School of Business
Document Type
Article
Abstract
Heart transplantation is a life-saving procedure for patients with end-stage heart failure. The United Network for Organ Sharing (UNOS), which administers the US organ allocation system, substantially expanded the number of clinical and demographic variables collected in its database in 2004. This study examines whether these newly added variables improve the ability to predict survival outcomes for patients on the heart transplant waiting list. An information-gain-based feature selection approach, supported by an extensive review of prior studies, was combined with survival analysis and regularized regression to identify the most influential predictors. Using the selected variables, several classification models, including tree-augmented Naïve Bayes, logistic regression, support vector machines, decision trees, and random forests, were developed. Class imbalance was addressed through random under-sampling and cost-sensitive modeling. The results show that prediction accuracy for short-term, medium-term, and long-term survival (one month, one year, and five years) does not improve substantially when the new variables are included. The findings suggest that the expanded data collection introduced in 2004 adds limited incremental value for predicting survival among patients awaiting heart transplantation.
Publication Title
Decision Analytics Journal
Publication Date
3-2026
Volume
18
ISSN
2772-6622
DOI
10.1016/j.dajour.2026.100690
Keywords
clinical analytics, data mining, feature selection, heart transplant, predictive modeling, survival prediction
Repository Citation
Dag, Ali; Ahady Dolatsara, Hamidreza; Asilkalkan, Abdullah; Ekong, Joseph; Ciftci, Kamil; Kucuk, Ugur; and Cosgun, Ozlem, "A data-guided analytical framework for assessing the value of additional variables in heart transplant decision making" (2026). School of Business. 244.
https://commons.clarku.edu/faculty_school_of_management/244
Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.
Copyright Conditions
Dag, A., Dolatsara, H. A., Asilkalkan, A., Ekong, J., Ciftci, K., Kucuk, U., & Cosgun, O. (2026). A data-guided analytical framework for assessing the value of additional variables in heart transplant decision making. Decision Analytics Journal, 100690. https://doi-org/10.1016/j.dajour.2026.100690
