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Limiting bias in AI models for improved and equitable cancer care
Nature Reviews Cancer ( IF 72.5 ) Pub Date : 2024-08-27 , DOI: 10.1038/s41568-024-00739-x
Marzyeh Ghassemi 1, 2 , Alexander Gusev 3
Affiliation  

Cancer screening, diagnosis and care stand to benefit greatly from advances in artificial intelligence (AI). Researchers, developers and deployers must ensure that applications of AI avoid known racial and gender biases to advance health care for all. Cancer screening, diagnosis and care can benefit greatly from advances in artificial intelligence (AI). In this Comment, Ghassemi and Gusev discuss how AI applications must address and avoid known racial and gender biases to improve health care for all.

中文翻译:


限制人工智能模型的偏见,以改善和公平的癌症护理



癌症筛查、诊断和护理将从人工智能 (AI) 的进步中受益匪浅。研究人员、开发人员和部署人员必须确保人工智能的应用避免已知的种族和性别偏见,以促进全民医疗保健。癌症筛查、诊断和护理可以从人工智能 (AI) 的进步中受益匪浅。在这篇评论中,Ghassemi 和 Gusev 讨论了人工智能应用程序必须如何解决和避免已知的种族和性别偏见,以改善所有人的医疗保健。
更新日期:2024-08-27
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