AI Article Synopsis

  • AI models can reinforce harmful biases, particularly affecting underserved populations, by relying on flawed data from electronic health records (EHRs), especially for low socioeconomic status (SES) groups.
  • The study compared AI performance on asthma predictions across different SES levels and found that children with lower SES had worse model accuracy and more missing health information.
  • The findings indicate a need for addressing data incompleteness in EHRs to mitigate bias and improve AI model performance in healthcare for lower SES groups, using the HOUSES index as a tool for researchers.

Article Abstract

Objective: Artificial intelligence (AI) models may propagate harmful biases in performance and hence negatively affect the underserved. We aimed to assess the degree to which data quality of electronic health records (EHRs) affected by inequities related to low socioeconomic status (SES), results in differential performance of AI models across SES.

Materials And Methods: This study utilized existing machine learning models for predicting asthma exacerbation in children with asthma. We compared balanced error rate (BER) against different SES levels measured by HOUsing-based SocioEconomic Status measure (HOUSES) index. As a possible mechanism for differential performance, we also compared incompleteness of EHR information relevant to asthma care by SES.

Results: Asthmatic children with lower SES had larger BER than those with higher SES (eg, ratio = 1.35 for HOUSES Q1 vs Q2-Q4) and had a higher proportion of missing information relevant to asthma care (eg, 41% vs 24% for missing asthma severity and 12% vs 9.8% for undiagnosed asthma despite meeting asthma criteria).

Discussion: Our study suggests that lower SES is associated with worse predictive model performance. It also highlights the potential role of incomplete EHR data in this differential performance and suggests a way to mitigate this bias.

Conclusion: The HOUSES index allows AI researchers to assess bias in predictive model performance by SES. Although our case study was based on a small sample size and a single-site study, the study results highlight a potential strategy for identifying bias by using an innovative SES measure.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9196683PMC
http://dx.doi.org/10.1093/jamia/ocac052DOI Listing

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