AI RESEARCH

Position: Machine Learning for Heart Transplant Allocation Policy Optimization Should Account for Incentives

arXiv CS.LG

ArXi:2602.04990v3 Announce Type: replace The allocation of scarce donor organs constitutes one of the most consequential algorithmic challenges in healthcare. While the field is rapidly transitioning from rigid, rule-based systems to machine learning and data-driven optimization, we argue that current approaches often overlook a fundamental barrier: incentives. In this position paper, we highlight that organ allocation is not merely an optimization problem, but rather a complex game involving organ procurement organizations, transplant centers, clinicians, patients, and regulators.