Machine Learning for Predicting Pulmonary Graft Dysfunction After Double-Lung Transplantation: A Single-Center Study Using Donor, Recipient, and Intraoperative Variables. Academic Article uri icon

Overview

abstract

  • Grade 3 primary graft dysfunction at 72 h (PGD3-T72) is a severe complication following lung transplantation. We aimed to develop an intraoperative machine-learning tool to predict PGD3-T72. We retrospectively analyzed perioperative data from 477 patients who underwent double-lung transplantation at a single center between 2012 and 2019. Data were structured into nine chronological steps, and supervised machine-learning models (XGBoost and logistic regression) were trained to predict PGD3-T72, with hyperparameters optimized via grid search and cross-validation. PGD3-T72 occurred in 83 patients (17.3%). XGBoost outperformed logistic regression, achieving peak performance at second graft implantation with an AUROC of 0.84 IQR: 0.065, p < 0.001, with a sensitivity of 0.81 and a specificity of 0.68. The top predictors included extracorporeal membrane oxygenation (ECMO) use, blood lactate levels, PaO2/FiO2 ratio, and total lung capacity mismatch. Subgroup analyses confirmed robustness across ECMO and non-ECMO cohorts. PGD3-T72 can be reliably predicted intraoperatively, offering potential for early intervention.

authors

  • Fessler, Julien
  • Gouy-Pailler, Cédric
  • Ma, Wenting
  • Devaquet, Jerôme
  • Messika, Jonathan
  • Glorion, Matthieu
  • Sage, Edouard
  • Roux, Antoine
  • Brugière, Olivier
  • Vallée, Alexandre
  • Fischler, Marc
  • Le Guen, Morgan
  • Komorowski, Matthieu

publication date

  • October 22, 2025

Research

keywords

  • Lung Transplantation
  • Machine Learning
  • Primary Graft Dysfunction

Identity

PubMed Central ID

  • PMC12593525

Digital Object Identifier (DOI)

  • 10.3389/ti.2025.14965

PubMed ID

  • 41209673

Additional Document Info

volume

  • 38