Predicting Long-Term Allograft Survival in Liver Transplant Recipients
Gao, Xiang, Cooper, Michael, Naghibzadeh, Maryam, Azhie, Amirhossein, Bhat, Mamatha, Krishnan, Rahul G.
–arXiv.org Artificial Intelligence
Liver allograft failure occurs in approximately 20% of liver transplant recipients within five years post-transplant, leading to mortality or the need for retransplantation. Providing an accurate and interpretable model for individualized risk estimation of graft failure is essential for improving post-transplant care. To this end, we introduce the Model for Allograft Survival (MAS), a simple linear risk score that outperforms other advanced survival models. Using longitudinal patient follow-up data from the United States (U.S.), we develop our models on 82,959 liver transplant recipients and conduct multi-site evaluations on 11 regions. Additionally, by testing on a separate non-U.S. cohort, we explore the out-of-distribution generalization performance of various models without additional fine-tuning, a crucial property for clinical deployment. We find that the most complex models are also the ones most vulnerable to distribution shifts despite achieving the best in-distribution performance. Our findings not only provide a strong risk score for predicting long-term graft failure but also suggest that the routine machine learning pipeline with only in-distribution held-out validation could create harmful consequences for patients at deployment.
arXiv.org Artificial Intelligence
Aug-10-2024
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- Research Report
- Experimental Study (1.00)
- New Finding (1.00)
- Research Report
- Industry:
- Health & Medicine
- Surgery > Transplant Surgery (0.85)
- Therapeutic Area > Hepatology (1.00)
- Health & Medicine
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