Robust and probabilistic optimization of dose schedules in radiotherapy
Hamidreza Badri, Yoichi Watanabe, Kevin Leder

TL;DR
This paper develops robust and probabilistic optimization methods for radiotherapy dose scheduling that account for patient variability, aiming to improve treatment safety and effectiveness under uncertainty.
Contribution
It introduces two novel approaches—robust and probabilistic—to incorporate inter-patient variability into radiation schedule optimization.
Findings
Optimal schedules with uncertainty considerations often recommend smaller total doses.
Probabilistic models satisfy constraints with specified confidence levels.
Robust solutions tend to have fewer treatment sessions with comparable or reduced doses.
Abstract
We consider the effects of parameter uncertainty on the optimal radiation schedule in the context of the linear-quadratic model. Our interest arises from the observation that if inter-patient variations in OAR and tumor sensitivities to radiation or sparing factor of the OAR are not accounted for during radiation scheduling, the performance of the therapy may be strongly degraded or the OAR may receive a substantially larger dose than the maximum threshold. This paper proposes two radiation scheduling concepts to incorporate inter-patient variability into the scheduling optimization problem. The first approach is a robust formulation that formulates the problem as a conservative model that optimizes the worst case dose scheduling that may occur. The second method is a probabilistic approach, where the model parameters are given by a set of random variables. This formulation insures that…
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