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Evaluating Algorithmic Bias in 30-Day Hospital Readmission Models: Retrospective Analysis.

H Echo WangJonathan P WeinerSuchi SariaHadi Kharrazi
Published in: Journal of medical Internet research (2024)
Caution must be taken when interpreting fairness measures' face value. A higher FNR or FPR could potentially reflect missed opportunities or wasted resources, but these measures could also reflect health care use patterns and gaps in care. Simply relying on the statistical notions of bias could obscure or underplay the causes of health disparity. The imperfect health data, analytic frameworks, and the underlying health systems must be carefully considered. Fairness measures can serve as a useful routine assessment to detect disparate model performances but are insufficient to inform mechanisms or policy changes. However, such an assessment is an important first step toward data-driven improvement to address existing health disparities.
Keyphrases
  • healthcare
  • public health
  • mental health
  • health information
  • electronic health record
  • affordable care act
  • emergency department
  • human health
  • big data
  • quality improvement
  • machine learning
  • pain management