AIMI Symposium - Nigam Shah: The Price of Fairness in Clinical Risk Prediction
Recorded by the Stanford Center for Artificial Intelligence in Medicine and Imaging on August 5, 2020 as part of the 2020 AIMI Symposium.
Stanford AIMI Center: https://aimi.stanford.edu
Twitter: https://twitter.com/StanfordAIMI
Видео AIMI Symposium - Nigam Shah: The Price of Fairness in Clinical Risk Prediction канала Stanford AIMI
Stanford AIMI Center: https://aimi.stanford.edu
Twitter: https://twitter.com/StanfordAIMI
Видео AIMI Symposium - Nigam Shah: The Price of Fairness in Clinical Risk Prediction канала Stanford AIMI
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
#AIMI22 | Vision Talks 1- Advancing the Scientific Understanding of Disease#AIMI23 | Welcome and Opening Remarks - Curt LanglotzXIao Liu & Alastair Denniston - Reporting Guidelines for Clinical Trials Involving AI#AIMI22 | Welcome - Curt Langlotz, Stanford AIMI DirectorEvan Calabrese - Feasibility of Simulated Postcontrast MRI of Glioblastomas and Lower-Grade GliomasBOLD-AIR Summit 2021 | Session 1: Data Sharing & Patient PrivacyIBIIS-AIMI Keynote & Fireside Chat | Alexei Efros - Self-Supervision for Learning from the Bottom UpDeep Tomographic Imaging - GE Wang#AIMI24 | Welcome and Opening Remarks - Serena Yeung, Sergios Gatidis, Curt Langlotz, David StuddertLiqin Wang - Development and Validation of a DL Model for Earlier Detection of Cognitive DeclineAIMI Fireside Chat with DJ Patil (Former US Chief Data Scientist) and Curt Langlotz (AIMI Director)#AIMI21 | Industry/Academic Partnerships Panel Discussion#AIMI24 | Panel 1: A Conversation on the Cutting Edge with Healthcare AI Industry LeadersAI Happy Hour | Legal Considerations for AI in MedicineAI Happy Hour | AIMI Symposium Q&AShinjini Kundu - How Might AI and Chest Imaging Help Unravel COVID-19's Mysteries?AIMI Symposium 2020 - Keynote & Fireside Chat with Eric Topol and Daphne KollerAI Happy Hour | 2022 AI Index: Key Health FindingsAIMI Symposium 2020 - Session 4: Bridging Innovation to Application#AIMI21 | Session 3: Fairness, Generalizability & Societal Impact