Quantifying day-to-day variations in 4DCBCT-based PCA motion models Journal Article


Authors: Dhou, S.; Lewis, J.; Cai, W.; Ionascu, D.; Williams, C.
Article Title: Quantifying day-to-day variations in 4DCBCT-based PCA motion models
Abstract: The aim of this paper is to quantify the day-to-day variations of motion models derived from pre-treatment 4-dimensional cone beam CT (4DCBCT) fractions for lung cancer stereotactic body radiotherapy (SBRT) patients. Motion models are built by (1) applying deformable image registration (DIR) on each 4DCBCT image with respect to a reference image from that day, resulting in a set of displacement vector fields (DVFs), and (2) applying principal component analysis (PCA) on the DVFs to obtain principal components representing a motion model. Variations were quantified by comparing the PCA eigenvectors of the motion model built from the first day of treatment to the corresponding eigenvectors of the other motion models built from each successive day of treatment. Three metrics were used to quantify the variations: root mean squared (RMS) difference in the vectors, directional similarity, and an introduced metric called the Euclidean Model Norm (EMN). EMN quantifies the degree to which a motion model derived from the first fraction can represent the motion models of subsequent fractions. Twenty-one 4DCBCT scans from five SBRT patient treatments were used in this retrospective study. Experimental results demonstrated that the first two eigenvectors of motion models across all fractions have smaller RMS (0.00017), larger directional similarity (0.528), and larger EMN (0.678) than the last three eigenvectors (RMS: 0.00025, directional similarity: 0.041, and EMN: 0.212). The study concluded that, while the motion model eigenvectors varied from fraction to fraction, the first few eigenvectors were shown to be more stable across treatment fractions than others. This supports the notion that a pre-treatment motion model built from the first few PCA eigenvectors may remain valid throughout a treatment course. Future work is necessary to quantify how day-to-day variations in these models will affect motion reconstruction accuracy for specific clinical tasks. © 2020 IOP Publishing Ltd.
Keywords: controlled study; cancer radiotherapy; lung cancer; retrospective study; stereotactic body radiation therapy; radiation dose distribution; image registration; cone beam computed tomography; gross tumor volume; surgical margin; principal component analysis; organ motion; anatomical concepts; dimensionality reduction; four dimensional computed tomography; human; article; stereotactic body radiation therapy (sbrt); reconstruction algorithm; four-dimensional cone beam ct (4dcbct); pca motion model; inter-fraction variations
Journal Title: Biomedical Physics and Engineering Express
Volume: 6
Issue: 3
ISSN: 2057-1976
Publisher: IOP Publishing Ltd  
Date Published: 2020-05-01
Start Page: 035020
Language: English
DOI: 10.1088/2057-1976/ab817e
PROVIDER: scopus
PUBMED: 33438665
PMCID: PMC11293621
DOI/URL:
Notes: Article -- Export Date: 1 July 2020 -- Source: Scopus
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  1. Weixing Cai
    32 Cai