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A method for generating large datasets of organ geometries for radiotherapy treatment planning studies Cover

A method for generating large datasets of organ geometries for radiotherapy treatment planning studies

Open Access
|Nov 2014

Abstract

Background. With the rapidly increasing application of adaptive radiotherapy, large datasets of organ geometries based on the patient’s anatomy are desired to support clinical application or research work, such as image segmentation, re-planning, and organ deformation analysis. Sometimes only limited datasets are available in clinical practice. In this study, we propose a new method to generate large datasets of organ geometries to be utilized in adaptive radiotherapy.

Methods. Given a training dataset of organ shapes derived from daily cone-beam CT, we align them into a common coordinate frame and select one of the training surfaces as reference surface. A statistical shape model of organs was constructed, based on the establishment of point correspondence between surfaces and non-uniform rational B-spline (NURBS) representation. A principal component analysis is performed on the sampled surface points to capture the major variation modes of each organ.

Results. A set of principal components and their respective coefficients, which represent organ surface deformation, were obtained, and a statistical analysis of the coefficients was performed. New sets of statistically equivalent coefficients can be constructed and assigned to the principal components, resulting in a larger geometry dataset for the patient’s organs.

Conclusions. These generated organ geometries are realistic and statistically representative

DOI: https://doi.org/10.2478/raon-2014-0003 | Journal eISSN: 1581-3207 | Journal ISSN: 1318-2099
Language: English
Page range: 408 - 415
Submitted on: Jul 19, 2013
Accepted on: Oct 11, 2013
Published on: Nov 5, 2014
Published by: Association of Radiology and Oncology
In partnership with: Paradigm Publishing Services
Publication frequency: 4 issues per year

© 2014 Nan Hu, Laura Cerviño, Paul Segars, John Lewis, Jinlu Shan, Steve Jiang, Xiaolin Zheng, Ge Wang, published by Association of Radiology and Oncology
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 3.0 License.