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AI highlights flaws in healthcare data schemas, demanding new approaches

Healthcare's existing data schemas, built for billing and efficiency, inadvertently limit the perception of health to discrete events rather than continuous signals. AI's ability to relentlessly optimize within defined spaces, as demonstrated by Andrej Karpathy's AutoResearch, highlights the critical importance of these schemas, referred to as 'program.md'. If these schemas are flawed, AI will efficiently optimize for the wrong outcomes, underscoring the need for systems that can identify and learn from the limitations of current data ontologies. AI

影响 AI's ability to optimize within defined data schemas highlights the critical need to refine healthcare ontologies for better patient care.

排序理由 The article is an opinion piece discussing the implications of AI on healthcare data structures, drawing parallels to AI research projects.

在 Forbes — Innovation 阅读 →

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AI highlights flaws in healthcare data schemas, demanding new approaches

报道来源 [1]

  1. Forbes — Innovation TIER_1 · Urvish Parikh, Forbes Councils Member ·

    Healthcare's Program.md

    Healthcare's schemas are its program.md. And most of the industry hasn't looked at that file in decades.