Liver transplantation is a last-resort solution for patients with end-stage liver failure. However, due to the shortage of donor organs, extended-criteria donors (older, steatotic, or ischemic) are increasingly used. While these grafts are essential for reducing waiting lists, they carry higher post-transplantation complication risks, especially when affected by liver steatosis. Steatosis is characterized by fat accumulation in hepatocytes and is classified into microsteatosis (small droplets) and macrosteatosis (larger droplets), with the latter being particularly critical for graft viability.
Currently, steatosis evaluation primarily relies on biopsies and histopathological analyses—an invasive, subjective method that provides only localized liver assessments. To provide a faster and non-invasive alternative, near-infrared diffuse reflectance measurements have recently been performed on liver samples as part of Antoine Uzel's thesis. This optical method enables the collection of information on tissue properties without the need for a biopsy, offering a promising alternative.
This internship aims to develop a non-invasive method to assess hepatic microsteatosis and macrosteatosis using Monte Carlo simulations and a deep learning algorithm. The intern will participate in all stages of the project, from theoretical modeling to experimental validation.
The candidate should have strong skills in numerical modeling and data processing, as well as knowledge of machine learning algorithms. Previous experience with Monte Carlo simulations, spectral analysis, or biomedical optics would be a plus.
- Duration: 4 to 6 months
- Location: CREATIS Laboratory, 21 Avenue Jean Capelle O, Villeurbanne
- Supervision: Cédric Ray-Garreau (CREATIS), Bruno Montcel (CREATIS), Antoine Uzel (CREATIS)
- Application: Send CV, transcript, and cover letter to cedric.ray(at)univ-lyon1.fr, bruno.montcel(at)univ-lyon1.fr, and antoine.uzel(at)creatis.insa-lyon.fr
Veröffentlichungsdatum:
03 Feb 2026Standort:
BerlinTyp:
VollzeitArbeitsmodell:
Vor OrtKategorie:
Erfahrung:
2+ yearsArbeitsverhältnis:
Angestellt
Möchtest über ähnliche Jobs informiert werden? Dann beauftrage jetzt den Fuchsjobs KI Suchagenten!