Demographic bias in misdiagnosis by computational pathology models
Anurag Vaidya(Broad Institute), Faisal Mahmood(Broad Institute), Tiffany Chen(Broad Institute), Yuzhe Yang, Drew F. K. Williamson(Broad Institute), Richard J. Chen(National Institutes of Health), Andrew H. Song(Broad Institute), Ming Y. Lu(Broad Institute), Thomas Hartvigsen(University of Virginia), Guillaume Jaume(Broad Institute), Muhammad Shaban(University of Agriculture Faisalabad), Emma Dyer(University of Chicago), Jana Lipková(Broad Institute)
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