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In Full Health / Resources / Articles / An algorithmic approach to unexplained pain disparities in underserved populations, Ziad Obermeyer et al, Nature Medicine, 2021
Feb 01
An algorithmic approach to unexplained pain disparities in underserved populations, Ziad Obermeyer et al, Nature Medicine, 2021
  • Articles, Resources
  • AI, Algorithms, Asian and Pacific Islander communities, Bias, Black communities, Health Equity, Indigenous communities, Latinx communities, Other communities of color, Racial Equity, Technology

Brief Description: Pain is a widespread phenomenon in society, but underserved populations experience more of it. This article highlights how algorithmic severity measures capture racial, socioeconomic, and educational disparities in pain — as well as how algorithmic predictions could potentially reduce these disparities. 

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