The utility of machine learning for predicting donor discard in abdominal transplantation

Author:

Pettit Rowland W.1ORCID,Marlatt Britton B.2,Miles Travis J.3,Uzgoren Selim2,Corr Stuart J.4567,Shetty Anil2,Havelka Jim2,Rana Abbas1ORCID

Affiliation:

1. Department of Medicine Baylor College of Medicine Houston Texas USA

2. Research and Development InformAI Houston Texas

3. Department of Surgery Division of Abdominal Transplantation Baylor College of Medicine Houston Texas USA

4. Department of Cardiovascular Surgery Houston Methodist Hospital Houston Texas USA

5. Department of Bioengineering Rice University Houston Texas USA

6. Department of Biomedical Engineering University of Houston Texas USA

7. Department of Medicine Swansea University Medical School Swansea Wales UK

Abstract

AbstractBackgroundIncreasing access and better allocation of organs in the field of transplantation is a critical problem in clinical care. Limitations exist in accurately predicting allograft discard. Potential exists for machine learning to provide a balanced assessment of the potential for an organ to be used in a transplantation procedure.MethodsWe accessed and utilized all available deceased donor United Network for Organ Sharing data from 1987 to 2020. With these data, we evaluated the performance of multiple machine learning methods for predicting organ use. The machine learning methods trialed included XGBoost, random forest, Naïve Bayes (NB), logistic regression, and fully connected feedforward neural network classifier methods. The top two methods, XGBoost and random forest, were fully developed using 10‐fold cross‐validation and Bayesian optimization of hyperparameters.ResultsThe top performing model at predicting liver organ use was an XGBoost model which achieved an AUC‐ROC of .925, an AUC‐PR of .868, and an F1 statistic of .756. The top performing model for predicting kidney organ use classification was an XGBoost model which achieved an AUC‐ROC of .952, and AUC‐PR of .883, and an F1 statistic of .786.ConclusionsThe 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.

Publisher

Wiley

Subject

Transplantation

Reference59 articles.

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4. Organ Procurement and Transplantation Network. Data | OPTN.Organ procurement and transplantation network. Published 2022. Accessed February 26 2022.https://optn.transplant.hrsa.gov/data/

5. Organ Donation Statistics. Accessed February 28 2022.organdonor.gov.https://www.organdonor.gov/learn/organ‐donation‐statistics

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