DocumentCode :
1758391
Title :
Numerical Surrogates for Human Observers in Myocardial Motion Evaluation From SPECT Images
Author :
Marin, T. ; Kalayeh, M.M. ; Parages, Felipe M. ; Brankov, J.G.
Author_Institution :
Med. imaging Res. Center, Illinois Inst. of Technol., Chicago, IL, USA
Volume :
33
Issue :
1
fYear :
2014
fDate :
Jan. 2014
Firstpage :
38
Lastpage :
47
Abstract :
In medical imaging, the gold standard for image-quality assessment is a task-based approach in which one evaluates human observer performance for a given diagnostic task (e.g., detection of a myocardial perfusion or motion defect). To facilitate practical task-based image-quality assessment, model observers are needed as approximate surrogates for human observers. In cardiac-gated SPECT imaging, diagnosis relies on evaluation of the myocardial motion as well as perfusion. Model observers for the perfusion-defect detection task have been studied previously, but little effort has been devoted toward development of a model observer for cardiac-motion defect detection. In this work, we describe two model observers for predicting human observer performance in detection of cardiac-motion defects. Both proposed methods rely on motion features extracted using previously reported deformable mesh model for myocardium motion estimation. The first method is based on a Hotelling linear discriminant that is similar in concept to that used commonly for perfusion-defect detection. In the second method, based on relevance vector machines (RVM) for regression, we compute average human observer performance by first directly predicting individual human observer scores, and then using multi reader receiver operating characteristic analysis. Our results suggest that the proposed RVM model observer can predict human observer performance accurately, while the new Hotelling motion-defect detector is somewhat less effective.
Keywords :
cardiology; feature extraction; haemodynamics; medical disorders; medical image processing; motion estimation; muscle; physiological models; regression analysis; single photon emission computed tomography; support vector machines; Hotelling linear discriminant; Hotelling motion-defect detector; RVM model observer; SPECT images; average human observer performance; cardiac-gated SPECT imaging; cardiac-motion defect detection; deformable mesh model; diagnostic task; individual human observer scores; medical imaging; motion feature extraction; multireader receiver operating characteristic analysis; myocardial motion evaluation; myocardial perfusion detection; myocardium motion estimation; numerical surrogates; perfusion-defect detection task; practical task-based image-quality assessment; regression analysis; relevance vector machines; task-based approach; Feature extraction; Image sequences; Kernel; Myocardium; Observers; Predictive models; Single photon emission computed tomography; Cardiac motion; cardiac-gated single photon emission computed tomography; image quality; machine learning; model observers; numerical observer;
fLanguage :
English
Journal_Title :
Medical Imaging, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0062
Type :
jour
DOI :
10.1109/TMI.2013.2279517
Filename :
6584807
Link To Document :
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