Scientific Reports (Nov 2024)

Multi-task Bayesian model combining FDG-PET/CT imaging and clinical data for interpretable high-grade prostate cancer prognosis

  • Maxence Larose,
  • Louis Archambault,
  • Nawar Touma,
  • Raphaël Brodeur,
  • Félix Desroches,
  • Nicolas Raymond,
  • Daphnée Bédard-Tremblay,
  • Danahé LeBlanc,
  • Fatemeh Rasekh,
  • Hélène Hovington,
  • Bertrand Neveu,
  • Martin Vallières,
  • Frédéric Pouliot

DOI
https://doi.org/10.1038/s41598-024-77498-0
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 23

Abstract

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Abstract We propose a fully automatic multi-task Bayesian model, named Bayesian Sequential Network (BSN), for predicting high-grade (Gleason $$\ge$$ ≥ 8) prostate cancer (PCa) prognosis using pre-prostatectomy FDG-PET/CT images and clinical data. BSN performs one classification task and five survival tasks: predicting lymph node invasion (LNI), biochemical recurrence-free survival (BCR-FS), metastasis-free survival, definitive androgen deprivation therapy-free survival, castration-resistant PCa-free survival, and PCa-specific survival (PCSS). Experiments are conducted using a dataset of 295 patients. BSN outperforms widely used nomograms on all tasks except PCSS, leveraging multi-task learning and imaging data. BSN also provides automated prostate segmentation, uncertainty quantification, personalized feature-based explanations, and introduces dynamic predictions, a novel approach that relies on short-term outcomes to refine long-term prognosis. Overall, BSN shows great promise in its ability to exploit imaging and clinicopathological data to predict poor outcome patients that need treatment intensification with loco-regional or systemic adjuvant therapy for high-risk PCa.

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