Performance of intensive care unit severity scoring systems across different ethnicities in the USA: a retrospective observational study
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Geographic Distribution of US cohorts Used to train Deep Learning Algorithms
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Current status
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Towards FAIR Algorithms in RL
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Fighting Bias in Training
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Saliency maps
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Fairness in Al reporting guidelines (review)
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An algorithmic approach to reducing unexplained pain disparities in underserved populations
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Recalibrating the use of Race in Medical Research
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Call to Action
Description:
Explore the critical issue of fairness in medical algorithms through this 41-minute conference talk. Delve into the challenges and opportunities surrounding AI adoption in healthcare, focusing on the disproportionate impact on minority patients during the COVID-19 pandemic. Examine the variable performance of AI models on unseen datasets and the potential bias in outcome proxies like healthcare costs. Learn about practical approaches to implementing fair medical AI and understand the difficulties in operationalizing fairness. Discover the background and context for both fair and unfair consequences of AI algorithms in healthcare. Engage with a grand challenge that presents open questions in the field. Cover topics such as racial bias in pulse oximetry measurements, performance of ICU severity scoring systems across ethnicities, geographic distribution of US cohorts in deep learning algorithms, and strategies for fighting bias in training. Gain insights into fairness in AI reporting guidelines, algorithmic approaches to reducing pain disparities, and the recalibration of race in medical research.
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Fairness in Medical Algorithms - Threats and Opportunities