three atrial fibrillation risk models by applying them to the UK Biobank dataset of 445,329 individuals. RMExplorer can help researchers to evaluate the performance and biases of risk models on subpopulations of interest in their data.