CT- and MR-based image-based data mining are consistent in the brain
Name:
CT and MR based....pdf
Size:
3.457Mb
Format:
PDF
Description:
Found with Open Access Button
Authors
Wilson, L. J.Davey, Angela
Vasquez Osorio, Eliana
Faught, A. M.
Green, Andrew
Bulbeck, H.
Thomson, A.
Goddard, J.
McCabe, Martin G
Merchant, T. E.
van Herk, Marcel
Aznar, Mmrianne C
Affiliation
Division of Cancer Sciences, Faculty of Biology Medicine and Health, The University of Manchester, Manchester, UK; The Christie NHS Foundation Trust, Manchester, UK.Issue Date
2024
Metadata
Show full item recordAbstract
PURPOSE: Image-based data mining (IBDM) is a voxel-based analysis technique to investigate dose-response. Most often, IBDM uses radiotherapy planning CTs because of their broad accessibility, however, it was unknown whether CT provided sufficient soft tissue contrast for brain IBDM. This study evaluates whether MR-based IBDM improves upon CT-based IBDM for studies of children with brain tumours. METHODS: We compared IBDM pipelines using either CT- or MRI-based spatial normalisation in 128 children (ages 3.3-19.7 years) who received photon radiotherapy for primary brain tumours at a single institution. We quantified spatial-normalisation accuracy using contour comparison measures (centre-of-mass separation, average contour distance-to-agreement (DT(avg)), and Hausdorff distance) at multiple anatomic loci. We performed an end-to-end test of CT- and MRI-IBDM using modified clinical dose distributions and simulated effect labels to detect associations in pre-defined anatomic loci. Accuracy was assessed via sensitivity and specificity. RESULTS: Spatial normalisation accuracy was comparable for both modalities, with a significant but small improvement for MRI compared to CT in all structures except the brainstem. The median (range) difference between the DT(avg) for the two pipelines was 0.37 (0.00-2.91) mm. The end-to-end test revealed no significant difference in sensitivity of the IBDM-identified regions for the two pipelines. Specificity slightly improved for MR-IBDM at the 99% significance level. CONCLUSION: CT-based IBDM was comparable to MR-based IBDM, despite a small advantage in spatial normalisation accuracy with MRI. The use of CT-IBDM over MR-IBDM is useful for multi-institutional retrospective IBDM studies, where the availability of standardised MRI data can be limited.Citation
Wilson LJ, Davey A, Vasquez Osorio E, Faught AM, Green A, Bulbeck H, et al. CT- and MR-based image-based data mining are consistent in the brain. Physica medica : PM : an international journal devoted to the applications of physics to medicine and biology : official journal of the Italian Association of Biomedical Physics (AIFB). 2024 Sep;125:104503. PubMed PMID: 39197263. Epub 2024/08/31. eng.Journal
Physica MedicaDOI
10.1016/j.ejmp.2024.104503PubMed ID
39197263Additional Links
https://dx.doi.org/10.1016/j.ejmp.2024.104503Type
ArticleLanguage
enae974a485f413a2113503eed53cd6c53
10.1016/j.ejmp.2024.104503
Scopus Count
Collections
Related articles
- Image-based data mining applies to data collected from children.
- Authors: Wilson LJ, Bryce-Atkinson A, Green A, Li Y, Merchant TE, van Herk M, Vasquez Osorio E, Faught AM, Aznar MC
- Issue date: 2022 Jul
- MRI-based treatment planning with electron density information mapped from CT images: a preliminary study.
- Authors: Wang C, Chao M, Lee L, Xing L
- Issue date: 2008 Oct
- Tissue segmentation-based electron density mapping for MR-only radiotherapy treatment planning of brain using conventional T1-weighted MR images.
- Authors: Yu H, Oliver M, Leszczynski K, Lee Y, Karam I, Sahgal A
- Issue date: 2019 Aug
- Investigating the generalisation of an atlas-based synthetic-CT algorithm to another centre and MR scanner for prostate MR-only radiotherapy.
- Authors: Wyatt JJ, Dowling JA, Kelly CG, McKenna J, Johnstone E, Speight R, Henry A, Greer PB, McCallum HM
- Issue date: 2017 Nov 21
- Evaluation of the accuracy of deformable image registration on MRI with a physical phantom.
- Authors: Wu RY, Liu AY, Yang J, Williamson TD, Wisdom PG, Bronk L, Gao S, Grosshan DR, Fuller DC, Gunn GB, Ronald Zhu X, Frank SJ
- Issue date: 2020 Jan