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  • AI models miss disease in Black and female patients

    Posted: 2025-03-27 18:38:21

    AI models designed to detect diseases from medical images often perform worse for Black and female patients. This disparity stems from the datasets used to train these models, which frequently lack diverse representation and can reflect existing biases in healthcare. Consequently, the AI systems are less proficient at recognizing disease patterns in underrepresented groups, leading to missed diagnoses and potentially delayed or inadequate treatment. This highlights the urgent need for more inclusive datasets and bias mitigation strategies in medical AI development to ensure equitable healthcare for all patients.

    Summary of Comments ( 152 )
    https://news.ycombinator.com/item?id=43496644

    HN commenters discuss potential causes for AI models performing worse on Black and female patients. Several suggest the root lies in biased training data, lacking diversity in both patient demographics and the types of institutions where data is collected. Some point to the potential of intersectional bias, where being both Black and female leads to even greater disparities. Others highlight the complexities of physiological differences and how they might not be adequately captured in current datasets. The importance of diverse teams developing these models is also emphasized, as is the need for rigorous testing and validation across different demographics to ensure equitable performance. A few commenters also mention the known issue of healthcare disparities and how AI could exacerbate existing inequalities if not carefully developed and deployed.