TY - JOUR
T1 - A Framework for Evaluating the Technical Performance of Multiparameter Quantitative Imaging Biomarkers (mp-QIBs)
AU - Obuchowski, Nancy A.
AU - Huang, Erich
AU - deSouza, Nandita M.
AU - Raunig, David
AU - Delfino, Jana
AU - Buckler, Andrew
AU - Hatt, Charles
AU - Wang, Xiaofeng
AU - Moskowitz, Chaya
AU - Guimaraes, Alexander
AU - Giger, Maryellen
AU - Hall, Timothy J.
AU - Kinahan, Paul
AU - Pennello, Gene
N1 - Publisher Copyright:
© 2022 The Association of University Radiologists
PY - 2023/2
Y1 - 2023/2
N2 - Multiparameter quantitative imaging incorporates anatomical, functional, and/or behavioral biomarkers to characterize tissue, detect disease, identify phenotypes, define longitudinal change, or predict outcome. Multiple imaging parameters are sometimes considered separately but ideally are evaluated collectively. Often, they are transformed as Likert interpretations, ignoring the correlations of quantitative properties that may result in better reproducibility or outcome prediction. In this paper we present three use cases of multiparameter quantitative imaging: i) multidimensional descriptor, ii) phenotype classification, and iii) risk prediction. A fourth application based on data-driven markers from radiomics is also presented. We describe the technical performance characteristics and their metrics common to all use cases, and provide a structure for the development, estimation, and testing of multiparameter quantitative imaging. This paper serves as an overview for a series of individual articles on the four applications, providing the statistical framework for multiparameter imaging applications in medicine.
AB - Multiparameter quantitative imaging incorporates anatomical, functional, and/or behavioral biomarkers to characterize tissue, detect disease, identify phenotypes, define longitudinal change, or predict outcome. Multiple imaging parameters are sometimes considered separately but ideally are evaluated collectively. Often, they are transformed as Likert interpretations, ignoring the correlations of quantitative properties that may result in better reproducibility or outcome prediction. In this paper we present three use cases of multiparameter quantitative imaging: i) multidimensional descriptor, ii) phenotype classification, and iii) risk prediction. A fourth application based on data-driven markers from radiomics is also presented. We describe the technical performance characteristics and their metrics common to all use cases, and provide a structure for the development, estimation, and testing of multiparameter quantitative imaging. This paper serves as an overview for a series of individual articles on the four applications, providing the statistical framework for multiparameter imaging applications in medicine.
KW - QIBA
KW - multiparametric imaging
KW - quantitative imaging biomarkers
KW - radiomics
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U2 - 10.1016/j.acra.2022.08.031
DO - 10.1016/j.acra.2022.08.031
M3 - Review article
C2 - 36180328
AN - SCOPUS:85145955057
SN - 1076-6332
VL - 30
SP - 147
EP - 158
JO - Academic Radiology
JF - Academic Radiology
IS - 2
ER -