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Survival analysis for pediatric heart transplant patients using a novel machine learning algorithm: A UNOS analysis.
Ashfaq, Awais; Gray, Geoffrey M; Carapelluci, Jennifer; Amankwah, Ernest K; Rehman, Mohamed; Puchalski, Michael; Smith, Andrew; Quintessenza, James A; Laks, Jessica; Ahumada, Luis M; Asante-Korang, Alfred.
Affiliation
  • Ashfaq A; From the Cardiovascular Surgery, Heart Institute, Johns Hopkins All Children's Hospital, St. Petersburg, Florida. Electronic address: aashfaq1@jhmi.edu.
  • Gray GM; Center for Pediatric Data Science and Analytic Methodology, Johns Hopkins All Children's Hospital, St. Petersburg, Florida.
  • Carapelluci J; Heart Transplantation, Cardiomyopathy and Heart Failure, Heart Institute, Johns Hopkins All Children's Hospital, St. Petersburg, Florida.
  • Amankwah EK; Epidemiology and Biostatistics, Johns Hopkins All Children's Hospital, St. Petersburg, Florida.
  • Rehman M; From the Cardiovascular Surgery, Heart Institute, Johns Hopkins All Children's Hospital, St. Petersburg, Florida; Department of Anesthesia and Pain Medicine, Johns Hopkins All Children's Hospital, St. Petersburg, Florida.
  • Puchalski M; Division of Cardiology, Heart Institute, Johns Hopkins All Children's Hospital, St. Petersburg, Florida.
  • Smith A; and the Division of Cardiac Critical Care, Heart Institute, Johns Hopkins All Children's Hospital, St. Petersburg, Florida.
  • Quintessenza JA; From the Cardiovascular Surgery, Heart Institute, Johns Hopkins All Children's Hospital, St. Petersburg, Florida.
  • Laks J; Heart Transplantation, Cardiomyopathy and Heart Failure, Heart Institute, Johns Hopkins All Children's Hospital, St. Petersburg, Florida.
  • Ahumada LM; Center for Pediatric Data Science and Analytic Methodology, Johns Hopkins All Children's Hospital, St. Petersburg, Florida.
  • Asante-Korang A; Heart Transplantation, Cardiomyopathy and Heart Failure, Heart Institute, Johns Hopkins All Children's Hospital, St. Petersburg, Florida.
J Heart Lung Transplant ; 42(10): 1341-1348, 2023 10.
Article in En | MEDLINE | ID: mdl-37327979
ABSTRACT

BACKGROUND:

Impact of pretransplantation risk factors on mortality in the first year after heart transplantation remains largely unknown. Using machine learning algorithms, we selected clinically relevant identifiers that could predict 1-year mortality after pediatric heart transplantation.

METHODS:

Data were obtained from the United Network for Organ Sharing Database for years 2010-2020 for patients 0-17 years receiving their first heart transplant (N = 4150). Features were selected using subject experts and literature review. Scikit-Learn, Scikit-Survival, and Tensorflow were used. A traintest split of 7030 was used. N-repeated k-fold validation was performed (N = 5, k = 5). Seven models were tested, Hyperparameter tuning performed using Bayesian optimization and the concordance index (C-index) was used for model assessment.

RESULTS:

A C-index above 0.6 for test data was considered acceptable for survival analysis models. C-indices obtained were 0.60 (Cox proportional hazards), 0.61 (Cox with elastic net), 0.64 (gradient boosting), 0.64 (support vector machine), 0.68 (random forest), 0.66 (component gradient boosting), and 0.54 (survival trees). Machine learning models show an improvement over the traditional Cox proportional hazards model, with random forest performing the best on the test set. Analysis of the feature importance for the gradient boosted model found that the top 5 features were the most recent serum total bilirubin, the travel distance from the transplant center, the patient body mass index, the deceased donor terminal Serum glutamic pyruvic transaminase/Alanine transaminase (SGPT/ALT), and the donor PCO2.

CONCLUSIONS:

Combination of machine learning and expert-based methodology of selecting predictors of survival for pediatric heart transplantation provides a reasonable prediction of 1- and 3-year survival outcomes. SHapley Additive exPlanations can be an effective tool for modeling and visualizing nonlinear interactions.
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Full text: 1 Database: MEDLINE Main subject: Heart Transplantation Type of study: Prognostic_studies / Risk_factors_studies Limits: Child / Humans Language: En Year: 2023 Type: Article

Full text: 1 Database: MEDLINE Main subject: Heart Transplantation Type of study: Prognostic_studies / Risk_factors_studies Limits: Child / Humans Language: En Year: 2023 Type: Article