Healthcare AI systems can perpetuate life-threatening biases when hospitals use algorithms to allocate care, resulting in Black patients receiving lower risk scores than white peers with similar conditions.
Healthcare stakes are life-and-death, necessitating urgent debate on regulation and responsible integration of AI systems. Several documented cases show real-world bias in AI used in healthcare. The ongoing discussion is timely, policy-relevant, and fosters cross-community dialogue among patients, clinicians, and technologists regarding accountability and safeguards. Hospitals used AI to allocate care—and Black patients got lower risk scores than white peers. Untested, unregulated systems can harm. In healthcare, bias isn't abstract; it's a matter of equity and safety.
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This video directly supports Pillar 1 of the Bridge Framework: Bias & Fairness
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