『The Healthcare AI Podcast』のカバーアート

The Healthcare AI Podcast

The Healthcare AI Podcast

著者: John Snow Labs
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Explore real-world applications of generative AI, large language models, and advanced NLP in The Applied AI Podcast. We dive into healthcare, finance, legal, life sciences, and more with expert interviews, practical case studies, and insights on open-source tools and frameworks. Discover how organizations deploy AI at scale, navigate ethical and technical challenges, and unlock transformative business value. Open and impactful discussions for AI professionals and enthusiasts.John Snow Labs
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  • A Survey of LLM-based Agents in Medicine: How far are we from Baymax?
    2025/09/24

    In this episode of The Healthcare AI Pod, we unpack the impact of LLM-based medical agents on modern medicine – from architecture and multi-agent design to regulation and real-world risks.

    Healthcare is facing a perfect storm: ageing populations, staff shortages, and rising costs. Can AI agents be the solution?

    We discuss insights from over 60 studies on medical LLMs, including key areas such as:

    • Multi-agent architectures and clinical decision support
    • The security dilemma: protecting patient data when your API is just text
    • Prompt injection attacks and HIPAA compliance challenges
    • Liability concerns in AI-powered healthcare

    From Baymax dreams to real-world implementation: how close are we?

    Timestamps

    0:00 Introduction – Baymax as inspiration for medical AI
    2:20 What are LLM-based medical agents and how they differ from models
    10:00 Healthcare security – regulation, compliance, and patient data
    14:50 Patient reliance on AI, prompt-hacking, and global access challenges
    18:00 Agent architectures – functional, role-based, and departmental approaches
    25:10 Task decomposition and subject-matter expert input
    28:00 Reward functions, accuracy vs user-pleasing bias, and physician training
    33:00 User experience – agent personalities and conversational design
    45:20 Liability, insurance, and evaluation of medical AI systems
    54:20 Future outlook – Baymax revisited, challenges, and opportunities ahead

    Mentioned Materials

    • A Survey of LLM-based Agents in Medicine: How far are we from Baymax? https://arxiv.org/abs/2502.11211
    • MAGDA: Multi-agent guideline-driven diagnostic assistance https://arxiv.org/abs/2409.06351


    Listen On

    • YouTube – https://youtu.be/R9h_Whj6sB0
    • Apple Podcasts – https://podcasts.apple.com/us/podcast/the-healthcare-ai-podcast/id1827098175
    • Spotify – https://open.spotify.com/show/2XNrQBeCY7OGql2jVhcP7t
    • Amazon Music – https://music.amazon.com/podcasts/5b1f49a6-dba8-479e-acdf-9deac2f8f60e/the-healthcare-ai-podcast


    Connect With Us

    • Our Website – https://www.johnsnowlabs.com/
    • LinkedIn – https://www.linkedin.com/company/johnsnowlabs/
    • Facebook – https://www.facebook.com/JohnSnowLabsInc/
    • X (Twitter) – https://x.com/JohnSnowLabs

    #HealthcareInnovation #AIAgents #HealthTech #MedicalAI #AIEthics #Baymax #MedicalLLM #HealthcareAI #ClinicalAI #MedicalTechnology #AIResearch #DigitalHealth #FutureOfMedicine #AIinMedicine #HealthcareAutomation #MedicalChatbots #PatientCare #HealthcareSolutions #MedicalInnovation

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    57 分
  • The AI Governance Game-Changer: How to Create Bias-Free Healthcare Solutions?
    2025/08/14

    Can AI make healthcare feedback fairer and smarter? In Episode 4 of The Healthcare AI Podcast, Ben Webster (VP of AI Solutions at NLP Logix) and David Talby (CEO of John Snow Labs) dive into a game-changing approach to AI governance. Discover how LangTest tackles bias in processing 1.5M hospital feedback audio files annually, ensuring fair sentiment analysis and actionable insights. From eliminating gender bias in nurse vs. doctor feedback to building robust, ethical AI models, this episode is a must-watch for healthcare and AI innovators!


    Join the Conversation: What’s the biggest challenge in healthcare AI today? Comment below!


    Timestamps

    06:18 – Bias in patient-feedback NLP

    07:13 – LangTest & synthetic debiasing

    12:30 – Data contamination & custom benchmarks

    15:19 – Robustness testing & augmentation

    20:18 – Medical red-teaming & safety checks

    23:44 – Clinical cognitive biases in LLMs


    Listen on your favourite platform:

    • ⁠YouTube⁠: https://www.youtube.com/playlist?list=PL5zieHHAlvApZKkwtu746ivthRc5zyTiU

    • ⁠⁠Apple Podcast⁠⁠: https://podcasts.apple.com/us/podcast/the-healthcare-ai-podcast/id1827098175

    • ⁠⁠Spotify⁠⁠: https://open.spotify.com/show/2XNrQBeCY7OGql2jVhcP7t

    • Amazon Music⁠⁠: https://music.amazon.com/podcasts/5b1f49a6-dba8-479e-acdf-9deac2f8f60e/the-healthcare-ai-podcast


    Connect with us:

    Our website: https://www.johnsnowlabs.com/

    LinkedIn: https://www.linkedin.com/company/johnsnowlabs/

    Facebook: https://www.facebook.com/JohnSnowLabsInc/

    X: https://x.com/JohnSnowLabs


    #AIinHealthcare #AIBias #EthicalAI #AIGovernance #NLP #HealthTech #PatientFeedback #HealthcareAI

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    29 分
  • First Steps with Model Context Protocol (MCP). Healthcare use-cases
    2025/08/05

    Dive into Episode 3 of the Healthcare AI Podcast, where Vishnu Vettrivel and Alex Thomas explore the growing world of Model Context Protocol (MCP) with a focus on Healthcare MCP (HMCP) from Innovaccer. This episode breaks down the essentials of MCP, from converting papers to N-Triples to deploying on Claude Desktop. Learn about resources, prompts, and tools that empower AI models, plus key security considerations. Stick around for a call to action to spark your thoughts on agentic frameworks!


    Tune in to discover why MCP could be the next big leap for AI in Healthcare.


    Timestamps

    01:01 – Introducing the Model Context Protocol (MCP): Purpose & Core Concepts

    05:44 – Healthcare MCP (HMCP) by Innovaccer

    06:50 – Basics of MCP: Resources, Prompts, Tools

    10:50 – Demo: Deploying to Claude Desktop (Example MCP Project)

    22:24 – Healthcare Relevance & HMCP

    23:46 – Security & Limitations

    27:30 – Future Directions


    Listen on your favourite platform:

    • YouTube: https://www.youtube.com/playlist?list=PL5zieHHAlvApZKkwtu746ivthRc5zyTiU

    • ⁠⁠Apple Podcast⁠⁠: https://podcasts.apple.com/us/podcast/the-healthcare-ai-podcast/id1827098175

    • ⁠⁠Spotify⁠⁠: https://open.spotify.com/show/2XNrQBeCY7OGql2jVhcP7t

    • Amazon Music⁠⁠: https://music.amazon.com/podcasts/5b1f49a6-dba8-479e-acdf-9deac2f8f60e/the-healthcare-ai-podcast


    Resources:

    - Model Context Protocol: https://modelcontextprotocol.io/overview

    - Introducing HMCP: A Universal, Open Standard for AI in Healthcare: https://innovaccer.com/resources/blogs/introducing-hmcp-a-universal-open-standard-for-ai-in-healthcare

    - We built the security layer MCP always needed: https://blog.trailofbits.com/2025/07/28/we-built-the-security-layer-mcp-always-needed/


    Connect with us:

    Our website: https://www.johnsnowlabs.com/

    LinkedIn: https://www.linkedin.com/company/johnsnowlabs/

    Facebook: https://www.facebook.com/JohnSnowLabsInc/

    X: https://x.com/JohnSnowLabs


    #MCP #ModelContextProtocol #HealthcareAI #MedicalData #AgenticAI #ClinicalAI #DataScience #HealthTech

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    30 分
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