Publication | Closed Access
Prediction of human observer performance by numerical observers: an experimental study
35
Citations
26
References
1999
Year
Computed TomographyImage ReconstructionEngineeringDiagnosisHuman Performance ModelingPerceptionIntelligent SystemsDiagnostic ImagingImage AnalysisBiostatisticsKinematicsHuman MotionObserver PatternStatisticsPerception SystemRadiologyHealth SciencesNumerical ObserversCognitive ScienceNumerical ObserverMedical ImagingHuman Observer PerformanceInverse ProblemsMedical Image ComputingPerception-action LoopObserver DesignComputer VisionEye TrackingBiomedical ImagingExperimental StudyComputer-aided DiagnosisRank OrderingMedical Image Analysis
Numerical observers are investigated for predicting the outcome of a free-response human observer study involving the detection of simulated pulmonary nodules in images reconstructed from low-dose computed tomography projection data by use of several reconstruction algorithms. A new way of calculating the figure of merit of a numerical observer is proposed wherein the detectability of signals in a particular image depends on the noise properties associated with that image and not the other images in the data set. The resulting variants of numerical observers are found to perform better than their traditional counterparts. In particular, the imagewise variant of the region-of-interest observer is found to predict best the rank ordering of algorithms by human observers for the free-response task.
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