• Getting Started With AI: Lessons From the Computer Era
    2025/12/04

    Healthcare is entering a moment that feels new, but isn’t unfamiliar. We’ve lived through this kind of transition before. When computers first arrived in hospitals, they were confusing, unstructured, and intimidating.....yet people learned them one small step at a time. The same pattern is emerging with AI today.Across clinical teams, operations, payers, and life sciences, the professionals who take simple, practical steps with AI are gaining clarity, reducing cognitive load, and building confidence. Those waiting for perfect instructions, perfect governance, or perfect readiness are finding themselves stuck at the starting line.

    続きを読む 一部表示
    12 分
  • AI Education in Healthcare
    2025/11/20

    The next competitive advantage in healthcare will not come from acquiring more AI systems. It will come from developing a workforce that understands how to use those systems with clarity, safety, and confidence.

    続きを読む 一部表示
    11 分
  • Building Trust, Teamwork, and Courage in the Age of Healthcare x AI
    2025/11/05

    As artificial intelligence transforms healthcare, the real challenge isn’t technology....it’s trust. This article explores how healthcare leaders can move from fear to shared confidence by leading with empathy, teamwork, and curiosity. A common statement I get feedback about regarding this podcast is the amount of uncertainty revolving around AI. The future of AI in healthcare will belong to those willing to learn, listen, and lead together.


    続きを読む 一部表示
    13 分
  • Why Healthcare’s AI Winners Won’t Be the Best Predictors, They’ll Be the Best Orchestrators
    2025/10/24

    Artificial intelligence is rapidly shaping the next phase of healthcare transformation. Yet across hospitals and health systems, the results remain uneven. Predictive models routinely perform well in pilots but fail to deliver sustained clinical or operational impact. The difference between promise and performance no longer lies in algorithm design; it lies in how organizations act on what those algorithms predict.

    続きを読む 一部表示
    20 分
  • The Confidence Trap
    2025/10/24

    Why healthcare organizations must treat verification as a core operational discipline, not a procedural checkbox. Through real-world case studies, we show how AI creates invisible failure modes, why LLMs invert the traditional learning curve, and what executives must do to ensure adoption delivers measurable value without exposing the enterprise to hidden liabilities.

    The opportunity is clear, those who combine AI speed with domain rigor will thrive. Those who confuse plausibility for reliability will not.

    続きを読む 一部表示
    15 分
  • Precision AI in Healthcare: From Promise to Practicality
    2025/09/25

    Drawing parallels to precision medicine, we show how AI adoption must be customized system by system, with fast operational gains in areas like prior authorization and scheduling, and slower, carefully validated progress in clinical decision support. We highlight why hybrid neuro-symbolic approaches, orchestration of multiple tools, and organizational sovereignty are critical for sustainable transformation.

    続きを読む 一部表示
    18 分
  • Why the Future of Healthcare AI is Neuro-Symbolic, Not Black-Box
    2025/09/25

    Using real world cases from phantom diagnoses to stalled discharge prediction projects, we show how neuro symbolic AI can align with clinical logic, operational realities, and compliance demands. The opportunity for healthcare executives is clear: move beyond pilot projects by adopting hybrid AI systems that think with clinicians, safeguard patients, and deliver system wide value.

    続きを読む 一部表示
    17 分
  • Technology is not the barrier. Knowledge is.
    2025/09/05

    In an AI-driven world, the challenge isn’t technology....it’s preparing people. We share evidence from across the industry and a role-specific framework that equips staff, managers, and executives to use AI safely and strategically.

    続きを読む 一部表示
    16 分