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arxiv: 1402.1310 · v1 · pith:5HFCMJKUnew · submitted 2014-02-06 · 🧮 math.OC · physics.med-ph

Feasibility-Seeking and Superiorization Algorithms Applied to Inverse Treatment Planning in Radiation Therapy

classification 🧮 math.OC physics.med-ph
keywords constraintsfeasibility-seekinginverseplanningproblemalgorithmsconstrainedfunction
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We apply the recently proposed superiorization methodology (SM) to the inverse planning problem in radiation therapy. The inverse planning problem is represented here as a constrained minimization problem of the total variation (TV) of the intensity vector over a large system of linear two-sided inequalities. The SM can be viewed conceptually as lying between feasibility-seeking for the constraints and full-fledged constrained minimization of the objective function subject to these constraints. It is based on the discovery that many feasibility-seeking algorithms (of the projection methods variety) are perturbation-resilient, and can be proactively steered toward a feasible solution of the constraints with a reduced, thus superiorized, but not necessarily minimal, objective function value.

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