Algorithmic fairness and bias mitigation for clinical machine learning with deep reinforcement learning

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作者
Jenny Yang
Andrew A. S. Soltan
David W. Eyre
David A. Clifton
机构
[1] University of Oxford,Institute of Biomedical Engineering, Department of Engineering Science
[2] Oxford University Hospitals NHS Foundation Trust,John Radcliffe Hospital
[3] University of Oxford,RDM Division of Cardiovascular Medicine
[4] University of Oxford,Big Data Institute, Nuffield Department of Population Health
[5] Oxford-Suzhou Centre for Advanced Research,undefined
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As models based on machine learning continue to be developed for healthcare applications, greater effort is needed to ensure that these technologies do not reflect or exacerbate any unwanted or discriminatory biases that may be present in the data. Here we introduce a reinforcement learning framework capable of mitigating biases that may have been acquired during data collection. In particular, we evaluated our model for the task of rapidly predicting COVID-19 for patients presenting to hospital emergency departments and aimed to mitigate any site (hospital)-specific and ethnicity-based biases present in the data. Using a specialized reward function and training procedure, we show that our method achieves clinically effective screening performances, while significantly improving outcome fairness compared with current benchmarks and state-of-the-art machine learning methods. We performed external validation across three independent hospitals, and additionally tested our method on a patient intensive care unit discharge status task, demonstrating model generalizability.
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页码:884 / 894
页数:10
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