Passer à la navigation principale Passer à la recherche Passer au contenu principal

Renal Transplant Survival Prediction From Unsupervised Deep Learning-Based Radiomics on Early Dynamic Contrast-Enhanced MRI

  • Léo Milecki
  • , Sylvain Bodard
  • , Vicky Kalogeiton
  • , Florence Poinard
  • , Anne Marie Tissier
  • , Idris Boudhabhay
  • , Jean Michel Correas
  • , Dany Anglicheau
  • , Maria Vakalopoulou
  • , Marc Olivier Timsit
  • Université Paris-Saclay
  • Hôpital Necker-Enfants Malades
  • Pôle de Biologie
  • Paris Cité University

Résultats de recherche: Contribution à un journalArticleRevue par des pairs

Résumé

Rationale and Objectives: End-stage renal disease is characterized by an irreversible decline in kidney function. Despite a risk of chronic dysfunction of the transplanted kidney, renal transplantation is considered the most effective solution among available treatment options. Clinical attributes of graft survival prediction, such as allocation variables or results of pathological examinations, have been widely studied. Nevertheless, medical imaging is clinically used only to assess current transplant status. This study investigated the use of unsupervised deep learning-based algorithms to identify rich radiomic features that may be linked to graft survival from early dynamic contrast-enhanced magnetic resonance imaging data of renal transplants. Materials and Methods: A retrospective cohort of 108 transplanted patients (mean age 50 +/- 15, 67 men) undergoing systematic magnetic resonance imaging follow-up examinations (2013 to 2015) was used to train deep convolutional neural network models based on an unsupervised contrastive learning approach. 5-year graft survival analysis was performed from the obtained artificial intelligence radiomics features using penalized Cox models and Kaplan–Meier estimates. Results: Using a validation set of 48 patients (mean age 54 +/- 13, 30 men) having 1-month post-transplantation magnetic resonance imaging examinations, the proposed approach demonstrated promising 5-year graft survival capability with a 72.7% concordance index from the artificial intelligence radiomics features. Unsupervised clustering of these radiomics features enabled statistically significant stratification of patients (p = 0.029). Conclusion: This proof-of-concept study exposed the promising capability of artificial intelligence algorithms to extract relevant radiomics features that enable renal transplant survival prediction. Further studies are needed to demonstrate the robustness of this technique, and to identify appropriate procedures for integration of such an approach into multimodal and clinical settings.

langue originaleAnglais
Pages (de - à)4670-4677
Nombre de pages8
journalAcademic Radiology
Volume32
Numéro de publication8
Les DOIs
étatPublié - 1 août 2025

Empreinte digitale

Examiner les sujets de recherche de « Renal Transplant Survival Prediction From Unsupervised Deep Learning-Based Radiomics on Early Dynamic Contrast-Enhanced MRI ». Ensemble, ils forment une empreinte digitale unique.

Contient cette citation