2023
DOI: 10.1101/2023.11.06.23298164
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Derivation and Validation of a Machine Learning Approach to Detect and Mitigate Biases in Healthcare Data

Faris F. Gulamali,
Ashwin S. Sawant,
Lora Liharska
et al.

Abstract: The adoption of diagnosis and prognostic algorithms in healthcare has led to concerns about the perpetuation of bias against disadvantaged groups of individuals. Deep learning methods to detect and mitigate bias have revolved around modifying models, optimization strategies, and threshold calibration with varying levels of success. Here, we generate a data-centric, model-agnostic, task-agnostic approach to evaluate dataset bias by investigating the relationship between how easily different groups are learned a… Show more

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