Dose coverage calculation using a statistical shape model-applied to cervical cancer radiotherapy

David Tilly, Agustinus J. A. J. van de Schoot, Erik Grusell, Arjan Bel, Anders Ahnesjö

Research output: Contribution to journalArticleAcademicpeer-review

12 Citations (Scopus)

Abstract

A comprehensive methodology for treatment simulation and evaluation of dose coverage probabilities is presented where a population based statistical shape model (SSM) provide samples of fraction specific patient geometry deformations. The learning data consists of vector fields from deformable image registration of repeated imaging giving intra-patient deformations which are mapped to an average patient serving as a common frame of reference. The SSM is created by extracting the most dominating eigenmodes through principal component analysis of the deformations from all patients. The sampling of a deformation is thus reduced to sampling weights for enough of the most dominating eigenmodes that describe the deformations. For the cervical cancer patient datasets in this work, we found seven eigenmodes to be sufficient to capture 90% of the variance in the deformations of the, and only three eigenmodes for stability in the simulated dose coverage probabilities. The normality assumption of the eigenmode weights was tested and found relevant for the 20 most dominating eigenmodes except for the first. Individualization of the SSM is demonstrated to be improved using two deformation samples from a new patient. The probabilistic evaluation provided additional information about the trade-offs compared to the conventional single dataset treatment planning
Original languageEnglish
Pages (from-to)4140-4159
JournalPhysics in medicine and biology
Volume62
Issue number10
Early online date2017
DOIs
Publication statusPublished - 2017

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