A fast and robust constraint-based online re-optimization approach for automated online adaptive intensity modulated proton therapy in head and neck cancer

Journal Article (2024)
Author(s)

Michelle Oud (HollandPTC, Erasmus MC)

Sebastiaan Breedveld (Erasmus MC)

Jesús Rojo-Santiago (HollandPTC, Erasmus MC)

Marta Krystyna Giżyńska (HollandPTC)

Michiel Kroesen (Erasmus MC)

S.J.M. Habraken (HollandPTC, Erasmus MC)

Z. Perko (TU Delft - RST/Reactor Physics and Nuclear Materials)

Ben Heijmen (Erasmus MC)

M.S. Hoogeman (TU Delft - RST/Medical Physics & Technology, HollandPTC, Erasmus MC)

Research Group
RST/Reactor Physics and Nuclear Materials
DOI related publication
https://doi.org/10.1088/1361-6560/ad2a98
More Info
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Publication Year
2024
Language
English
Research Group
RST/Reactor Physics and Nuclear Materials
Issue number
7
Volume number
69
Article number
075007
Downloads counter
398
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Abstract

Objective. In head-and-neck cancer intensity modulated proton therapy, adaptive radiotherapy is currently restricted to offline re-planning, mitigating the effect of slow changes in patient anatomies. Daily online adaptations can potentially improve dosimetry. Here, a new, fully automated online re-optimization strategy is presented. In a retrospective study, this online re-optimization approach was compared to our trigger-based offline re-planning (offline
TB re-planning) schedule, including extensive robustness analyses. Approach. The online re-optimization method employs automated multi-criterial re-optimization, using robust optimization with 1 mm setup-robustness settings (in contrast to 3 mm for offline
TB re-planning). Hard planning constraints and spot addition are used to enforce adequate target coverage, avoid prohibitively large maximum doses and minimize organ-at-risk doses. For 67 repeat-CTs from 15 patients, fraction doses of the two strategies were compared for the CTVs and organs-at-risk. Per repeat-CT, 10.000 fractions with different setup and range robustness settings were simulated using polynomial chaos expansion for fast and accurate dose calculations. Main results. For 14/67 repeat-CTs, offline
TB re-planning resulted in <50% probability of D
98% ≥ 95% of the prescribed dose (D
pres) in one or both CTVs, which never happened with online re-optimization. With offline
TB re-planning, eight repeat-CTs had zero probability of obtaining D
98% ≥ 95%D
pres for CTV
7000, while the minimum probability with online re-optimization was 81%. Risks of xerostomia and dysphagia grade ≥ II were reduced by 3.5 ± 1.7 and 3.9 ± 2.8 percentage point [mean ± SD] (p < 10
−5 for both). In online re-optimization, adjustment of spot configuration followed by spot-intensity re-optimization took 3.4 min on average. Significance. The fast online re-optimization strategy always prevented substantial losses of target coverage caused by day-to-day anatomical variations, as opposed to the clinical trigger-based offline re-planning schedule. On top of this, online re-optimization could be performed with smaller setup robustness settings, contributing to improved organs-at-risk sparing.