Predicting graft failure in pediatric liver transplantation based on early biomarkers using machine learning models.
Seungho JungKyemyung ParkKyong IhnSeon Ju KimMyoung Soo KimDongwoo ChaeBon Nyeo KooPublished in: Scientific reports (2022)
The early detection of graft failure in pediatric liver transplantation is crucial for appropriate intervention. Graft failure is associated with numerous perioperative risk factors. This study aimed to develop an individualized predictive model for 90-days graft failure in pediatric liver transplantation using machine learning methods. We conducted a single-center retrospective cohort study. A total of 87 liver transplantation cases performed in patients aged < 12 years at the Severance Hospital between January 2010 and September 2020 were included as data samples. Preoperative conditions of recipients and donors, intraoperative care, postoperative serial laboratory parameters, and events observed within seven days of surgery were collected as features. A least absolute shrinkage and selection operator (LASSO) -based method was used for feature selection to overcome the high dimensionality and collinearity of variables. Among 146 features, four variables were selected as the resultant features, namely, preoperative hepatic encephalopathy, sodium level at the end of surgery, hepatic artery thrombosis, and total bilirubin level on postoperative day 7. These features were selected from different times and represent distinct clinical aspects. The model with logistic regression demonstrated the best prediction performance among various machine learning methods tested (area under the receiver operating characteristic curve (AUROC) = 0.898 and area under the precision-recall curve (AUPR) = 0.882). The risk scoring system developed based on the logistic regression model showed an AUROC of 0.910 and an AUPR of 0.830. Together, the prediction of graft failure in pediatric liver transplantation using the proposed machine learning model exhibited superior discrimination power and, therefore, can provide valuable information to clinicians for their decision making during the postoperative management of the patients.
Keyphrases
- patients undergoing
- machine learning
- end stage renal disease
- risk factors
- minimally invasive
- ejection fraction
- newly diagnosed
- chronic kidney disease
- healthcare
- palliative care
- decision making
- prognostic factors
- big data
- coronary artery bypass
- emergency department
- patient reported outcomes
- artificial intelligence
- coronary artery disease
- deep learning
- electronic health record
- cardiac surgery
- adverse drug