4.5 Article Proceedings Paper

Area under the Free-Response ROC Curve (FROC) and a Related Summary Index

Journal

BIOMETRICS
Volume 65, Issue 1, Pages 247-256

Publisher

WILEY
DOI: 10.1111/j.1541-0420.2008.01049.x

Keywords

Area under the FROC curve; Bootstrap; FROC; ROC

Funding

  1. NIBIB NIH HHS [R01 EB006388, EB003503, R01 EB006388-03, R01 EB003503-04, EB006388, EB001694, R01 EB001694, R01 EB001694-03, R01 EB003503] Funding Source: Medline

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Free-response assessment of diagnostic systems continues to gain acceptance in areas related to the detection, localization, and classification of one or more abnormalities within a subject. A free-response receiver operating characteristic (FROC) curve is a tool for characterizing the performance of a free-response system at all decision thresholds simultaneously. Although the importance of a single index summarizing the entire curve over all decision thresholds is well recognized in ROC analysis (e. g., area under the ROC curve), currently there is no widely accepted summary of a system being evaluated under the FROC paradigm. In this article, we propose a new index of the free-response performance at all decision thresholds simultaneously, and develop a nonparametric method for its analysis. Algebraically, the proposed summary index is the area under the empirical FROC curve penalized for the number of erroneous marks, rewarded for the fraction of detected abnormalities, and adjusted for the effect of the target size (or acceptance radius). Geometrically, the proposed index can be interpreted as a measure of average performance superiority over an artificial guessing free-response process and it represents an analogy to the area between the ROC curve and the guessing or diagonal line. We derive the ideal bootstrap estimator of the variance, which can be used for a resampling-free construction of asymptotic bootstrap confidence intervals and for sample size estimation using standard expressions. The proposed procedure is free from any parametric assumptions and does not require an assumption of independence of observations within a subject. We provide an example with a dataset sampled from a diagnostic imaging study and conduct simulations that demonstrate the appropriateness of the developed procedure for the considered sample sizes and ranges of parameters.

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