Distributed and scalable optimization for robust proton treatment planning Journal Article


Authors: Fu, A.; Taasti, V. T.; Zarepisheh, M.
Article Title: Distributed and scalable optimization for robust proton treatment planning
Abstract: Background: The importance of robust proton treatment planning to mitigate the impact of uncertainty is well understood. However, its computational cost grows with the number of uncertainty scenarios, prolonging the treatment planning process. Purpose: We developed a fast and scalable distributed optimization platform that parallelizes the robust proton treatment plan computation over the uncertainty scenarios. Methods: We modeled the robust proton treatment planning problem as a weighted least-squares problem. To solve it, we employed an optimization technique called the alternating direction method of multipliers with Barzilai–Borwein step size (ADMM-BB). We reformulated the problem in such a way as to split the main problem into smaller subproblems, one for each proton therapy uncertainty scenario. The subproblems can be solved in parallel, allowing the computational load to be distributed across multiple processors (e.g., CPU threads/cores). We evaluated ADMM-BB on four head-and-neck proton therapy patients, each with 13 scenarios accounting for 3 mm setup and 3.5% range uncertainties. We then compared the performance of ADMM-BB with projected gradient descent (PGD) applied to the same problem. Results: For each patient, ADMM-BB generated a robust proton treatment plan that satisfied all clinical criteria with comparable or better dosimetric quality than the plan generated by PGD. However, ADMM-BB's total runtime averaged about 6 to 7 times faster. This speedup increased with the number of scenarios. Conclusions: ADMM-BB is a powerful distributed optimization method that leverages parallel processing platforms, such as multicore CPUs, GPUs, and cloud servers, to accelerate the computationally intensive work of robust proton treatment planning. This results in (1) a shorter treatment planning process and (2) the ability to consider more uncertainty scenarios, which improves plan quality. © 2022 American Association of Physicists in Medicine.
Keywords: adult; clinical article; case report; intensity modulated radiation therapy; treatment planning; radiotherapy dosage; radiotherapy, intensity-modulated; protons; neck; radiotherapy planning, computer-assisted; software; proton; optimization; treatment plans; uncertainty; proton therapy; procedures; humans; human; male; female; article; radiotherapy planning system; proton beams; least squares approximations; robust optimization; proton beam therapy; gradient methods; program processors; proton treatment planning; least square analysis; distributed optimization; planning process; proton treatment; sub-problems
Journal Title: Medical Physics
Volume: 50
Issue: 1
ISSN: 0094-2405
Publisher: American Association of Physicists in Medicine  
Date Published: 2023-01-01
Start Page: 633
End Page: 642
Language: English
DOI: 10.1002/mp.15897
PUBMED: 35907245
PROVIDER: scopus
PMCID: PMC10249339
DOI/URL:
Notes: The MSK Cancer Center Support Grant (P30 CA008748) is acknowledged in the PubMed record and PDF. Corresponding author is MSK author Anqi Fu -- Export Date: 1 March 2023 -- Source: Scopus
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  1. Anqi Fu
    5 Fu