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Home Articles posted by Nicolas GUIGUI

Author: Nicolas GUIGUI

Hind Dadoun ranks 2nd at the Pierre Laffitte PhD competition!!

Nicolas GUIGUI 2021/10/25 2021/10/26News

Hind Dadoun is a second year PhD student in our team, working under the supervision of Nicholas Ayache, Hervé Delingette and Dr. Anne-Laure Rousseau from Paris Hospitals (AP-HP). Her work focuses on AI-based real time analysis of abdominal ultrasound in partnership with AP-HP, the Health Data Hub and the NGO…

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Panel Discussion on Medical Imaging and Artificial Intelligence

Nicolas GUIGUI 2020/11/02 2020/11/02Events

Listen to Nicholas Ayache at the panel discussion on Medical Imaging and Artificial Intelligence on November 5th, at 1pm. This event is part of the Imaging the Future digital series organized by the University of Bordeaux. More info. Registration for the zoom meeting: contact lise.monneraud@u-bordeaux.fr.

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  • Recent Posts

    • Keynote talk on “AI & Deep Learning for Medical Image Analysis” by Nicholas Ayache 2025/04/25
    • Panel “AI for Health” by Nicholas Ayache 2025/03/31
    • Exceptional Scientific Prize for Paul Tourniaire PhD these work 2025/01/13
    • Grand prix Ampère de l’Électricité de France – Académie des sciences 2024/12/05
    • Rafael Silva, Yingyu Yang, Maëlis Morier, Safaa Al Ali, Maxime Sermesant, from Inria Epione team, won the Best Poster Award at Computing in Cardiology Challenge 2024 2024/09/16
  • Lastest publications
    • Preictal dysfunctions of inhibitory interneurons paradoxically lead to their rebound hyperactivity and to low-voltage-fast onset seizures in Dravet syndrome
    • Cardiac Motion Evolution Model for Analysis of Functional Changes Using Tensor Decomposition and Cross-Sectional Data
    • Algorithms for left atrial wall segmentation and thickness – Evaluation on an open-source CT and MRI image database
    • Motor cortex neurovascular coupling: inputs from ultra–high-frequency ultrasound imaging in humans
  • All publications
  • Non invasive cardiac personalisation
    Simulation of ventricular tachycardia re-entry circuit
    Left: recorded activation map

    Right: image-based simulation

    More details on the associated article.
    heartMeshFine
    Electrophysiology
    Cardiac Fibres from in vivo Diffusion Tensor Imaging
    Specific acquisition and processing were developed to achieve DTI on a beating heart.
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