A new optimization method using a compressed sensing inspired solver for real-time LDR-brachytherapy treatment planning.

TitleA new optimization method using a compressed sensing inspired solver for real-time LDR-brachytherapy treatment planning.
Publication TypeJournal Article
Year of Publication2015
AuthorsGuthier, C, Aschenbrenner, KP, Buergy, D, Ehmann, M, Wenz, F, Hesser, JW
JournalPhys Med Biol
Volume60
Issue6
Pagination2179-94
Date Published2015 Mar 21
ISSN1361-6560
Abstract

This work discusses a novel strategy for inverse planning in low dose rate brachytherapy. It applies the idea of compressed sensing to the problem of inverse treatment planning and a new solver for this formulation is developed. An inverse planning algorithm was developed incorporating brachytherapy dose calculation methods as recommended by AAPM TG-43. For optimization of the functional a new variant of a matching pursuit type solver is presented. The results are compared with current state-of-the-art inverse treatment planning algorithms by means of real prostate cancer patient data. The novel strategy outperforms the best state-of-the-art methods in speed, while achieving comparable quality. It is able to find solutions with comparable values for the objective function and it achieves these results within a few microseconds, being up to 542 times faster than competing state-of-the-art strategies, allowing real-time treatment planning. The sparse solution of inverse brachytherapy planning achieved with methods from compressed sensing is a new paradigm for optimization in medical physics. Through the sparsity of required needles and seeds identified by this method, the cost of intervention may be reduced.

DOI10.1088/0031-9155/60/6/2179
Alternate JournalPhys Med Biol
Citation Key360
PubMed ID25683684