Seeing is believing in biomedicine, which isn't great when AI gets it wrong

Hacker News - AI
Jul 27, 2025 11:48
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Summary

The article discusses the risks of over-reliance on AI-generated biomedical visualizations, highlighting cases where AI models have produced convincing but incorrect images or data. This raises concerns about trust and accuracy in medical decision-making, emphasizing the need for rigorous validation and human oversight in deploying AI tools in healthcare.

Article URL: https://www.theregister.com/2025/07/27/biomedviz_ai_wrong_problems/ Comments URL: https://news.ycombinator.com/item?id=44700623 Points: 2 # Comments: 0

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