Maximum likelihood fitting of FROC curves under an initial‐detection‐and‐candidate‐analysis model
- 27 November 2002
- journal article
- Published by Wiley in Medical Physics
- Vol. 29 (12) , 2861-2870
- https://doi.org/10.1118/1.1524631
Abstract
We have developed a model for FROC curve fitting that relates the observer’s FROC performance not to the ROC performance that would be obtained if the observer’s responses were scored on a per image basis, but rather to a hypothesized ROC performance that the observer would obtain in the task of classifying a set of “candidate detections” as positive or negative. We adopt the assumptions of the Bunch FROC model, namely that the observer’s detections are all mutually independent, as well as assumptions qualitatively similar to, but different in nature from, those made by Chakraborty in his AFROC scoring methodology. Under the assumptions of our model, we show that the observer’s FROC performance is a linearly scaled version of the candidate analysis ROC curve, where the scaling factors are just given by the FROC operating point coordinates for detecting initial candidates. Further, we show that the likelihood function of the model parameters given observational data takes on a simple form, and we develop a maximum likelihood method for fitting a FROC curve to this data. FROC and AFROC curves are produced for computer vision observer datasets and compared with the results of the AFROC scoring method. Although developed primarily with computer vision schemes in mind, we hope that the methodology presented here will prove worthy of further study in other applications as well.Keywords
Funding Information
- National Cancer Institute (R01‐CA60187)
- National Cancer Institute (R01‐GM57622)
This publication has 13 references indexed in Scilit:
- Statistical Power in Observer-Performance Studies: Comparison of the Receiver Operating Characteristic and Free-Response Methods in Tasks Involving LocalizationAcademic Radiology, 2002
- Automated detection of lung nodules in CT scans: Preliminary resultsMedical Physics, 2001
- Eliminating false-positive microcalcification clusters in a mammography CAD scheme using a Bayesian neural networkPublished by SPIE-Intl Soc Optical Eng ,2001
- “Proper” Binormal ROC Curves: Theory and Maximum-Likelihood EstimationJournal of Mathematical Psychology, 1999
- Evaluating the performance of detection algorithms in digital mammographyMedical Physics, 1999
- Variations in measured performance of CAD schemes due to database composition and scoring protocolPublished by SPIE-Intl Soc Optical Eng ,1998
- Unified measurement of observer performance in detecting and localizing target objects on imagesMedical Physics, 1996
- Maximum likelihood analysis of free‐response receiver operating characteristic (FROC) dataMedical Physics, 1989
- Observer Performance in Detecting multiple Radiographic SignalsRadiology, 1976
- Maximum-likelihood estimation of parameters of signal-detection theory and determination of confidence intervals—Rating-method dataJournal of Mathematical Psychology, 1969