Litcius/Paper detail

Addressing the Challenge of Biomedical Data Inequality: An Artificial Intelligence Perspective

Yan Gao, Teena Sharma, Yan Cui

2023Annual Review of Biomedical Data Science42 citationsDOIOpen Access PDF

Abstract

Artificial intelligence (AI) and other data-driven technologies hold great promise to transform healthcare and confer the predictive power essential to precision medicine. However, the existing biomedical data, which are a vital resource and foundation for developing medical AI models, do not reflect the diversity of the human population. The low representation in biomedical data has become a significant health risk for non-European populations, and the growing application of AI opens a new pathway for this health risk to manifest and amplify. Here we review the current status of biomedical data inequality and present a conceptual framework for understanding its impacts on machine learning. We also discuss the recent advances in algorithmic interventions for mitigating health disparities arising from biomedical data inequality. Finally, we briefly discuss the newly identified disparity in data quality among ethnic groups and its potential impacts on machine learning.

Topics & Concepts

Data scienceArtificial intelligenceHealth careComputer scienceBig dataInequalityHealth equityPsychological interventionMachine learningManagement scienceMedicineData miningEngineeringMathematicsEconomicsEconomic growthMathematical analysisPsychiatryArtificial Intelligence in Healthcare and EducationMachine Learning in HealthcareArtificial Intelligence in Healthcare