A preliminary study on a multi-resolution-level inverse planning algorithm for Gamma Knife radiosurgery
Zhen Tian, Xiaofeng Yang, Matt Giles, Tonghe Wang, Hao Gao, Elizabeth, Butker, Tian Liu, Shannon Kahn

TL;DR
This study introduces a multi-resolution inverse planning algorithm for Gamma Knife radiosurgery that optimizes isocenter positions, beam shapes, and durations simultaneously, improving plan quality and efficiency over manual and existing automated methods.
Contribution
The paper proposes a novel multi-resolution-level strategy for simultaneous optimization in Gamma Knife planning, addressing large search space challenges and outperforming existing algorithms.
Findings
Improved gradient index from 3.1 to 2.9
Reduced maximum brainstem dose from 8.0Gy to 5.6Gy
Decreased beam-on time from 103.8 mins to 87.4 mins
Abstract
Manual forward planning for GK radiosurgery is complicated and time-consuming, particularly for cases with large or irregularly shaped targets. Inverse planning eases GK planning by solving an optimization problem. However, due to the vast search space, most inverse planning algorithms have to decouple the planning process to isocenter preselection and sector duration optimization. This sequential scheme does not necessarily lead to optimal isocenter locations and hence optimal plans. In this study, we attempt to optimize the isocenter positions, beam shapes and durations simultaneously by proposing a multi-resolution-level (MRL) strategy to handle the large-scale GK optimization problem. In our approach, several rounds of optimizations were performed with a progressively increased spatial resolution for isocenter candidate selection. The isocenters selected from last round and their…
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