Practical AI in Healthcare

S1, E42 - Live with Fred Bennett, Founder & CEO, PatientTalker

58 min · 21. juni 2026
episode S1, E42 - Live with Fred Bennett, Founder & CEO, PatientTalker cover

Beskrivelse

For its first-ever live episode, recorded before an audience at New York Tech Week, Practical AI in Healthcare sits down with Fred Bennett, founder and CEO of PatientTalker — an ambient-AI app built for the patient rather than the clinician. (Steve Labkoff is a disclosed advisor to the company.) Bennett traces the idea to his father's cardiology visit, where three family members left with three different memories of the same conversation. The discussion covers why patients are the forgotten end-user of clinical AI, how to build a "minimum trustable product," the honest question of who pays for patient-first tools, and why the technology is rarely the hard part.

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Alle episoder

43 episoder

episode S1, E40 - Jeff Smith — AI Regulation, Transparency & Innovation from the Government Perspective cover

S1, E40 - Jeff Smith — AI Regulation, Transparency & Innovation from the Government Perspective

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On National Nurses Day, Practical AI in Healthcare welcomes its first nurse: Sarah Rossetti, RN, PhD, of Columbia University. Her CONCERN early warning system takes an unusual approach to predicting patient deterioration. Instead of modeling a patient's vital signs and labs, it models the nurse's documentation behavior, since the frequency and timing of charting reflect clinical concern long before the numbers move. In a 74-unit randomized trial of more than 60,000 patients, published in Nature Medicine, CONCERN was associated with a 35.6% reduction in instantaneous mortality risk. Rossetti and the hosts unpack the method, the counterintuitive rise in ICU transfers, equity safeguards, and what ambient AI means for the signal. https://practicalaiinhealthcare.com/episodes/#S1E39 [https://practicalaiinhealthcare.com/episodes/#S1E39] More on Sarah Rossetti's work: https://www.dbmi.columbia.edu/profile/sarah-collins-rossetti/ [https://www.dbmi.columbia.edu/profile/sarah-collins-rossetti/]

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episode S1, E38 - Reflections 5: How Specialized Does AI Have to Be to Actually Work? cover

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