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An adversarial training framework for mitigating algorithmic biases in clinical machine learning

Jenny Yang, Andrew A. S. Soltan, David W. Eyre, Yang Yang, David A. Clifton

2023npj Digital Medicine148 citationsDOIOpen Access PDF

Abstract

Machine learning is becoming increasingly prominent in healthcare. Although its benefits are clear, growing attention is being given to how these tools may exacerbate existing biases and disparities. In this study, we introduce an adversarial training framework that is capable of mitigating biases that may have been acquired through data collection. We demonstrate this proposed framework on the real-world task of rapidly predicting COVID-19, and focus on mitigating site-specific (hospital) and demographic (ethnicity) biases. Using the statistical definition of equalized odds, we show that adversarial training improves outcome fairness, while still achieving clinically-effective screening performances (negative predictive values >0.98). We compare our method to previous benchmarks, and perform prospective and external validation across four independent hospital cohorts. Our method can be generalized to any outcomes, models, and definitions of fairness.

Topics & Concepts

Adversarial systemOddsTask (project management)Machine learningComputer scienceArtificial intelligenceOutcome (game theory)Training (meteorology)Data collectionData scienceLogistic regressionStatisticsMathematicsEngineeringSystems engineeringMeteorologyMathematical economicsPhysicsArtificial Intelligence in Healthcare and EducationCOVID-19 diagnosis using AIExplainable Artificial Intelligence (XAI)
An adversarial training framework for mitigating algorithmic biases in clinical machine learning | Litcius