CBCT-DRRs superior to CT-DRRs for target-tracking applications for pancreatic SBRT.

Cone Beam CT DRRs Inter-fraction variation Markerless target-tracking Radiographs

Journal

Biomedical physics & engineering express
ISSN: 2057-1976
Titre abrégé: Biomed Phys Eng Express
Pays: England
ID NLM: 101675002

Informations de publication

Date de publication:
08 Apr 2024
Historique:
medline: 9 4 2024
pubmed: 9 4 2024
entrez: 8 4 2024
Statut: aheadofprint

Résumé

In current radiograph-based intra-fraction markerless target-tracking, digitally reconstructed radiographs (DRRs) from planning CTs (CT-DRRs) are often used to train deep learning models that extract information from the intra-fraction radiographs acquired during treatment. Traditional DRR algorithms were designed for patient alignment (i.e. bone matching) and may not replicate the radiographic image quality of intra-fraction radiographs at treatment. Hypothetically, generating DRRs from pre-treatment Cone-Beam CTs (CBCT-DRRs) with DRR algorithms incorporating physical modelling of on-board-imagers (OBIs) could improve the similarity between intra-fraction radiographs and DRRs by eliminating inter-fraction variation and reducing image-quality mismatches between radiographs and DRRs. In this study, we test the two hypotheses that intra-fraction radiographs are more similar to CBCT-DRRs than CT-DRRs, and that intra-fraction radiographs are more similar to DRRs from algorithms incorporating physical models of OBI components than DRRs from algorithms omitting these models.&#xD;&#xD;Main results: Intra-fraction radiographs were more similar to CBCT-DRRs than CT-DRRs for both metrics across all algorithms, with all p<0.007. Source-spectrum modelling improved radiograph-DRR similarity for both metrics, with all p<1E-6. OBI detector modelling and patient material modelling did not influence radiograph-DRR similarity for either metric.&#xD;&#xD;Significance: Generating DRRs from pre-treatment CBCT-DRRs is feasible, and incorporating CBCT-DRRs into markerless target-tracking methods may promote improved target-tracking accuracies. Incorporating source-spectrum modelling into a treatment planning system's DRR algorithms may reinforce the safe treatment of cancer patients by aiding in patient alignment.

Identifiants

pubmed: 38588646
doi: 10.1088/2057-1976/ad3bb9
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Informations de copyright

© 2024 IOP Publishing Ltd.

Auteurs

Levi Madden (L)

Northern Sydney Cancer Centre, Royal North Shore Hospital, Reserve Rd, St Leonards, New South Wales, 2065, AUSTRALIA.

Abdella Ahmed (A)

Northern Sydney Cancer Centre, Royal North Shore Hospital, Reserve Rd, St Leonards, New South Wales, 2065, AUSTRALIA.

Maegan Stewart (M)

Northern Sydney Cancer Centre, Royal North Shore Hospital, Reserve Rd, St Leonards, New South Wales, 2065, AUSTRALIA.

Danielle Chrystall (D)

School of Physics, The University of Sydney Faculty of Science, Physics Rd, Camperdown, New South Wales, 2050, AUSTRALIA.

Adam Mylonas (A)

ACRF Image X Institute, The University of Sydney, 1 Central Avenue, Eveleigh, New South Wales, 2006, AUSTRALIA.

Ryan Brown (R)

Royal North Shore Hospital Northern Sydney Cancer Centre, Reserve Rd, St Leonards, Sydney, New South Wales, 2065, AUSTRALIA.

Doan Trang Nguyen (DT)

ACRF Image X Institute, The University of Sydney, 1 Central Avenue, Eveleigh, New South Wales, 2006, AUSTRALIA.

Paul J Keall (PJ)

ACRF Image X Institute, The University of Sydney, 1 Central Avenue, Eveleigh, New South Wales, 2006, AUSTRALIA.

Jeremy Todd Booth (JT)

Northern Sydney Cancer Centre, Royal North Shore Hospital, Reserve Rd, St Leonards, New South Wales, 2065, AUSTRALIA.

Classifications MeSH