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Multisite Technical and Clinical Performance Evaluation of Quantitative Imaging Biomarkers from 3D FDG PET Segmentations of Head and Neck Cancer Images

Authors :
Binsheng Zhao
Milan Grkovski
Charles M. Laymon
John Sunderland
Ghassan Hamarneh
Dmitry B. Goldgof
Brian J. Smith
Sadek Nehmeh
John P. Muzi
Reinhard Beichel
Payam Ahmadvand
Matthew J. Oborski
Mark Muzi
Ethan J. Ulrich
Christian Bauer
Robert J. Gillies
James M. Mountz
Mikalai M. Budzevich
Paul E. Kinahan
John M. Buatti
Source :
Tomography, Volume 6, Issue 2, Pages 65-76, Tomography; Volume 6; Issue 2; Pages: 65-76
Publication Year :
2020
Publisher :
MDPI AG, 2020.

Abstract

Quantitative imaging biomarkers (QIBs) provide medical image–derived intensity, texture, shape, and size features that may help characterize cancerous tumors and predict clinical outcomes. Successful clinical translation of QIBs depends on the robustness of their measurements. Biomarkers derived from positron emission tomography images are prone to measurement errors owing to differences in image processing factors such as the tumor segmentation method used to define volumes of interest over which to calculate QIBs. We illustrate a new Bayesian statistical approach to characterize the robustness of QIBs to different processing factors. Study data consist of 22 QIBs measured on 47 head and neck tumors in 10 positron emission tomography/computed tomography scans segmented manually and with semiautomated methods used by 7 institutional members of the NCI Quantitative Imaging Network. QIB performance is estimated and compared across institutions with respect to measurement errors and power to recover statistical associations with clinical outcomes. Analysis findings summarize the performance impact of different segmentation methods used by Quantitative Imaging Network members. Robustness of some advanced biomarkers was found to be similar to conventional markers, such as maximum standardized uptake value. Such similarities support current pursuits to better characterize disease and predict outcomes by developing QIBs that use more imaging information and are robust to different processing factors. Nevertheless, to ensure reproducibility of QIB measurements and measures of association with clinical outcomes, errors owing to segmentation methods need to be reduced.

Details

ISSN :
2379139X
Volume :
6
Database :
OpenAIRE
Journal :
Tomography
Accession number :
edsair.doi.dedup.....43d56294fb1617fd0460a76519fcabd6