• AI for Tailored Diabetes Care: Clinician Perspectives on Patient Needs
    2025/04/19


    🚨 AI in Clinical Diabetes Decision-Making — What’s Just Hype vs. Real Help?

    A new Nature paper just dropped:
    📄 Artificial Intelligence in Clinical Decision Support: Applications, Challenges, and Future Directions
    👉 Read Full PDF Here

    This one’s going to set the tone for how hospitals and health systems adopt AI in 2025 and beyond.

    🧠 Key insights:

    • Why most AI tools still struggle to get past the pilot stage

    • What “explainability” really means to a clinician at the bedside

    • The ethical risk of AI recommending treatments without accountability

    💬 My question to you:
    What’s one thing you think AI should never replace in healthcare?

    Let’s talk 👇

    #AIinHealthcare #DigitalHealth #HealthTech #ClinicalAI #FutureOfMedicine #NatureDigitalMedicine

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    14 分
  • Can AI Guarantee Patient Safety? Rethinking Quality Assurance in Healthcare
    2025/04/19

    AI doesn’t just predict anymore—it double-checks the doctor.

    How do we know a diagnosis is accurate, a surgery went right, or a patient received the right care? Enter: AI-powered quality assurance.

    In this episode, we explore how AI is transforming patient safety—across diagnostics, pathology, surgery, and more. From advanced lesion detection during endoscopy to precision in pathology, AI is already outperforming human baselines in critical ways. But what stands in the way of full adoption? We also unpack the hard stuff: data standards, explainability, and ethical oversight.

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    38 分
  • What happens when you drop med students into an AI datathon?
    2025/04/19

    No lectures. No theory. Just code, datasets, and real-world healthcare problems.

    This week on AI in Medicine, we explore a trainee-led case study where future doctors learned Python, value-based care analytics, and responsible GenAI—all through hands-on data challenges.

    These aren’t hackathons for show. They’re how we build a new kind of physician:
    🧠 Clinically sharp
    💻 Data-literate
    🧭 Ethically grounded

    🎙️ AI Datathons in Medical Education: A Trainee-Led Case Study

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    15 分
  • Is AI in Medicine Crossing the Line? Ethics, Laws, and What Comes Next?
    2025/03/28

    AI is revolutionizing medicine—but are we thinking deeply enough about what happens when it goes wrong?

    In this episode, we break down a landmark paper that explores the ethical and legal minefields of using AI in healthcare. From algorithmic bias to economic disruption and the clash between innovation and accountability, we explore what responsible AI should look like. The conversation spans global legal efforts—from the EU to Brazil—and asks one critical question: How do we keep AI human-centered in a system built for scale and speed?

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    14 分
  • Who’s Responsible When AI Fails in Europe? Robotics, Medicine, and Liability Across the EU
    2025/02/27

    The intersection of robotics and artificial intelligence (AI) in healthcare within the framework of European regulations, focusing specifically on medical malpractice. It highlights the transformative potential of these technologies while addressing the complex legal and ethical challenges they introduce. A central theme is the assignment of responsibility when AI systems or robots cause harm, examining concepts like "electronic persons" and strict liability. The authors analyze existing European regulations and official reports to assess their adequacy in addressing these novel situations. The document argues for the need for specific legislation to govern medical liability in cases involving AI and robotics. Ultimately, the analysis advocates for a balanced approach that safeguards patient rights while fostering technological innovation.

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    14 分