Litcius/Paper detail

Peeking into a black box, the fairness and generalizability of a MIMIC-III benchmarking model

Eliane Röösli, Selen Bozkurt, Tina Hernandez‐Boussard

2022Scientific Data68 citationsDOIOpen Access PDF

Abstract

As artificial intelligence (AI) makes continuous progress to improve quality of care for some patients by leveraging ever increasing amounts of digital health data, others are left behind. Empirical evaluation studies are required to keep biased AI models from reinforcing systemic health disparities faced by minority populations through dangerous feedback loops. The aim of this study is to raise broad awareness of the pervasive challenges around bias and fairness in risk prediction models. We performed a case study on a MIMIC-trained benchmarking model using a broadly applicable fairness and generalizability assessment framework. While open-science benchmarks are crucial to overcome many study limitations today, this case study revealed a strong class imbalance problem as well as fairness concerns for Black and publicly insured ICU patients. Therefore, we advocate for the widespread use of comprehensive fairness and performance assessment frameworks to effectively monitor and validate benchmark pipelines built on open data resources.

Topics & Concepts

Generalizability theoryBenchmarkingBlack boxBenchmark (surveying)Computer scienceFairness measureHealth careQuality (philosophy)Data scienceArtificial intelligenceRisk analysis (engineering)PsychologyBusinessPolitical scienceMarketingDevelopmental psychologyTelecommunicationsWirelessGeographyGeodesyEpistemologyThroughputLawPhilosophyArtificial Intelligence in Healthcare and EducationMachine Learning in HealthcareHealthcare cost, quality, practices