Towards Robust Adaptive Radiation Therapy Strategies
Michelle B\"ock, Anders Forsgren, Kjell Eriksson, Bj\"orn, H{\aa}rdemark

TL;DR
This paper introduces robust adaptive radiation therapy strategies using stochastic minimax optimization, enabling personalized treatment plans that adapt to measured errors for improved dose delivery and organ protection.
Contribution
It presents novel adaptive strategies that dynamically update treatment plans based on measured errors, enhancing robustness and personalization in radiation therapy.
Findings
Robust plans maintain quality under anticipated errors.
Adaptive strategies improve organ at risk (OAR) protection.
First strategy performs best with larger unpredictable errors.
Abstract
The authors propose robust adaptive strategies based on stochastic minimax optimization for a series of simulated treatments on a one-dimensional patient phantom. The plan applied during the first fractions should be able to handle anticipated systematic and random errors. At scheduled fractions, the impact of the measured errors on the delivered dose distribution is evaluated. For a patient receiving a dose that does not satisfy clinical goals, the plan is reoptimized based on these individually measured errors. The adapted plan is then applied during subsequent fractions until a new scheduled adaptation becomes necessary. In the first adaptive strategy, the measured systematic and random error scenarios and their assigned probabilities are updated to guide the robust reoptimization. In the second strategy, the grade of conservativeness is adapted in response to the measured dose…
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