Title :
Exact Confidence Intervals for Channelized Hotelling Observer Performance in Image Quality Studies
Author :
Wunderlich, Adam ; Noo, Frederic ; Gallas, Brandon D. ; Heilbrun, Marta E.
Author_Institution :
Dept. of Radiol., Univ. of Utah, Salt Lake City, UT, USA
Abstract :
Task-based assessments of image quality constitute a rigorous, principled approach to the evaluation of imaging system performance. To conduct such assessments, it has been recognized that mathematical model observers are very useful, particularly for purposes of imaging system development and optimization. One type of model observer that has been widely applied in the medical imaging community is the channelized Hotelling observer (CHO), which is well-suited to known-location discrimination tasks. In the present work, we address the need for reliable confidence interval estimators of CHO performance. Specifically, we show that the bias associated with point estimates of CHO performance can be overcome by using confidence intervals proposed by Reiser for the Mahalanobis distance. In addition, we find that these intervals are well-defined with theoretically-exact coverage probabilities, which is a new result not proved by Reiser. The confidence intervals are tested with Monte Carlo simulation and demonstrated with two examples comparing X-ray CT reconstruction strategies. Moreover, commonly-used training/testing approaches are discussed and compared to the exact confidence intervals. MATLAB software implementing the estimators described in this work is publicly available at http://code.google.com/p/iqmodelo/.
Keywords :
Monte Carlo methods; computerised tomography; image reconstruction; mathematical analysis; mathematics computing; medical image processing; optimisation; probability; CHO performance; MATLAB software; Mahalanobis distance; Monte Carlo simulation; X-ray CT reconstruction strategies; channelized hotelling observer performance; commonly-used training-testing approaches; exact confidence intervals; image quality studies; imaging system development; imaging system performance; known-location discrimination tasks; mathematical model observers; medical imaging community; optimization; point estimates; reliable confidence interval estimators; task-based assessments; theoretically-exact coverage probabilities; Manganese; Mathematical model; Monte Carlo methods; Observers; Signal to noise ratio; Standards; Vectors; Image quality assessment; Mahalanobis distance; linear discriminant analysis (LDA); model observers; noncentral F-distribution; noncentrality parameter;
Journal_Title :
Medical Imaging, IEEE Transactions on
DOI :
10.1109/TMI.2014.2360496