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Hugues Turbe

Showing results (1-10 of 4) with videos related to

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Studies in Health Technology and Informatics|May 25, 2022
Deep SNOMED CT Enabled Large Clinical Database About COVID-19Christophe Gaudet-Blavignac, Julien Ehrsam, Hugues Turbe, et al.
Revue Medicale Suisse|January 29, 2026
[Opaque technologies and transparency : what do users expect?]Mina Bjelogrlic, Laëtitia Gosetto, Hugues Turbe, et al.
Studies in Health Technology and Informatics|May 23, 2026
A Zoo of AI Transparency Indicators: What Do Users Want (and Need) in Hospitals?Mina Bjelogrlic, Inês E Amaro, Laëtitia Gosetto, et al.
NPJ Digital Medicine|August 18, 2025
Author Correction: A scoping review of self-supervised representation learning for clinical decision making using EHR categorical dataYuanyuan Zheng, Adel Bensahla, Mina Bjelogrlic, et al.
Pageof 1

Showing results (1-10 of 4) with videos related to

Sort By:
Pageof 1
Studies in Health Technology and Informatics|May 25, 2022
Deep SNOMED CT Enabled Large Clinical Database About COVID-19Christophe Gaudet-Blavignac, Julien Ehrsam, Hugues Turbe, et al.
Revue Medicale Suisse|January 29, 2026
[Opaque technologies and transparency : what do users expect?]Mina Bjelogrlic, Laëtitia Gosetto, Hugues Turbe, et al.
Studies in Health Technology and Informatics|May 23, 2026
A Zoo of AI Transparency Indicators: What Do Users Want (and Need) in Hospitals?Mina Bjelogrlic, Inês E Amaro, Laëtitia Gosetto, et al.
NPJ Digital Medicine|August 18, 2025
Author Correction: A scoping review of self-supervised representation learning for clinical decision making using EHR categorical dataYuanyuan Zheng, Adel Bensahla, Mina Bjelogrlic, et al.
Pageof 1