Fully Automated Noncoplanar Radiation Therapy Treatment Planning
Charles Huang, Yong Yang, and Lei Xing

TL;DR
This paper introduces NC-POPS, an automated algorithm for noncoplanar radiation therapy planning that improves organ sparing and plan quality while reducing planning time.
Contribution
It extends the POPS algorithm to noncoplanar settings, enabling fully automated, high-quality treatment plans for IMRT and VMAT.
Findings
NC-POPS achieves better organ-at-risk sparing.
It provides comparable or improved dose conformity.
It maintains similar dose homogeneity.
Abstract
Noncoplanar radiation therapy treatment planning has the potential to improve dosimetric quality as compared to traditional coplanar techniques. Likewise, automated treatment planning algorithms can reduce a planner's active treatment planning time and remove inter-planner variability. To address the limitations of traditional treatment planning, we have been developing a suite of algorithms called station parameter optimized radiation therapy (SPORT). Within the SPORT suite of algorithms, we propose a method called NC-POPS to produce noncoplanar (NC) plans using the fully automated Pareto Optimal Projection Search (POPS) algorithm. Our NC-POPS algorithm extends the original POPS algorithm to the noncoplanar setting with potential applications to both IMRT and VMAT. The proposed algorithm consists of two main parts: 1) noncoplanar beam angle optimization (BAO) and 2) fully automated…
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