Please don't move: Evaluating motion artifact from peripheral quantitative computed tomography scans using textural features

Rantalainen, Timo, Chivers, Paola, Beck, Belinda R., Robertson, Sam, , Nimphius, Sophia, Weeks, Benjamin K., McIntyre, Fleur, Hands, Beth, & Siafarikas, Aris (2018) Please don't move: Evaluating motion artifact from peripheral quantitative computed tomography scans using textural features. Journal of Clinical Densitometry, 21(2), pp. 260-268.

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Description

Most imaging methods, including peripheral quantitative computed tomography (pQCT), are susceptible to motion artifacts particularly in fidgety pediatric populations. Methods currently used to address motion artifact include manual screening (visual inspection) and objective assessments of the scans. However, previously reported objective methods either cannot be applied on the reconstructed image or have not been tested for distal bone sites. Therefore, the purpose of the present study was to develop and validate motion artifact classifiers to quantify motion artifact in pQCT scans. Whether textural features could provide adequate motion artifact classification performance in 2 adolescent datasets with pQCT scans from tibial and radial diaphyses and epiphyses was tested. The first dataset was split into training (66% of sample) and validation (33% of sample) datasets. Visual classification was used as the ground truth. Moderate to substantial classification performance (J48 classifier, kappa coefficients from 0.57 to 0.80) was observed in the validation dataset with the novel texture-based classifier. In applying the same classifier to the second cross-sectional dataset, a slight-to-fair (κ = 0.01–0.39) classification performance was observed. Overall, this novel textural analysis-based classifier provided a moderate-to-substantial classification of motion artifact when the classifier was specifically trained for the measurement device and population. Classification based on textural features may be used to prescreen obviously acceptable and unacceptable scans, with a subsequent human-operated visual classification of any remaining scans.

Impact and interest:

10 citations in Scopus
8 citations in Web of Science®
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ID Code: 204609
Item Type: Contribution to Journal (Journal Article)
Refereed: Yes
ORCID iD:
Hart, Nicolas H.orcid.org/0000-0003-2794-0193
Measurements or Duration: 9 pages
Keywords: Bone QCT, machine learning, morphology, precision, repeatability
DOI: 10.1016/j.jocd.2017.07.002
ISSN: 1094-6950
Pure ID: 68254336
Funding Information: This project was supported by the Australian Government's Collaborative Research Networks (CRN) program and the WA Department of Health FutureHealth WA First Year Initiatives—Mentoring Grant 2016 . The AMPitup program was in part supported by a generous grant of the Princess Margaret Hospital Foundation . We are grateful to the AMPitup adolescents and their families who took part in this study and Carlos Bervenotti and Tanya Blee from The University of Notre Dame Fremantle. Thanks extend to the staff of the Department of Diagnostic Imaging at Princess Margaret Hospital for their expertise and support of the project, in particular, Brendan Beeson, Drew Williams, and Fiona Bettenay. Appendix
Copyright Owner: 2017 The International Society for Clinical Densitometry.
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Deposited On: 18 Sep 2020 00:58
Last Modified: 30 Mar 2024 17:48