The utility of machine learning for predicting donor discard in abdominal transplantation.
Rowland W PettitBritton B MarlattTravis J MilesSelim UzgorenStuart J CorrAnil ShettyJim HavelkaAbbas A RanaPublished in: Clinical transplantation (2023)
The XGBoost method demonstrated a significant improvement in predicting donor allograft discard for both kidney and livers in solid organ transplantation procedures. Machine learning methods are well suited to be incorporated into the clinical workflow; they can provide robust quantitative predictions and meaningful data insights for clinician consideration and transplantation decision-making.