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Michelle Mello | Understanding Liability Risk from Healthcare AI Tools | Stanford HAI
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eventSeminar

Michelle Mello | Understanding Liability Risk from Healthcare AI Tools

Status
Past
Date
Wednesday, January 24, 2024 12:00 PM - 1:30 PM PST/PDT
Location
Hybrid
Topics
Healthcare

When use of a healthcare AI tool harms patients, who is responsible? This session will examine how courts are grappling with the challenges of adjudicating liability for software-related injuries and how health systems and clinicians can assess and manage AI liability risk. 

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Event Contact
Madeleine Wright
mwright7@stanford.edu
Related
  • Michelle Mello
    Professor of Law, Stanford Law School; Professor of Health Policy, Department of Health Policy, Stanford University School of Medicine

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