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AI Risk Prediction and Decision Support System (AI-TRiPS) for Trauma Care with Zane Perkins

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Manage episode 483646360 series 3095917
Content provided by Eoin Walker. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Eoin Walker or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://podcastplayer.com/legal.

In this episode of the Pre-Hospital Care Podcast, we explore the rapidly evolving role of artificial intelligence in trauma care, focusing on the AI Risk Prediction and Decision Support System (AI-TRiPS)—a cutting-edge AI tool designed to enhance decision-making in high-pressure trauma settings.

AI-TRiPS is built on Bayesian networks for clinical decision support, bridging the gap between AI development and real-world application. But how do we ensure AI tools are accurate, usable, and trusted by frontline clinicians? We cover:

🔹 How AI-TRiPS is being trialled in London’s Major Trauma Centres & Air Ambulance Services

🔹 The impact of AI-TRiPS on clinician performance and cognitive load in trauma care

🔹 Can AI-driven decision support improve outcomes in stroke, sepsis, and cardiac arrest?

🔹 The challenges of integrating AI into pre-hospital care and the resuscitation bay

Join us as we discuss the potential of AI to revolutionise trauma care and what this means for the future of pre-hospital medicine. You can read more about AI-TRiPS here: https://www.londonsairambulance.org.uk/news-and-stories/charity-news/bold-step-forward-our-patients-new-ai-study

  continue reading

248 episodes

Artwork
iconShare
 
Manage episode 483646360 series 3095917
Content provided by Eoin Walker. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Eoin Walker or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://podcastplayer.com/legal.

In this episode of the Pre-Hospital Care Podcast, we explore the rapidly evolving role of artificial intelligence in trauma care, focusing on the AI Risk Prediction and Decision Support System (AI-TRiPS)—a cutting-edge AI tool designed to enhance decision-making in high-pressure trauma settings.

AI-TRiPS is built on Bayesian networks for clinical decision support, bridging the gap between AI development and real-world application. But how do we ensure AI tools are accurate, usable, and trusted by frontline clinicians? We cover:

🔹 How AI-TRiPS is being trialled in London’s Major Trauma Centres & Air Ambulance Services

🔹 The impact of AI-TRiPS on clinician performance and cognitive load in trauma care

🔹 Can AI-driven decision support improve outcomes in stroke, sepsis, and cardiac arrest?

🔹 The challenges of integrating AI into pre-hospital care and the resuscitation bay

Join us as we discuss the potential of AI to revolutionise trauma care and what this means for the future of pre-hospital medicine. You can read more about AI-TRiPS here: https://www.londonsairambulance.org.uk/news-and-stories/charity-news/bold-step-forward-our-patients-new-ai-study

  continue reading

248 episodes

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