TL;DR
This paper introduces MetaPlanner, a meta-optimization framework that automates radiation therapy treatment planning by optimizing hyperparameters to produce high-quality plans, reducing workload and maintaining or improving plan quality.
Contribution
The paper presents a novel meta-optimization approach using derivative-free search and a tiered meta-scoring function for fully automated radiation therapy planning.
Findings
MetaPlanner achieves comparable or better results than manual plans.
Applicable to both IMRT and VMAT planning.
Reduces treatment planning workload while maintaining quality.
Abstract
Objective: Radiation therapy treatment planning is a time-consuming process involving iterative adjustments of hyperparameters. To automate the treatment planning process, we propose a meta-optimization framework, called MetaPlanner (MP). Methods: Our MP algorithm automates planning by performing optimization of treatment planning hyperparameters. The algorithm uses a derivative-free method (i.e. parallel Nelder-Mead simplex search) to search for weight configurations that minimize a meta-scoring function. Meta-scoring is performed by constructing a tier list of the relevant considerations (e.g. dose homogeneity, conformity, spillage, and OAR sparing) to mimic the clinical decision-making process. Additionally, we have made our source code publicly available via github. Results: The proposed MP method is evaluated on two datasets (21 prostate cases and 6 head and neck cases) collected…
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