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Sex-Based Performance Disparities in Machine Learning Algorithms for Cardiac Disease Prediction: Exploratory Study.

Isabel Straw1, Geraint Rees1, Parashkev Nachev1

  • 1University College London, London, United Kingdom.

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|August 26, 2024
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Summary
This summary is machine-generated.

Cardiology algorithms show significant sex bias, underdiagnosing female patients due to underrepresentation in data and flawed performance. Remediation techniques failed to correct these health inequities.

Keywords:
artificial intelligencecardiaccardiac diseasecardiologyhealth carehealth equityheart failureinequalitymachine learningmanagementmedicineperformancequantitative evaluationsex

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Area of Science:

  • Artificial Intelligence in Healthcare
  • Cardiology Machine Learning
  • Algorithmic Bias and Health Equity

Background:

  • Artificial intelligence (AI) bias is increasingly recognized across sectors, with potential to exacerbate health disparities in healthcare.
  • Algorithmic inequities in healthcare can widen existing health inequalities among demographic groups.

Purpose of the Study:

  • To identify and characterize bias in machine learning (ML) algorithms used for heart failure management.
  • To specifically investigate sex-based disparities in the performance of cardiology algorithms.

Main Methods:

  • Literature search of PubMed and Web of Science for cardiac ML algorithms focusing on demographic bias.
  • Reproduced existing ML algorithms on two open-source datasets (UCI Heart Failure and UCI CAD).
  • Assessed algorithms for sex bias, focusing on false negative rates (FNR) and evaluating remediation techniques.

Main Results:

  • Only 3 out of 127 reviewed papers addressed sex differences; female patients were underrepresented in datasets.
  • Reproducing algorithms showed mean accuracies around 85%, but significant sex disparities were found.
  • Female patients experienced higher FNR (underdiagnosis), while male patients had higher false positive rates (overdiagnosis).

Conclusions:

  • Cardiac ML research has overlooked significant underperformance of algorithms for female patients.
  • Sex disparities in algorithmic error rates and feature importance were quantified.
  • Current remediation techniques were insufficient to eliminate identified inequities in cardiology algorithms.