? This proposal addresses a fundamental methodological problem in diagnostic radiology research: how to evaluate the diagnostic performance of imaging modalities. Receiver operating characteristic (ROC) analysis is an accepted procedure for measuring how well imaging modalities allow physicians to detect disease. Traditional statistical comparison of different imaging modalities only analyzes ROC measures of a single radiologist from each modality. Dorfman, Berbaum and Metz (1992) developed a statistical methodology that overcomes this limitation and provides a comprehensive framework within which to analyze ROC studies with multiple readers, taking into account both reader-sample and case-sample variation. The Dorfman-Berbaum-Metz (DBM) methodology allows greater statistical power to detect clinically meaningful differences in diagnostic performance than single-radiologist approaches. Its validity has been tested extensively using computer simulations and has wide acceptance in diagnostic radiology experiments. Because DBM methodology relies on ROC analysis for its dependent measures, the robustness and accuracy of the ROC analysis affect the statistical precision and power of DBM methodology. DBM analysis of some experiments fails because of flaws in traditional ROC measures. Since the DBM methodology was developed, there have been fundamental advances in ROC analysis, which provide more interpretable measures. DBM could be more robust and statistically powerful if it took advantage of these advances. To accomplish this we propose building an integrated, public-domain software resource to bring together methodological advantages previously only available in separate programs.
The specific aims are: (1) develop a new modular DBM software architecture that is freely accessible by other software and allows greater flexibility in ROC analysis; (2) develop """"""""proper"""""""" ROC analysis modules that provide more interpretable ROC results and study the resulting DBM statistical power; (3) develop modules for types of ROC analysis that take into account location of reported disease and multiple reports of disease, features that have been shown to improve statistical power; (4) develop modules and procedures to merge DBM methodology with standard statistical software to answer more complex experimental questions; and (5) use DBM re-analysis of published data to provide estimates of minimum reader and case sample size combinations needed to detect various performance differences with power for various imaging areas. Completing these aims will enhance the effectiveness of the primary method used to assess the diagnostic performance of new imaging systems. This will lead to better radiology research, which will raise the quality and lower the cost of health care. ? ?

Agency
National Institute of Health (NIH)
Institute
National Institute of Biomedical Imaging and Bioengineering (NIBIB)
Type
Research Project (R01)
Project #
5R01EB000863-04
Application #
7008561
Study Section
Diagnostic Imaging Study Section (DMG)
Program Officer
Haller, John W
Project Start
2003-04-01
Project End
2007-03-31
Budget Start
2006-02-01
Budget End
2007-03-31
Support Year
4
Fiscal Year
2006
Total Cost
$457,824
Indirect Cost
Name
University of Iowa
Department
Radiation-Diagnostic/Oncology
Type
Schools of Medicine
DUNS #
062761671
City
Iowa City
State
IA
Country
United States
Zip Code
52242
Hillis, Stephen L (2016) Equivalence of binormal likelihood-ratio and bi-chi-squared ROC curve models. Stat Med 35:2031-57
Berbaum, Kevin S; Krupinski, Elizabeth A; Schartz, Kevin M et al. (2015) Satisfaction of Search in Chest Radiography 2015. Acad Radiol 22:1457-65
Hillis, Stephen L (2014) A marginal-mean ANOVA approach for analyzing multireader multicase radiological imaging data. Stat Med 33:330-60
Schartz, K M; Berbaum, K S; Madsen, M T et al. (2013) Multiple diagnostic task performance in CT examination of the chest. Br J Radiol 86:18244135
Zanca, Federica; Hillis, Stephen L; Claus, Filip et al. (2012) Correlation of free-response and receiver-operating-characteristic area-under-the-curve estimates: results from independently conducted FROC?ROC studies in mammography. Med Phys 39:5917-29
Hillis, Stephen L; Metz, Charles E (2012) An analytic expression for the binormal partial area under the ROC curve. Acad Radiol 19:1491-8
Edwards, Darrin C; Metz, Charles E (2012) The three-class ideal observer for univariate normal data: Decision variable and ROC surface properties. J Math Psychol 56:256-273
Berbaum, Kevin S; Schartz, Kevin M; Caldwell, Robert T et al. (2012) Satisfaction of search for subtle skeletal fractures may not be induced by more serious skeletal injury. J Am Coll Radiol 9:344-51
Hillis, Stephen L (2012) Simulation of unequal-variance binormal multireader ROC decision data: an extension of the Roe and Metz simulation model. Acad Radiol 19:1518-28
Obuchowski, Nancy A; Gallas, Brandon D; Hillis, Stephen L (2012) Multi-reader ROC studies with split-plot designs: a comparison of statistical methods. Acad Radiol 19:1508-17

Showing the most recent 10 out of 26 publications